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Article

Pandemics and Stock Price Volatility: A Sectoral Analysis

by
Niraj Prasad Koirala
1,* and
Linus Nyiwul
2,†
1
Department of Economics and Statistics, California State University Los Angeles, Los Angeles, CA 90032, USA
2
Department of Economics, Gettysburg College, Gettysburg, PA 17325, USA
*
Author to whom correspondence should be addressed.
The authors have not received any grants for this work.
J. Risk Financial Manag. 2023, 16(11), 467; https://doi.org/10.3390/jrfm16110467
Submission received: 12 August 2023 / Revised: 10 October 2023 / Accepted: 11 October 2023 / Published: 28 October 2023
(This article belongs to the Special Issue Stability of Financial Markets and Sustainability Post-COVID-19)

Abstract

:
In this paper, we assess the impacts of the five most recent pandemics on the volatility of stock prices across forty-nine sectors of the economy in the United States. These five most recent pandemics are the 1957–1958 Asian flu, the 1977 Russian flu, SARS-CoV-1, swine flu and COVID-19. Applying the GJR-GARCH model, we find that pandemics other than COVID-19 have heterogeneous impacts on the volatility of stock returns. The results of our analysis indicate that COVID-19 has increased the volatility of stock returns in all sectors. Similarly, stocks in more than seventy percent of sectors in our study declined during the ongoing pandemic, perhaps reflecting the severity of the pandemic. In addition, our results on sectors such as healthcare and natural gas diverge from other literature. The mixed results on SARS-CoV-1 are partially explained by the fact it emerged at a time when stock valuations were particularly pessimistic. In the case of Russian flu, it was relatively short-lived and limited in spread relative to other pandemics in our study.
JEL Classification:
G12; C58; C22

1. Introduction

The COVID-19 pandemic and the public policy response to it have had significant negative impacts on the global economy. Shutdowns curtailed travel and resulted in sharp decreases in employment and production. This led to high levels of anxiety and uncertainty among investors and had negative impacts on financial market activity, especially trading and investments. These impacts, driven in part by information flows (Smales 2021; Huberman and Regev 2001) have been studied over the last several years by examining various indicators of financial market activity. These indicators include liquidity (Zhang et al. 2020; Haroon and Rizvi 2020a; Baig et al. 2020), risk and volatility (Shigemoto and Morimoto 2022; Setiawan et al. 2021; Khan et al. 2023; Albulescu 2020; Jin et al. 2022; Wu et al. 2022; Zaremba et al. 2020; Haroon and Rizvi 2020b), financial performance (Mirza et al. 2020), stock price returns (Ramelli and Wagner 2020; Baker et al. 2020), contagion (Akhtaruzzaman et al. 2021; Okorie and Lin 2021), uncertainty (Salisu et al. 2020; Lyócsa and Molnár 2020), sentiment (Sergi et al. 2021; Cox et al. 2020; Harjoto et al. 2021) and new financial instruments (Corbet et al. 2020). Other studies examine the effect of policy responses to the pandemic on stock market behavior (Burdekin and Harrison 2021; Bouri et al. 2021; Cox et al. 2020). However, there is limited literature on the comparative effects of COVID-19 and similar pandemics on stock price volatility, either in general or across sectors or industries. We aim to contribute to filling this gap.
Existing studies on the comparative effects of COVID-19 are limited to two or three pandemics; these studies include Baker et al. (2020) who focus on stock price returns and limited analysis of volatility across COVID-19 and three other pandemics (1918–1919, 1957–1958 and 1968). They find that public policy measures and economic structure (particular service-oriented economies) largely explain why COVID-19 caused the largest stock price declines relative to other pandemics. Similarly, Mazur et al. (2021) focus on sectoral analysis; they examine the stock price returns of subsectors within the S&P500 during the COVID-19 pandemic. They find positive returns for such sectors as food, healthcare, natural gas and software while petroleum, hospitality, entertainment and real estate experienced negative returns. In contrast, we analyze stock market behavior across forty-nine sectors during health crises starting with the 1957–1958 Asian flu up to the COVID-19 pandemic. The main differences between our work and Baker et al. (2020) are that we compare stock price volatility across forty-nine sectors of the economy, rather than a single stock and we study five pandemics instead of four. For further analysis on the effects of COVID-19 relative to other pandemics, see Burdekin (2021); Barro et al. (2020).
Our paper represents an opportunity to examine the historical lessons of pandemics and stock price volatility as well as the differential effects on various sectors within the economy. What, if anything, is different for the COVID-19 pandemic relative to other past epidemics in various industries? What lessons can be drawn from these differences? Our paper attempts to answer these questions by examining stock price volatility across five different pandemics and forty-nine sectors. Using generalized autoregressive conditional heteroscedastic models, we find asymmetric behavior of stock prices across different sectors during health emergencies. Stock prices in the health and drugs sectors face more significant positive volatility while food, soda and leisure industries bear the most significant losses. Evidence on the relative performance of the stock market during different pandemics in the sample indicates that COVID-19 has the largest impact on stock price fluctuations. Interestingly, much of the changes in stock prices during COVID-19 were observed when the Federal Home Order was enforced from 1 March 2020 till 31 May 2020. Further analysis suggests that, among previous pandemics, only the H2N2 pandemic of 1957–1958 appears to have significant impacts on stock price fluctuation after COVID-19. The rest of our paper is organized as follows: we outline methods and data in Section 2, present results in Section 3 and provide conclusions in Section 4.

2. Methodology and Data

Our study is based on secondary sources of data. Data on daily stock returns of different sectors are collected from the website of Professor Kenneth French. The website provides daily data on stock price returns of 49 industries from 1 June 1926 to 29 October 2021. To analyze the impacts of pandemics on sectoral returns, we use the GJR-GARCH model of stock market volatility. The GJR-GARCH model developed by Glosten et al. (1993) and Zakoian (1994) is used to capture positive and negative shocks to financial variables. We use the GJR-GARCH model over the usual GARCH model due to the established facts in the literature that the GJR-GARCH model captures the observed negative shocks at time t − 1, which have stronger impacts on the variance at time t than the positive shocks (see, for example, Glosten et al. 1993; Zakoian 1994). The use of the GJR model to study the pandemics is based on our assumption that pandemics induce pessimism among consumers, investors and policymakers which tends to contribute towards volatility that negatively affects stock prices. The GJR-GARCH model can be expressed as:
h t = α 0 + j = 1 q α i ϵ t 1 2 + j = 1 p β i h t 1 + k = 1 r γ i I t 1 ϵ t 1 2 .
In Equation (1), α 0 is an intercept term in the volatility equation. α i represent ARCH parameters while β i are GARCH parameters. The GJR-GARCH model is an extension of the standard GARCH model in the sense that the model contains an asymmetric component, i.e., γ i I t 1 ϵ t 1 2 . In Equation (1), the parameter I t = 1 if ϵ t < 0 (bad news) and I t = 0 otherwise. So good news (positive errors) has an impact of α i while bad news (negative errors) has an impact of α i + γ i . The impact of news on conditional variance is asymmetric if γ is significantly different from zero. In the equation, the persistence of volatility for a given shock can be expressed as ( α + 0.5 * γ + β ) .
Additionally, we introduce a dummy variable in the conditional mean and the variance equations to investigate the impacts of pandemics on sectoral stock returns. Thus, the new GJR-GARCH model with different pandemics can be expressed as:
R t = μ + ρ R t 1 + ϵ t + γ 1 D 1 ,
h t = α 0 + j = 1 q α 1 ϵ t 1 2 + j = 1 p β 1 h t 1 + k = 1 r γ i I t 1 ϵ t 1 2 + λ 1 D 1 .
In Equation (2), R t indicates sectoral stock returns and ρ is the persistence of the return process. ϵ t is an error process. The dummy variable, γ 1 , in the mean equation captures the impact of pandemics on stock returns across industries. Similarly, the coefficient on the dummy variable, λ 1 , in the new volatility Equation (3) estimates the impacts of each pandemic considered on the conditional volatility of the sectoral stock returns. The dummy variable D assumes the value of 0 for each pre-pandemic era and 1 during each pandemic era. The dummy variable is chosen in such a way that it assumes the value of 0 for at least 3 months before a pandemic starts. We consult various sources like the World Health Organization (WHO) and the Center for Disease Control (CDC) to determine the actual dates of the pandemic start and end. These dates are reported in Table 1. In our study, we focus our analysis on the global health crises starting in 1957. Specifically, we focus on the 1957 influenza pandemic, the Russian flu of 1989–1990, SARS-I, swine flu and COVID-19. Table 1 reports the start and end dates of the pandemics considered in the paper.
A negative and statistically significant coefficient on the dummy variable would mean that a pandemic causes a reduction in the volatility of stock returns of an industry. However, a positive and significant dummy coefficient would mean a pandemic would increase the volatility of stock returns of a given sector.
In this paper, we focus our analysis on 49 sectors as categorized in the website of Prof. Kenneth French. However, due to missing data and requirements for GARCH model estimation, the exact numbers of industries considered in each pandemic vary. The lists of industries and descriptive statistics of stock returns in the respective industries are presented in Table A1, Table A2, Table A3, Table A4, Table A5, Table A6 and Table A7 in the Appendix A. In the tables, large negative skewness with higher kurtosis values indicate are indicative of higher likelihood of losses in sectoral stock prices. Large positive values for skewness are indicative of high potential positive returns in stock prices.

3. Pandemics and Stock Market: GJR-GARCH Model Results

3.1. Asian Flu and Sectoral Stock Returns

In this subsection, we present the impacts of Asian flu on sectoral stock returns and volatility using the framework in Equations (2) and (3). The 1957–1958 flu was a global pandemic of influenza A virus subtype H2N2 that originated in southern China. It is estimated that the pandemic may have infected more than the 1918 Spanish flu pandemic. A report published by the World Health Organization (WHO) in 2013 suggests that global excessive deaths due to the 1957–1958 pandemic range from 1 to 4 million (WHO 2013). In the US alone, the Center for Disease Control (CDC) estimates excessive deaths of 70,000–116,000. The pandemic also had negative impacts on financial markets. It is estimated that the Dow Jones Industrial Average lost 15% of its value in the second half of 1957 and the US experienced a recession (Pinsker 2020). In this paper we examine these effects relative to other pandemics, with special emphases on sectoral impacts. Table 2 summarizes the findings of GJR-GARCH model estimation across different sectors for the 1957–1958 Asian flu. The results suggest that the Asian flu of 1957–1958 has asymmetric impacts on different industries. Of the forty sectors studied under the Asian flu pandemic, twelve indicate positive returns (as indicated by a positive coefficient estimate of γ 1 in the mean equation) while twenty-eight of them experienced negative returns (as indicated by a negative coefficient estimate of γ 1 in the mean equation). However, only recreation experienced positive and statistically significant returns while entertainment and to a lesser extent machinery show statistically significant evidence of negative returns. Industries like aircraft, agriculture, automobiles, banks, printing publishing, chemicals, electronic equipment, coal, business supplies, retail, recreation and utilities recorded positive stock performance. Stock prices in beer, construction materials, shipping containers, business services, apparel, construction, trading, food products, entertainment, consumer goods, insurance, measuring equipment, machinery, restaurants, medical equipment, mining, and natural gas and petroleum industries record negative performance. Across all industries, the Asian flu pandemic has the largest and significant positive impacts on the recreational sector. The largest, statistically significant negative impacts of the Asian Flu pandemic can be observed in machinery.
Table 2 also presents the estimated results of the GJR-GARCH(1, 1) model with sectoral stock returns. In Table 2, the coefficients on GARCH, ( β 1 ) have positive and significant values in every sector implying the presence of volatility clustering in sectoral stock returns. The asymmetric component of the GJR-GARCH model, γ i , of sectoral returns reflects the presence of asymmetric effects, indicating the impacts of negative shocks on volatilities dominate the effects of positive shocks. However, the asymmetric coefficient, γ i , is negative and statistically significant in personal services and negative but statistically insignificant in medical equipment, business supplies and insurance industries. This reflects the dominant impacts of positive shocks over negative shocks. To capture the impacts of the pandemic on stock volatility, a dummy variable, D 1 , is introduced in the volatility equation as in the mean equation. D 1 takes the value of 0 and 1 for before and during the pandemic era, respectively. The results show that the coefficient of the dummy variable for automobiles, banks, electrical equipment, business supplies, steel works, and to a lesser extent electronic equipment and shipbuilding is positive and statistically significant. This implies that the stock return volatility in those sectors increased during the pandemic. However, the coefficient of the dummy variable in the volatility equations is negative and statistically significant for pharmaceutical products, entertainment and personal services, suggesting a decrease in volatility in returns across those sectors during the Asian flu pandemic.

3.2. The 1977 Russian Flu and Sectoral Stock Returns

The 1977 Russian flu was an influenza pandemic that was first reported by the Soviet Union in 1977. The pandemic lasted till 1979. The pandemic resulted in approximately 700,000 deaths worldwide and affected mostly the population younger than 25 or 26 years of age (WHO 1999). The virus first reached the United States in January 1978 (Gregg et al. 1978) and the first outbreak in the U.S. was reported in Cheyenne, Wyoming, where the clinical attack rate was more concentrated on school children (Mermel 2009). There is little to no literature on the behavior of stock prices during this pandemic. However, data (see appendix for comparison of descriptive statistics before and during the pandemic) suggests that the pandemic might have influenced the moments of sectoral stock returns. Thus, we aim to uncover the effects of this pandemic on sectoral returns using the GJR-GARCH(1, 1) model. The results of the GJR-GARCH model are presented in Table 3 below. The results in Table 3 suggest that the Russian Flu of 1977 had positive but statistically insignificant impacts on mean returns (given by positive coefficients on γ 1 of the mean equations) for more than half of the sectors in our fitted model (for example, aircraft, automobiles, banking, shipping containers, business services, electronic equipment, apparel, pharmaceutical products, food products, entertainment, computers, healthcare, consumer goods, insurance, measuring and control equipment, machinery, restaurants, medical equipment, candy and soda, communication, utilities, and soda). The rest of the sectors had negative mean returns. Also, the computer and restaurant sectors are the only two sectors that experienced strong and statistically significant positive mean returns. Shipbuilding and railroad sectors show only statistically weak evidence of strong negative returns, i.e., significance at 10%.
Table 3 also presents the impacts of the pandemic on the conditional volatility of sectoral stock price returns. In Table 3, the coefficient on GARCH, ( β 1 ), has statistically insignificant estimates on automobiles, banking, coal, pharmaceutical products, healthcare, consumer goods, machinery, restaurants, business supplies, shipbuilding and communication representing the lack of volatility clustering in the stock returns. However, β 1 has statistically significant estimates for the rest of the sectors, indicating the presence of volatility clustering in stock returns during this pandemic.
The asymmetric component of the GJR-GARCH(1, 1) model, γ i , is negative and statistically significant in aircraft, agriculture, construction materials, electronic equipment, fabricated products and precious materials, all reflecting dominant impacts of positive shocks rather than those of negative shocks on volatilities. However, γ i is positive and statistically significant in coal, restaurants, hotels and motels, petroleum, and natural gas, all indicating the dominating impacts of negative shock on volatilities. The coefficient remains statistically insignificant in the case of other sectors.
Table 3 also shows the coefficients of the dummy variable, λ i , which captures the impacts of the pandemic on sectoral stock market volatility. The results show that the Russian flu had negative impacts on stock market volatilities in the following sectors: automobiles, construction materials, banking, shipping construction, electronic equipment, apparel, construction, coal, pharmaceutical products, electronic equipment, fabricated products, food products, precious metals, defense, computers, healthcare, consumer goods, insurance, measuring and control equipment, restaurants, medical equipment, petroleum, business supplies, real estate, rubber, ship building, candy and soda, and utilities. These sectors represent about 75% of total sectors considered in the study. Such adverse impacts are statistically significant on the following sectors: apparel, medical equipment, and petroleum and natural gas. The decrease in volatilities of stocks during the pandemic is perhaps related more to the Federal Reserve’s change in its stance regarding inflation than with the pandemic itself. Furthermore, the mortality rate in the USA due to the pandemic is calculated to be 5 per 100,000 population, less than that of the typical seasonal influenza (6 per 100,000 population) (Rozo and Gronvall 2015). The relatively benign nature of the pandemic might have added less volatility to stock prices. In contrast, stock returns in the following sectors gained volatilities during the pandemic: aircraft, agriculture, business supplies, chemicals, entertainment, machinery, industrial mining, communication, transportation and wholesale. However, the volatility rise is statistically significant only in the entertainment sector.

3.3. SARS-CoV-1 and Sectoral Stock Returns

Severe acute respiratory syndrome coronavirus 1 (SARS-1-CoV) is a strain of coronavirus that causes severe acute respiratory syndrome (SARS), which is the illness that was responsible for the 2002–2004 SARS outbreak. According to WHO, a total of 8098 people worldwide were infected and 774 of them died (Center for Disease Control and Prevention 2013). In the United States, only eight people were infected by the virus. However, SARS-CoV-1 negatively impacted stock prices. For instance, S&P 500 lost 12.8% of its total value after Chinese authorities reported the outbreak of the SARS to WHO. Furthermore, all S&P 500 sectors declined during the SARS outbreak, with information technology, financial and communication services among the biggest losers, falling 14%, 16% and 26%, respectively (Li 2020). Given such a behavior of stock prices during the pandemic, it is important to understand the volatility of sectoral stock prices during the pandemic, relative to other pandemics. Our results on SARS-COV-1 are presented in Table 4. Table 4 shows the estimation results of the GJR-GARCH(1, 1) model, which contains mean equation results on the first half of the table and volatility parameters on the second half. The mean equation results suggest that the pandemic had mostly positive impacts on stock price returns in more than two-thirds of industries in our fitted model. Specifically, out of all, five industries (agriculture, food products, defense, restaurants and hotels) had positive and statistically significant returns while healthcare and industrial mining had statistically weak positive returns. The pandemic caused losses in the following sectors: printing and publishing, shipping containers, apparel, coal, fabricated products, computers, shipbuilding and railroad, computer software, candy and soda, and communications. Among these sectors, stocks in the coal sector suffered the largest losses, followed by fabricated products and candy, as given by the values of γ 1 = −0.21, −0.14 and −0.18, respectively. However, none of these losses were shown to be statistically significant.
The volatility equation estimations in Table 4 suggest that the pandemic reduced the conditional volatility of stock returns across all industries except insurance, i.e., λ = 0.017 . The decrease in conditional volatility, given by the coefficient on λ i , is statistically significant in just under half of the sectors in our model fit. The decrease in conditional volatility in sectors such as agriculture, banking, beer, shipping, fabricated products, electrical equipment, construction, food products, precious metals, defense, restaurants, medical equipment, petroleum, business supplies, real estate, rubber, shipbuilding, recreation and transportation were not statistically significant.
The volatility equation estimation also suggests that the coefficient on GARCH, β 1 , is positive and significant in most sectors, reflecting volatility clustering in sectoral returns except in electrical equipment, medical equipment, real estate, rubber, recreation and utilities. The asymmetric coefficient in the volatility equation, γ i , is negative and statistically significant in beer, business services, chemicals, electronic equipment, apparel, coal, fabricated products, petroleum and natural gas, real estate, rubber, tobacco, computer software, steel works, communication, recreation, transportation and utilities, suggesting that impacts of negative shocks on stock volatility dominate positive shocks. Also, the positive asymmetric coefficients on agriculture, automobiles, banking, construction materials, printing, shipbuilding, construction, electrical equipment, food products, entertainment, precious metals, healthcare, consumer goods, measuring equipment, machinery, restaurants, medical equipment, business supplies, personal services, retail, shipbuilding and candy indicate that impacts of positive shocks on volatility dominate negative shocks.

3.4. Swine Flu and Sectoral Stock Price

The 2009 swine flu pandemic was caused by the H1N1 influenza virus. It is estimated that the real number of cases including asymptotic and mild cases could be 700 million to 1.4 billion (Roos 2011). The number of lab-confirmed deaths reported to the WHO is 18,449. At the time of the swine flu, the global economy was emerging from the 2008 global financial crisis and stocks were significantly undervalued. In the US, the pandemic peaked and officially ended on 11 August 2010. From the start of the pandemic to the end, it is estimated that the Dow had risen by over 40% (Patton 2020). We examine mean returns on stocks and the nature of volatility during this period. Our results are presented in Table 5. Table 5 reports the estimation results of the GJR-GARCH(1, 1) model and contains mean and volatility equation results. The mean equation estimation suggests positive stock returns in every sector except trading and mining during the pandemic, as indicated by positive γ 1 coefficients. The mean equation estimation suggests that stocks in the textile industry gained the most during the pandemic, followed by real estate and banking ( γ 1 = 0.64, 0.6 and 0.56, respectively). Sectors like defense, precious metals and electronic equipment gained the least, i.e., γ 1 = 0.002, 0.014 and 0.012, respectively. However, the positive impact of the pandemic on stock returns in the mean equation is statistically insignificant across all sectors. One possible reason is that the swine flu emerged in the context of deeply discounted stock prices and its effect on stock valuations was not significant.
Table 5 also highlights the effects of the pandemic on the volatility of stock returns across the industries in the GJR-GARCH(1, 1) setting. The results indicate that the conditional volatility of stock returns across almost every sector excluding trading, consumer goods and computer software has decreased during the pandemic period. In particular, more than half of the sectors in our fitted model show a statistically significant decrease in conditional volatility. The largest decrease in the conditional volatility occurred in real estate ( λ 1 = 4.87 ) followed by metal mining ( λ 1 = 4.36 ). The positive and significant coefficient on conditional volatility, β 1 , across every industry represents the presence of volatility clustering in stock returns. Similarly, the positive coefficients on the asymmetric term, γ i , implies that negative shocks to stock price volatility were larger relative to positive shocks. However, coefficients on asymmetric terms are negative in coal, entertainment and consumer goods suggesting otherwise.

3.5. COVID-19 and Sectoral Stock Returns

COVID-19 is a contagious disease caused by severe acute respiratory syndrome coronavirus 2 (SAARS-CoV-2). The first known case was identified in China and later led to the global pandemic. The first case of COVID-19 in the USA was reported on 20 January 2020. According to the real time data tracking website worldometer (https://www.worldometers.info/coronavirus/hl) (accessed on 1 June 2022), as of 30 January 2022, death cases in the USA due to COVID-19 are reported to be 0.9 million while global deaths are reported to be about 5.66 million. The effect of COVID-19 on stock prices has been an ongoing popular topic in the literature due to emergence of new variants, slowing economy and availability of data. Some of the recent papers on this include Hohler and Lansink (2020); Kordestani et al. (2021). However, the existing literature has not assessed the stock market performance across industries during this pandemic and relative to other pandemics in the past. We contribute to the pandemic literature by assessing the sectoral stock returns during COVID-19 and comparing them with four other past pandemics. Table 6 reports our estimation results for a GJR-GARCH(1, 1) model, specifically for COVID-19.
The mean equation suggests that COVID-19 has asymmetric impacts on sectoral stock price, as represented by coefficients with opposite signs of the dummy variable, γ 1 . More than seventy percent of the sectors in our fitted model show negative mean returns for the COVID-19 pandemic. In particular, steel works, and to a lesser extent petroleum and tobacco products are observed to have experienced a statistically significant decline in stock returns. Other notable sectors that suffered declines in mean returns include banks, real estate construction materials, chemicals, electronic equipment, apparel, construction, coal, pharmaceutical products, electrical equipment, healthcare, consumer goods, insurance, machinery, restaurants, medical equipment, communications, recreation, textiles and wholesale. Furthermore, about a third of the sectors in our fitted model experienced positive mean returns. Specifically, results of the mean equation suggest that the mean returns of stocks in aircraft, agriculture, automobiles, beer, business services, food products, entertainment, precious metals, defense, computers, business supplies, retail, candy, computer software, transportation and utilities industries increased during the COVID-19 pandemic. Out of these industries, agriculture, retail and precious metals industries witnessed the largest increase in mean stock returns, i.e., γ 1 = 0.28, 0.22 and 0.19, respectively. The lowest gain is observed in the entertainment, computer and beer industries, i.e., γ 1 = 0.002, 0.01 and 0.02, respectively. However, see that these increases in mean returns during the pandemic are statistically insignificant. These results contrast with other findings elsewhere; for example, Mazur et al. (2021) examine the stock price returns of subsectors within the S&P500 during the COVID-19 pandemic and find positive returns for such sectors as food, healthcare, natural gas and software while petroleum, hospitality, entertainment and real estate experienced negative returns.
Table 6 also shows the volatility equation estimates of the GJR-GARCH(1, 1) model with COVID-19. Our results indicate that the COVID-19 pandemic increased the volatility of stock returns across every sector, i.e., positive coefficients on λ 1 . Out of the sectors under consideration, stock returns in coal show the largest volatility followed by automobiles and trucks, i.e., λ 1 = 4.6 and 1.82, respectively. In all, close to half of the sectors in our fitted model show statistically significant increases in conditional volatility and seven more show only statistically weak evidence of a rise in volatility. Consumer goods and defense industries produced the lowest volatilities on the stock returns, i.e., λ 1 = 0.089 and 0.096, respectively. In Table 6, it can be seen that the coefficient on conditional volatility, β 1 , is positive and significant across all the sectors, representing volatility clustering in stock returns. The positive and statistically significant coefficient on the asymmetric term, γ i , indicates that negative shocks contributes more to the conditional volatility than positive shocks in every sector.

4. Conclusions

In this paper, we study the impacts of five recent pandemics on sectoral stock returns and volatility. The pandemics considered include the 1957–1958 Asian flu, the 1977 Russian flu, SAARS-CoV-1, swine flu and COVID-19. Using the GJR-GARCH(1, 1) model, we find that pandemics have heterogeneous impacts on sectoral stock returns. Our empirical results suggest that pandemics other than COVID-19 have mixed impacts on conditional volatilities in sectoral stock markets. Among the five pandemics studied in this paper, only COVID-19 has increased the volatility of stock returns across every sector. Furthermore, some sectors like coal and automobiles record the largest volatility increase during the ongoing pandemic.
Additionally, relative to the other four pandemics, the largest number of sectors (seventy percent) experiencing a decline in mean stock returns is recorded for COVID-19, suggesting that the severity of the pandemic was strong enough to counteract the positive impacts of fiscal and monetary stimuli during the pandemic. This has serious implications for policy responses to similar future health crises. Specifically, a significant share of household wealth is invested in various financial instruments that were all subject to pandemic impacts. While the effects of job losses were mitigated via fiscal policy measures, trends in financial assets during the pandemic pose serious long term challenges for household wealth accumulation. This observation is consistent with evidence in Tobin et al. (2020) who find large wealth shocks during the pandemic that are more pronounced for middle-aged households and those higher in the wealth and income distributions. There is also evidence that exposure to stock markets during the pandemic has behavioral consequences, for example, expectations about retirement age, desired working hours and household debt (Tobin et al. 2021). The current literature on the consequences of the pandemic on the finances of households remains relatively limited and constitutes a rich area for further studies.
Furthermore, our findings indicate that some of the sectors (for example, healthcare) heavily affected by the pandemic also happen to comprise a considerable share of the U.S. economy. While our study focuses on the effect of the pandemic on stock prices, it would be interesting to know whether the strong negative impacts we find in financial assets in these sectors also reflect strong negative socio-economic impacts on the population employed in them. A comparative analysis that focuses on indicators other than financial instruments can generate further useful insights for policy in future similar crises. Additionally, our analysis focuses only on the United States, on account of data limitations. Specifically, this does do not allow us to conduct cross-country comparisons of sectoral stock market returns and volatilities. Such an exercise can yield useful insights on potential differences in regulatory, fiscal and monetary policy responses to the pandemic. The challenge would be to match sectoral classifications across jurisdictions that use different classification systems for their industries.

Author Contributions

N.P.K.: Conceptualization, Methodology, Software, Validation, Formal Analysis, Writing, Original Draft Preparation, Funding Acquisition, L.N.: Conceptualization, Writing, Draft Preparation, Proofreading. All authors have read and agreed to the published version of the manuscript.

Funding

The paper received an Open Access Author Fund from California State University Los Angeles Library for the publication purpose.

Data Availability Statement

Data is available upon request.

Acknowledgments

We would like to thank California State University Los Angeles Library for providing us with the Open Access Author Fund for publication purpose.

Conflicts of Interest

The authors do not have any conflicts of interest while submitting the paper to the journal.

Appendix A. Descriptive Statistics

Table A1. Descriptive Statistics: Asian Flu.
Table A1. Descriptive Statistics: Asian Flu.
IndustriesNStd. Dev.MinimumMaximumKurtosisSkewnwss
Agriculture12591.012−4.965.55.8370.321
Food Products12590.43−4.71.5615.6−1.342
Beer and Liquor12590.75−5.93.787.375−0.113
Tobacco Products12590.73−5.255.3211.205−0.578
Recreation12591.19−7.967.147.785−0.035
Entertainment12590.91−8.463.8810.208−0.581
Print and Publications12591.24−8.549.1310.2560.04
Consumer Goods12590.68−5.833.318.98−0.44
Apparel12590.54−4.64.7614.92−0.47
Medical Equipment12591.11−5.139.49.951.05
Pharmacy Products12590.87−6.495.228.23−0.33
Chemicals12590.85−7.615.7311.05−0.55
Rubber Products12590.94−6.845.277.160.22
Textiles12590.76−7.063.7511.23−0.19
Construction Materials12590.77−5.774.6913.043−0.89
Construction Materials12591.07−8.955.875.96−0.05
Steel Works12591.11−7.586.537.952−0.487
Machinery12590.79−6.944.712.170.91
Electrical Equipments12590.99−7.615.576.94−0.039
Automobiles12591.04−6.848.769.760.59
Aircraft12591.339−6.847.4112.170.092
Shipbuilding12590.94−7.925.016.94−0.186
Mining12590.86−6.945.089.76−0.183
Coal12591.17−5.877.76.36−0.058
Petroleum Products12590.91−8.945.037.76−0.34
Utilities12590.38−6.842.556.94−1.747
Communication12590.51−4.238.999.874.494
Personal Services12591.084−3.848.627.960.59
Business Services12590.52−5.782.3321.520.13
Computers12591.092−3.398.0287.20.712
Electronic Equipments12591.37−5.827.378.310.23
Measuring Equipment12591.14−6.8975.40.21
Business Supplies12591.29−6.5368.31−0.009
Boxes12590.77−8.534.445.02−0.73
Transportation12590.9−7.235.345.87−0.44
Wholesale12590.79−7.073.845.28−0.52
Retail12590.55−5.32.9610.98−0.812
Restaurants12591.051−5.496.318.640.392
Table A2. Descriptive Statistics: Russian Flu.
Table A2. Descriptive Statistics: Russian Flu.
IndustriesNStd. Dev.MinimumMaximumKurtosisSkewnwss
Agriculture5050.93−3.773.344.08−0.13
Food5050.52−1.9423.45−0.02
Soda5050.93−3.73.574.54−0.104
Beer5050.82−4.312.464.34−0.136
Smoke5050.83−3.533.214.58−0.156
Toys5051.08−3.744.253.740.117
Fun5051.1−3.013.52.90.11
Books5050.65−2.052.653.53−0.021
Hshld5050.85−2.423.213.20.173
Clths5050.79−2.623.023.960.296
Hlth5051.15−4.95.025.45−0.088
MedEq5050.87−3.692.543.65−0.203
Drugs5050.84−2.73.614.180.342
Chems5050.83−3.592.423.54−0.009
Rubbr5050.72−1.972.363.2410.023
Txtls5050.69−2.053.194.420.449
Bldmt5050.69−2.142.64.060.286
Cnstr5050.91−2.93.283.44−0.062
Steel5050.84−3.652.723.660.076
Fabpr5050.92−3.164.394.790.14
Mach5050.72−2.092.313.240
Elceq5050.84−2.562.893.460.24
Autos5050.85−2.083.043.30.2
Aero5050.92−3.013.443.54−0.001
Ships5050.89−2.23.864.190.39
Guns5051.03−3.153.523.70.14
Gold5051.28−3.854.733.780.365
Mines5050.69−2.362.863.760.2
Coal5051.3−3.634.954.20.42
Oil5050.71−2.362.713.84−0.028
Util5050.39−1.321.834.13−0.05
Telcm5050.55−2.321.954.57−0.134
Persv5050.91−2.793.734.130.25
Bussv5050.65−1.782.193.330.049
Hardw5050.94−2.753.393.620.246
Softw5052.55−14.0318.1113.210.85
Chips5050.86−3.133.483.380.084
Labeq5051.054−5.683.334.72−0.17
Paper5050.85−3.092.813.690.12
Table A3. Descriptive Statistics: SARS-COVID-1.
Table A3. Descriptive Statistics: SARS-COVID-1.
IndustriesNStd. Dev.MinimumMaximumKurtosisSkewness
Agric5991.27−5.64012.4318.5361.331
Food5990.745−2.3603.133.708−0.024
Soda5991.071−4.6704.615.291−0.327
Beer5991.08−3.8107.417.80.702
Smoke5991.876−8.6107.184.6760.044
Toys5991.085−3.8904.043.6510.026
Fun5991.209−4.2705.664.449−0.12
Books5991.139−4.2104.694.0240.109
Hshld5991.005−3.2504.063.9990.167
Clths5990.96−3.2703.993.7460.078
Hlth5991.103−3.6103.843.785−0.228
MedEq5990.981−3.5003.613.655−0.4
Drugs5991.422−4.3404.613.217−0.203
Chems5991.163−3.2106.24.3390.299
Rubbr5991.715−3.20033.64244.0812.368
Txtls5991.596−6.6705.374.555−0.088
BldMt5990.969−3.9803.763.759−0.026
Cnstr5991.408−5.1405.163.81−0.011
Steel5991.396−4.1105.693.3220.128
FabPr5991.612−4.5407.394.8140.513
Mach5991.227−4.1105.53.6570.224
ElcEq5991.196−3.9204.63.320.065
Autos5991.363−4.0707.144.6040.259
Aero5991.361−4.7304.934.0210.173
Ships5991.346−4.1107.515.2760.597
Guns5991.829−6.09016.3914.3791.426
Gold5993.416−19.83011.746.161−0.31
Mines5991.774−6.38010.335.4510.386
Coal5991.988−12.4009.117.459−0.12
Oil5991.141−4.1605.574.107−0.034
Util5991.087−6.7404.657.796−0.409
Telcm5991.741−6.2506.474.0990.19
PerSv5991.094−4.1106.846.980.52
BusSv5991.048−3.6304.123.369−0.141
Hardw5991.698−4.0406.513.0210.171
Softw5991.469−4.0404.62.864−0.001
Chips5991.877−4.7006.622.9550.143
LabEq5991.345−3.4103.652.8270.029
Paper5991.05−3.0804.523.9420.113
Boxes5991.62−6.8608.674.9120.216
Trans5991.248−4.30053.5440.113
Whlsl5990.951−3.2504.113.533−0.178
Rtail5991.188−3.7205.143.8690.098
Meals5990.93−3.8105.86.6910.273
Banks5990.578−2.5402.464.171−0.188
Insur5990.962−3.2504.014.1030.09
RlEst5990.82−3.5404.134.2870.174
Fin5991.091−3.4103.242.888−0.045
Other5991.216−3.7905.094.5350.186
Table A4. Descriptive Statistics: SARS-CoV-1.
Table A4. Descriptive Statistics: SARS-CoV-1.
IndustriesNStd. Dev.MinimumMaximumKurtosisSkewnwss
Agriculture5991.27−5.6412.4318.5361.331
Food5990.745−2.363.133.71−0.024
Soda5991.071−4.6714.615.291−0.327
Beer5991.08−3.817.417.80.702
Smoke5991.876−8.617.184.6760.044
Toys5991.085−3.894.043.6510.026
Fun5991.21−4.275.664.449−0.12
Books5991.139−4.214.694.0240.109
Hshld5991.005−3.254.063.990.167
Clths5990.96−3.273.993.750.078
Hlth5991.103−3.63.843.79−0.23
MedEq5990.98−3.53.613.66−0.4
Drugs5991.42−4.34.613.22−0.203
Chems5991.16−3.26.24.3390.299
Rubbr5991.72−3.233.64244.0812.368
Txtls5991.59−6.675.374.56−0.088
Bldmt5990.97−3.993.763.76−0.026
Cnstr5991.41−5.145.163.81−0.011
Steel5991.396−4.115.693.3220.13
Fabpr5991.612−4.547.394.8140.513
Mach5991.23−4.115.693.320.12
Elceq5991.19−3.725.143.870.098
Autos5990.93−3.815.86.690.27
Ships5991.35−4.117.515.280.59
Guns5991.83−6.0916.3914.381.43
Gold5993.42−19.8311.746.16−0.31
Mines5991.78−6.3810.335.450.39
Coal5991.99−12.49.117.46−0.12
Oil5991.14−4.165.574.11−0.034
Util5991.09−6.744.657.79−0.41
Telcm5991.74−6.256.474.090.19
Persv5991.094−4.116.846.980.52
Bussv5991.048−3.634.123.369−0.141
Hardw5991.698−4.046.513.0210.17
Softw5991.47−4.044.62.864−0.001
Chips5991.88−4.76.622.960.14
Labeq5991.345−3.413.652.830.029
Paper5991.05−3.084.523.940.113
Table A5. Descriptive Statistics: Swine Flu.
Table A5. Descriptive Statistics: Swine Flu.
IndustriesNStd. Dev.MinimumMaximumKurtosisSkewnwss
Agriculture4042.18−6.799.384.450.31
Food4041.38−4.426.845.450.39
Soda4041.73−7.49.046.860.62
Beer4041.44−4.326.14.380.46
Smoke4041.66−11.936.0410.21−0.82
Toys4041.96−5.796.953.860.27
Fun4042.12−6.527.364.160.11
Books4042.9−8.0512.965.190.45
Hshld4042.13−6.4913.427.530.74
Clths4042.15−6.487.353.920.19
Hlth4041.54−7.385.955.07−0.27
MedEq4041.47−5.555.994.570.05
Drugs4041.66−5.046.344.15−0.11
Chems4042.29−7.913.766.770.35
Rubbr4042.18−8.469.645.570.21
Txtls4042.59−9.4710.984.930.112
Bldmt4042.15−6.619.664.4610.033
Cnstr4043.5−8.8140.9147.434.12
Steel4042.9−10.0111.984.560.025
Fabpr4042.68−10.288.764.33−0.079
Mach4042.35−7.99.894.490.003
Elceq4041.95−7.27.714.603−0.096
Autos4042.84−10.5610.845.250.25
Aero4041.98−7.028.374.699−0.23
Ships4042.78−9.789.543.860.142
Guns4042.091−8.5915.6410.780.87
Gold4043.22−10.3713.183.860.265
Mines4042.68−7.4710.283.748−0.018
Coal4043.95−14.0816.54.770.14
Oil4042.87−11.1710.784.47−0.084
Util4041.28−4.54.254.18−0.38
Telcm4042.01−7.287.434.479−0.009
Persv4041.87−5.917.624.3240.041
Bussv4041.61−4.666.34.032−0.017
Hardw4041.79−6.356.514.15−0.027
Softw4041.64−4.59.626.280.5
Chips4041.83−5.897.444.0060.03
Labeq4041.72−6.926.794.90.14
Paper4042.53−8.815.357.360.54
Table A6. Descriptive Statistics: COVID-19.
Table A6. Descriptive Statistics: COVID-19.
IndustriesNStd. Dev.MinimumMaximumKurtosisSkewnwss
Agriculture2312.92−14.4910.737.19−0.26
Food2311.69−8.749.0712.660.17
Soda2312.039−9.276.547.19−0.42
Beer2312.203−11.2811.4613.79−0.15
Smoke2312.26−9.7210.038.48−0.47
Toys2312.94−15.8114.159.741−0.6
Fun2312.44−15.218.1912.051−1.45
Books2312.36−12.728.528.61−0.634
Hshld2311.99−8.8210.2810.390.258
Clths2312.59−13.8213.6511.12−0.35
Hlth2312.55−16.0310.2312.49−0.87
MedEq2312.19−11.6811.0610.129−0.43
Drugs2311.81−8.697.318.9120.094
Chems2312.497−12.8811.219.32−0.45
Rubbr2312.017−12.028.1710.303−0.62
Txtls2313.82−22.8417.4811.92−0.54
Bldmt2312.98−14.0714.579.599−0.368
Cnstr2313.17−18.5915.8313.11−0.47
Steel2313.12−14.5212.078.27−0.36
Fabpr2313.77−20.5215.7911.52−0.661
Mach2312.73−12.1213.59.11−0.242
Elceq2312.85−13.8213.859.27−0.425
Autos2313.047−14.7315.019.74−0.56
Aero2313.43−16.8915.0311.38−0.063
Ships2312.67−12.129.246.48−0.192
Guns2312.432−12.3210.5511.421−0.33
Gold2312.73−10.7814.0911.1320.74
Mines2312.965−13.3713.678.68−0.34
Coal2314.324−16.7919.917.8370.59
Oil2313.372−19.8816.1112.18−0.66
Util2312.39−11.6511.7811.7640.055
Telcm2311.93−9.099.0810.06−0.345
Persv2312.45−15.29.6914.24−1.27
Bussv2312.56−14.5513.0812.421−0.381
Hardw2312.284−11.4611.999.33−0.14
Softw2312.252−12.910.6811.54−0.43
Chips2312.56−14.0211.5110.6−0.39
Labeq2312.14−9.3410.098.420.073
Paper2312.062−9.349.938.3940.099
Table A7. Descriptive statistics: before and after the 1977 Russian flu.
Table A7. Descriptive statistics: before and after the 1977 Russian flu.
Before Pandemic (N = 90)After Pandemic (N = 169)
SectorsMeanStd.MeanStd.
Agriculture0.050.940.0250.92
Food Products0.0310.550.020.46
Candy and Soda0.0010.980.0640.82
Beer and Liquor 0.027 0.88 0.02 0.71
Tobacco0.0430.880.0330.72
Recreation0.0571.13−0.0520.98
Entertainment0.0271.160.130.98
Printing and Publishing0.0820.6770.110.58
Consumer Goods 0.02 0.89 0.11 0.76
Apparel0.0850.880.0640.59
Healthcare0.0961.210.271.02
Medical Equipment 0.05 0.880.1040.84
Pharmaceutical Products 0.045 0.870.060.76
Chemicals0.0150.86 0.05 0.75
Rubber and Plastic Products0.09210.740.0520.677
Textiles0.0450.74 0.001 0.56
Construction Materials0.10.74 0.0035 0.59
Construction0.0750.980.030.76
Steel Works0.0760.84 0.11 0.81
Fabricated Products0.141.040.0730.62
Machinery0.10.74 0.008 0.67
Electrical Equipment0.08650.870.1310.78
Automobiles and Trucks0.0860.92 0.0013 0.73
Aircraft0.1430.9430.620.87
SectorsMeanStd.MeanStd.
Shipbuilding0.1120.94 0.042 0.78
Defense0.181.040.0110.99
Precious Metals0.0691.380.0191.07
Industrial Mining0.0730.68 0.14 0.71
Coal0.111.39 0.095 1.08
Petroleum Products0.0940.7330.00420.64
Utilities0.0820.400.0450.36
Communication0.0950.590.020.43
Personal Services0.0720.960.160.79
Business Services0.0780.690.0940.58
Computers0.0480.980.0650.85
Computer Software0.0362.980.0691.35
Electronic Equipment0.0960.9390.0210.71
Measuring Equipment0.01771.1450.0760.85
Business Supplies0.0560.87 0.093 0.78
Shipping Containers0.030.83 0.004 0.73
Transportation0.0760.790.0030.69
Wholesale0.0650.6850.040.57
Retail 0.002 0.780.0330.73
Restaurants 0.05 0.980.170.82
Banking0.060.73 0.001 0.611
Insurance0.0970.710.060.59
Real Estate0.151.020.070.733
Trading0.0880.610.0390.49
Other0.0710.550.620.47

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Table 1. Pandemic names, and start and end dates.
Table 1. Pandemic names, and start and end dates.
S.N.PandemicStart DateEnd DateSource
1.Asian FluJune 1957December 1959WHO
2.Russian FluMay 1977December 1970WHO
3.SAARS-CoV-1February 2003May 2003WHO and Lee and McKibbin (2004)
4.Swine FluJune 2009August 2010WHO
5.COVID-1920 January 202230 January 2022Data Collected from Worldometer in June 2022
Notes: Table 1 reports the start and end dates of pandemics considered in this paper along with the sources.
Table 2. Asian flu of 1957–1958 and impacts on sectoral stock returns.
Table 2. Asian flu of 1957–1958 and impacts on sectoral stock returns.
SectorsAircraftAgricultureAutomobilesBanksBeerConstruction
Materials
Printing
Publishing
Mean Eqn ParametersCoefficientsCoefficientsCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.17  (0.18) 0.133 0.17 ( 0.19 ) 0.014 (0.07)0.22 * (0.13)0.07 (0.09) 0.07 ( 0.22 )
ρ 0.19 *** (0.05)0.18 *** (0.1) 0.07 ( 0.1 ) 0.12 ** (0.06)0.07 (0.05)0.14 (0.06) 0.001 ( 0.07 )
γ 1 0.02 (0.19)0.08 (0.21)0.14 (0.19)0.07 (0.08) 0.21 ( 0.13 ) 0.05 ( 0.1 ) 0.15 (0.23)
Variance Equation Parameters
α o 0.0014 (0.03)0.04 (0.03) 0.02 ( 0.02 ) 0.015 (0.01)0.09 * (0.05)0.01 (0.02)0.068 (0.04)
α 1 0.016 ( 0.028 ) 0.004 (0.03) 0.008 ( 0.014 ) 0.05  ***  ( 0.014 ) 0.07 ***  ( 0.0002 ) 0.03 (0.03) 0.004 ( 0.02 )
β 1 0.89 *** (0.03)0.93 *** (0.03)0.95 *** (0.03)0.91 *** (0.04)0.67 *** (0.13)0.9 *** (0.03)0.89 *** (0.03)
γ i 0.26 *** (0.06)0.17 *** (0.055)0.09 *** (0.03)0.13 *** (0.04)0.15 *** (0.04)0.14 *** (0.05)0.14 *** (0.05)
λ 1 0.04 (0.04) 0.03 ( 0.03 ) 0.03 ** (0.02)0.013 *** (0.0002)0.07 (0.045)0.002 (0.02)0.03 (0.05)
SectorsShipping
Containers
Business
Services
ChemicalsElectronic
Equipment
ApparelConstructionCoal
Mean Eqn ParametersCoefficientsCoefficientsCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.05 (0.13)0.03 (0.17) 0.05 ( 0.16 ) 0.11 ( 0.14 ) 0.11 (0.11)0.38 (0.25) 0.41  *  ( 0.23 )
ρ 0.12 * (0.06) 0.06 ( 0.05 ) 0.16 (0.06)0.04 (0.6)0.06 (0.06)0.14 ** (0.05)0.11 * (0.07)
γ 1 0.05 ( 0.14 ) 0.03 ( 0.16 ) 0.03 (0.17)0.15 (0.17) 0.14 ( 0.11 ) 0.42 ( 0.26 ) 0.31 (0.24)
Variance Equation Parameters
α o 0.02 (0.02)0.04 (0.04)0.02 (0.03)0.003 (0.023)0.02 (0.02) 0.02 ( 0.03 ) 0.078 (0.075)
α 1 0.011 (0.03)0.02 (0.04) 0.04 ( 0.02 ) 0.06 *** (0.02)0.065 * (0.04) 0.035  ***  ( 0.0087 ) 0.0013 ( 0.04 )
β 1 0.91 *** (0.04)0.85 *** (0.11)0.91 *** (0.03)0.0015 (0.03)0.89 *** (0.04) 0.98  **  ( 0.01 ) 0.81 *** (0.05)
γ i 0.098 *** (0.04)0.082 (0.056)0.18 *** (0.03)0.91 *** (0.028)0.05 * (0.03)0.097 *** (0.014)0.27 *** (0.07)
λ 1 0.004 (0.02) 0.02 ( 0.028 ) 0.01 (0.03)0.067 * (0.04) 0.01 ( 0.02 ) 0.032 (0.03)0.01 (0.08)
SectorsPharmaceutical
Products
Electrical
Equipment
TradingFood
Products
EntertainmentConsumer
Goods
Insurance
Mean Eqn ParametersCoefficientsCoefficientsCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.19 (0.27) 0.10 ( 0.11 ) 0.11 (0.13)0.04 (0.14)0.11 (0.069)0.094 (0.086)0.14 (0.27)
ρ 0.19 ** (0.07)0.13 (0.05)0.13 ** (0.06)0.17 *** (0.06)0.069 (0.05)0.02 (0.053)0.01 (0.07)
γ 1 0.034 ( 0.27 ) 0.073 (0.11) 0.11 ( 0.14 ) 0.004 ( 0.14 ) 0.16  **  ( 0.08 ) 0.09 ( 0.091 ) 0.08 ( 0.28 )
Variance Equation Parameters
α o 0.31 *** (0.07) 0.01  ***  ( 0.0031 ) 0.032 (0.03)0.07 (0.05)0.05 *** (0.001)0.021 (0.015)0.65 (0.45)
α 1 0.0096 (0.051) 0.067  ***  ( 0.01 ) 0.014 (0.03) 0.02 ( 0.07 ) 0.069  ***  ( 0.0001 ) 0.015 ( 0.04 ) 0.19 *** (0.06)
β 1 0.41 *** (0.15)1.01 *** (0.00062)0.91 *** (0.03)0.38 *** (0.13)1.002 *** (0.0001)0.78 *** (0.095)0.46 ** (0.18)
γ i 0.46 *** (0.133)0.11 *** (0.012)0.091 *** (0.029)0.53 *** (0.14)0.11 *** (0.002)0.22 *** (0.077) 0.066 ( 0.086 )
λ 1 0.09  ***  ( 0.02 ) 0.022 *** (0.003) 0.004 ( 0.03 ) 0.02 ( 0.04 ) 0.04  ***  ( 0.0007 ) 0.04 ( 0.025 ) 0.07 ( 0.356 )
SectorsMeasuring
Equipment
MachineryRestaurants
Hotels
Medical
Equipment
MiningPetroleum and
Natural Gas
Business
Supplies
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.11 (0.17)0.18 (0.13)0.13 (0.17)0.08 (0.24)0.08 (0.21)0.011 (0.14) 0.098 ( 0.24 )
ρ 0.006 ( 0.068 ) 0.16 *** (0.06)0.002 (0.06)0.15 * (0.08)0.05 (0.06)0.12 * (0.06)0.15 ** (0.06)
γ 1 0.04 ( 0.18 ) 0.23  *  ( 0.13 ) 0.19 ( 0.19 ) 0.014 ( 0.24 ) 0.014 ( 0.21 ) 0.04 ( 0.14 ) 0.023 (0.25)
Variance Equation Parameters
α o 0.18 (0.15)0.02 * (0.011) 0.005 ( 0.03 ) 0.45 * (0.26)0.13 (0.09)0.05 (0.032)0.082 (0.11)
α 1 0.14 *** (0.04) 0.065  **  ( 0.02 ) 0.007 ( 0.013 ) 0.19 *** (0.06)0.03 (0.06)0.04 (0.03)0.10 (0.068)
β 1 0.56 *** (0.16)0.95 *** (0.025)0.91 *** (0.04)0.25 (0.24)0.57 *** (0.15)0.83 *** (0.06)0.69 *** (0.18)
γ i 0.13 (0.12)0.21 *** (0.038)0.16 *** (0.05) 0.06 ( 0.12 ) 0.35 ** (0.15)0.21 *** (0.1) 0.08 ( 0.1 )
λ 1 0.2 (0.17) 0.011 ( 0.012 ) 0.04 (0.03)0.19 (0.23)0.054 (0.08) 0.005 ( 0.03 ) 0.36 * (0.18)
SectorsPersonal
Services
Real
Estate
RetailShipbuildingRubber and
Plastic Products
Steel
Works
Communication
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.21 (0.41)0.33 (0.15) 0.03 ( 0.084 ) 0.07 (0.14)0.1 (0.22)0.02 (0.13)0.07 (0.13)
ρ 0.11 ( 0.1 ) 0.03 (0.06)0.17 *** (0.05)0.16 *** (0.05)0.04 (0.064)0.088 * (0.05)0.14 * (0.07)
γ 1 0.08 0.31 ( 0.16 ) 0.05 (0.088) 0.12 ( 0.14 ) 0.15 ( 0.23 ) 0.13 ( 0.13 ) 0.07 ( 0.14 )
Variance Equation Parameters
α o 0.7 ** (0.33)0.17 (0.12)0.012 (0.007) 0.002 ( 0.009 ) 0.28 (0.18)0.009 (0.01)0.02 (0.02)
α 1 0.12 (0.11)0.06 (0.088) 0.03  **  ( 0.015 ) 0.05  ***  ( 0.00001 ) 0.22 ** (0.11) 0.11  ***  ( 0.004 ) 0.166 *** (0.038)
β 1 0.53 ** (0.26)0.49 ** (0.22)0.94 *** (0.03)0.96 *** (0.00001)0.37 * (0.19)0.98 *** (0.012)0.77 *** (0.02)
γ i 0.26  *  ( 0.14 ) 0.24 * (0.13)0.14 *** (0.02)0.15 *** (0.007)0.036 (0.12)0.22 *** (0.02)0.26 *** (0.076)
λ 1 0.08  ***  ( 0.0009 ) 0.17 (0.15) 0.005 ( 0.007 ) 0.018 * (0.01) 0.01 ( 0.111 ) 0.034 *** (0.01) 0.022 ( 0.02 )
SectorsRecreationTransportationTextilesUtilitiesWholesale
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficients
μ 0.4  **  ( 0.19 ) 0.042 (0.2)0.004 (0.123)0.04 (0.04)0.07 (0.25)
ρ 0.07 (0.06)0.2 *** (0.06)0.28 *** (0.06)0.31 *** (0.051)0.16 ** (0.05)
γ 1 0.45 ** (0.19) 0.06 ( 0.2 ) 0.03 ( 0.13 ) 0.0033 (0.04) 0.09 ( 0.25 )
Variance Equation Parameters
α o 0.002 0.03 ( 0.04 ) 0.033 (0.04)0.003 *** (0.001)    0.03 *** (0.013)
α 1 0.028 (0.03) 0.011 ( 0.03 ) 0.06 (0.04)0.005 (0.004) 0.11  ***  ( 0.0001 )      
β 1 0.91 *** (0.02)0.91 *** (0.032)     0.77 *** (0.06)0.91 *** (0.03)0.99 *** (0.01)
γ i 0.093 *** (0.04)     0.19 *** (0.05)0.26 *** (0.083)0.11 ** (0.05)0.17 *** (0.013)
λ 1 0.04 (0.05)0.05 (0.04) 0.0003 ( 0.04 ) 0.007 ( 0.008 ) 0.011 ( 0.012 )
Notes: Standard errors are in parenthesis. *** Significant at 1% level. ** Significant at 5% level. * Significant at 10% level.
Table 3. Russian flu and sectoral stock returns.
Table 3. Russian flu and sectoral stock returns.
SectorsAircraftAgricultureAutomobiles
and
Trucks
BankingConstruction
Materials
Shipping
Containers
Business
Services
Mean Eqn ParametersCoefficientCoefficientCoefficientCoefficientCoefficientCoefficientCoefficient
μ 0.033 (0.08)0.037 (0.097)−0.05 (0.09)−0.042 (0.066)0.012 (0.057)−0.02 (0.08)0.02 (0.057)
ρ 0.21 *** (0.064)0.005 (0.064)0.15 *** (0.06)0.29 *** (0.061)0.25 *** (0.065)0.16 ** (0.074)0.28 *** (0.06)
γ 1 0.0005 (0.10)−0.01 (0.13)0.063 (0.10)0.05 (0.82)−0.033 (0.072)0.0078 (0.097)0.036 (0.072)
Variance Equation Parameters
α 0 0.099 * (0.06)1.59 *** (0.26)0.31 (0.31)0.21 (0.21)0.026 ** (0.011)0.098 (0.11)0.045 (0.074)
α 1 0.11 * (0.062)0.04 *** (0.0005)−0.044 (0.067)−0.04 (0.07)0.099 ** (0.038)0.081 (0.087)0.054 (0.076)
β 1 0.81 *** (0.11)−0.73 *** (0.19)0.61 (0.43)0.43 (0.55)0.91 *** (0.037)0.78 *** (0.21)0.79 *** (0.30)
γ i −0.14 * (0.08)−0.097 *** (0.013)−0.04 (0.078)0.15 (0.14)−0.12 ** (0.049)−0.047 (0.083)−0.016 (0.082)
λ 1 0.0032 (0.024)0.039 (0.24)−0.08 (0.101)−0.035 (0.06)−0.008 (0.007) 0.02 ( 0.03 ) 0.0022 (0.0145)
SectorsChemicalsElectronic
Equipment
ApparelConstructionCoalPharmaceutical
Products
Electrical
Equipment
Mean Eqn ParameterCoefficientCoefficientCoefficientCoefficientCoefficientCoefficientCoefficient
μ −0.014 (0.069)0.0017 (0.0043)−0.0014 (0.072)0.026 (0.08)−0.001 (0.12)−0.09 (0.07)0.041 (0.073)
ρ 0.24 *** (0.063)0.18 *** (0.007)0.22 *** (0.06)0.22 *** (0.065)0.10 *** (0.03)0.27 *** (0.06)0.16 *** (0.059)
γ 1 −0.015 (0.087)0.02 (0.05)0.06 (0.08)−0.01 (0.09)−0.11 (0.15)0.13 (0.096)−0.02 (0.092)
Variance Equation Parameters
α 0 0.13 (0.17)1.011 *** (0.005)0.96 *** (0.15)0.045 (0.042)1.56 (1.35)0.14 (0.29)0.027 *** (0.007)
α 1 −0.02 (0.06)0.046 *** (0.015)−0.012 (0.045)−0.01 (0.02)−0.10 *** (0.03)0.03 (0.069)−0.03 *** (0.011)
β 1 0.74 ** (0.37)−1.03 *** (0.015)−0.90 *** (0.091)0.91 *** (0.078)0.0889 (0.84)0.72 (0.60)1 *** (0.0000001)
γ i −0.055 (0.08)−0.02 ** (0.006)−0.045 (0.052)0.06 (0.05)0.11 ** (0.058)0.002 (0.082)−0.022 (0.033)
λ 1 0.03 (0.034)−0.16 (0.12)−0.35 ** (0.16)−0.007 (0.01)−0.54 (0.47)−0.00001 (0.03)−0.0002 (0.0048)
SectorsFabricated
Products
Food
Products
EntertainmentPrecious
Metals
DefenseComputersHealthcare
Mean Eqn ParametersCoefficientCoefficientCoefficientCoefficientCoefficientCoefficientCoefficient
μ 0.10 (0.10)−0.042 (0.05)−0.04 (0.097)0.12 (0.10)0.076 (0.092)−0.097 (0.08)−0.03 (0.15)
ρ 0.12 ** (0.056)0.21 *** (0.061)0.13 ** (0.063)0.097 * (0.057)0.13 ** (0.06)0.08 (0.06)0.27 *** (0.061)
γ 1 −0.0004 (0.11)0.06 (0.06)0.20 (0.13)−0.11 (0.124)−0.07 (0.11)0.19 * (0.099)0.23 (0.18)
Variance Equation Parameters
α 0 0.41 *** (0.023)0.052 (0.052)0.0889 (0.064)0.036 ** (0.02)1.66 *** (0.263)0.053 *** (0.006)0.90 (1.25)
α 1 0.007 (0.05)0.02 (0.077)−0.04 (0.03)0.016 (0.019)0.127 *** (0.05)−0.07 *** (0.012)−0.046 *** (0.00002)
β 1 0.54 *** (0.064)0.72 *** (0.25)0.94 *** (0.054)1.002 *** (0.023)−0.89 *** (0.063)1.01 *** (0.00002)0.48 (0.77)
γ i −0.123 *** (0.044)0.11 (0.09)−0.03 (0.044)−0.082 *** (0.03)0.014 (0.053)−0.017 (0.02)0.033 (0.058)
λ 1 −0.255 *** (0.00002)−0.01 (0.01)0.023 * (0.013)−0.016 (0.0111)−0.053 (0.31)−0.0000009 (0.0003)−0.35 (0.47)
SectorsConsumer GoodsInsuranceMeasuring and Control EquipmentMachineryRestaurants, Hotels, MotelsMedical EquipmentIndustria
Mean Eqn ParametersCoefficientCoefficientCoefficientCoefficientCoefficientCoefficientCoefficient
μ −0.11 (0.08)0.0042 (0.055)−0.046 (0.10)0.046 (0.065)−0.14 (0.089)−0.11 (0.09)0.025 (0.064)
ρ 0.09 * (0.055)0.39 *** (0.062)0.20 *** (0.069)0.32 *** (0.0635)0.29 *** (0.05)0.13 ** (0.059)0.23 *** (0.05)
γ 1 0.11 (0.1)0.02 (0.069)0.10 (0.12)−0.062 (0.085)0.24 ** (0.11)0.21 (0.11)−0.143 (0.087)
Variance Equation Parameters
α 0 0.96 ** (0.44)0.025 (0.021)0.22 (0.19)0.36 ** (0.166)0.75 (0.66)0.11 ** (0.058)0.028 (0.0212)
α 1 0.0034 (0.08)0.049 (0.063)0.11 (0.09)0.036 (0.76)−0.11 *** (0.00008)−0.0545 (0.0386)0.0339 (0.035)
β 1 −0.399 (0.68)0.86 *** (0.11)0.75 *** (0.21)−0.03 (0.39)0.07 (0.84)0.92 *** (0.056)0.89 *** (0.082)
γ i −0.10 (0.07)0.039 (0.0739)−0.16 (0.11)0.182 (0.131)0.12 *** (0.84)0.039 (0.051)0.01 (0.044)
λ 1 −0.153 (0.18)−0.004 (0.007)−0.0078 (0.086)0.0131 (0.075)−0.16 (0.19)−0.036 ** (0.019)0.004 (0.012)
SectorsPetroleum
and
Natural Gas
Business
Supplies
Real
Estate
Rubber
and
Plastic
Products
Shipbuilding
and Railroad
Equipment
Candy
and
Soda
Communication
Mean Eqn ParametersCoefficientCoefficientCoefficientCoefficientCoefficientCoefficientCoefficient
μ 0.023 (0.048)−0.057 (0.087)0.064 (0.076)0.082 (0.06)0.14 (0.09)−0.07 (0.09)0.008 (0.044)
ρ 0.25 *** (0.052)0.27 *** (0.055)0.144 ** (0.068)0.14 ** (0.065)−0.03 (0.07)0.02 (0.07)0.087 (0.06)
γ 1 −0.026 (0.07)−0.005 (0.10)−0.01 (0.097)−0.045 (0.0832)−0.18 * (0.11)0.12 (0.12)0.005 (0.057)
Variance Equation Parameters
α 0 0.022 *** (0.0027)0.55 (0.43)0.064 (0.0577)0.0242 *** (0.005)0.31 (0.455)0.24 * (0.14)0.096 (0.16)
α 1 −0.066 *** (0.000015)0.012 (0.079)0.008 (0.043)−0.069 *** (0.0255)0.069 (0.11)0.13 (0.09)0.06 (0.10)
β 1 0.998 *** (0.000002)0.18 (0.66)0.85 *** (0.133)1.022 *** (0.00013)0.51 (0.69)0.56 *** (0.21)0.41 (0.91)
γ i 0.032 ** (0.0135)−0.08 (0.11)0.06 (0.076)−0.0051 (0.03)−0.01 (0.13)0.086 (0.094)−0.068 (0.11)
λ 1 −0.003 * (0.002)−0.096 (0.096)−0.003 (0.02)−0.002 (0.003)−0.04 (0.084)−0.04 (0.062)0.008 (0.02)
SectorsTransportationUtilitiesWholesale
Mean Eqn ParametersCoefficientCoefficientCoefficient
μ 0.001 (0.064)0.012 (0.033)−0.009 (0.051)
ρ 0.199 *** (0.07)0.41 *** (0.06)0.21 *** (0.065)
γ 1 −0.02 (0.08)0.02 (0.042)0.021 (0.067)
Variance Equation Parameters
α 0 0.03 (0.02)0.012 (0.008)0.033 (0.031)
α 1 0.078 (0.056)−0.022 (0.033)0.047 (0.054)
β 1 0.87 *** (0.082)0.89 *** (0.09)0.79 *** (0.15)
γ i −0.052 (0.054)0.0731 (0.05)0.065 (0.068)
λ 1 0.0034 (0.0096)−0.002 (0.002)0.00577 (0.013)
Notes: Standard errors are in parenthesis. *** Significant at 1% level. ** Significant at 5% level. * Significant at 10% level.
Table 4. SARS-CoV-1 and sectoral stock returns.
Table 4. SARS-CoV-1 and sectoral stock returns.
SectorsAgricultureAutomobiles
and
Trucks
BankingBeer
and
Liquor
Construction
Materials
Printing
and
Publishing
Shipping
Containers
Business
Services
Mean Eqn ParametersCoefficientsCoefficientCoefficientCoefficientCoefficientCoefficientCoeffiicentCoefficient
μ −0.09 (0.142)−0.099 (0.21)0.072 (0.096)0.066 (0.17)−0.06 (0.16)0.24 (0.29)0.17 (0.26)0.12 (0.17)
ρ −0.035 (0.042)0.003 (0.055)−0.10 ** (0.04)−0.087 (0.06)−0.04 (0.05)−0.085 (0.069)−0.16 *** (0.056)0.05 (0.05)
γ 1 0.32 ** (0.16)0.30 (0.22)0.10 (0.1)0.14 (0.1831)0.24 (0.16)−0.13 (0.29)−0.091 (0.27)0.14 (0.17)
Variance Equation Parameters
α o 0.11 ** (0.049)0.16 *** (0.031)0.24 * (0.13)1.14 * (0.66)0.033 *** (0.006)0.33 *** (0.02)0.66 (0.57)0.067 *** (0.018)
α 1 −0.03 *** (0.009)0.02 (0.032)−0.093 ** (0.045)0.11 (0.076)−0.02 (0.019)0.014 (0.03)0.04 (0.04)−0.033 *** (0.0001)
β 1 0.87 *** (0.029)0.89 *** (0.045)0.57 *** (0.22)0.28 (0.36)0.98 *** (0.025)0.88 *** (0.035)0.79 *** (0.13)0.99 *** (0.0000039)
γ i 0.2022 *** (0.038)0.076 ** (0.038)0.25 * (0.13)−0.11 (0.09)0.041 (0.025)0.09 * (0.056)0.052 (0.065)−0.008 (0.0141)
λ 1 −0.014 (0.046)−0.102 *** (0.00002)−0.13 (0.091)−0.33 (0.30)−0.02 *** (0.0003)−0.27 *** (0.0003)−0.44 (0.423)−0.042 *** (0.013)
SectorsChemicalsElectronic
Equipment
ApparelConstructionCoalPharmaceutical
Products
Electrical
Equipment
Fabricated
Products
Mean Eqn ParametersCoefficientsCoefficientCoefficientCoefficientCoefficientCoefficientCoeffiicentCoefficient
μ −0.1 (0.18)0.31 (0.36)0.19 *** (0.05)0.16 (0.25)0.41 (0.339)0.045 (0.19)0.04 (0.17)0.28 (0.27)
ρ −0.09 * (0.05)0.11 * (0.06)0.004 (0.047)−0.01 (0.0545)0.078 (0.066)0.18 *** (0.046)0.088 (0.066)−0.10 (0.056)
γ 1 0.24 (0.19)0.004 (0.38)−0.0007 (0.17)0.15 (0.26)−0.212 (0.35)0.24 (0.21)0.22 (0.18)−0.14 (0.27)
Variance Equation Parameters
α o 1.33 *** (0.42)0.398 *** (0.009)0.18 *** (0.007)0.47 (0.38)6.25 *** (1.27)0.24 *** (0.035)1.89 (1.28)0.23 (0.18)
α 1 −0.005 (0.041)−0.044 *** (0.00002−0.03 * (0.018)−0.033 (0.03)0.45 *** (0.12)−0.02 (0.014)0.086 (0.056)0.025 (0.017)
β 1 0.49 ** (0.2)0.99 *** (0.00000012)0.94 *** (0.023)0.89 *** (0.087)−0.04 (0.12)0.93 *** (0.027)−0.05 (0.61)0.93 *** (0.037)
γ i −0.15 *** (0.05)−0.02 ** (0.007)−0.01 (0.027)0.044 (0.047)−0.38 *** (0.13)−0.02 (0.016)0.05 (0.15)−0.009 (0.03)
λ 1 −0.69 *** (0.24)−0.28 *** (0.000002)−0.12 *** (0.000035)−0.30 (0.25)−4.29 *** (1.13)−0.11 *** (0.00002)−0.80 (0.70)−0.15 (0.132)
SectorsFood ProductsEntertainmentPrecious MetalsDefenseComputersHealthcareConsumer GoodsInsurance
Mean Eqn ParametersCoefficientsCoefficientCoefficientCoefficientCoefficientCoefficientCoeffiicentCoefficient
μ −0.05 * (0.03)0.078 (0.19)−0.05 (0.4)−0.29 (0.23)0.35 (0.28)−0.09 (0.17)0.12 (0.17) 0.092 ( 0.14 )
ρ 0.04 (0.05)−0.08 (0.05)−0.03 (0.03)−0.02 (0.044)0.12 ** (0.05)0.05 (0.048)0.005 (0.06)−0.06 (0.06)
γ 1 0.16 *** (0.05)0.13 (0.198)0.42 (0.41)0.59 ** (0.24)−0.069 (0.29)0.35 * (0.18)0.018 (0.177)0.21 (0.16)
Variance Equation Parameters
α o −0.002 (0.002)2.36 *** (0.23)5.92 (4.31)1.91 * (1.05)0.25 *** (0.008)0.77 * (0.41)0.22 *** (0.023)−0.017 (0.019)
α 1 −0.04 *** (0.015)−0.11 *** (0.00059)−0.095 ** (0.037)−0.033 (0.04)−0.04 * (0.022)−0.11 *** (0.04)−0.06 ** (0.03)−0.037 *** (0.01)
β 1 1.011 *** (0.0098)0.098 (0.203)0.41 (0.44)0.47 ** (0.22)0.99 (0.02)0.68 *** (0.18)0.89 *** (0.04)0.99 *** (0.005)
γ i 0.047 ** (0.024)0.132 *** (0.045)0.062 (0.052)0.24 *** (0.081)0.01 (0.02)0.10 * (0.18)0.12 ** (0.05)0.08 *** (0.026)
λ 1 0.004 (0.003)−1.42 *** (0.000002)−0.064 (1.38)−0.97 (0.67)−0.17 *** (0.00002)−0.42 * (0.25)−0.14 *** (0.00001)0.017 (0.02)
SectorsMeasuring
and
Control
Equipment
MachineryRestaurants,
Hotels, Motels
Medical
Equipment
Industrial
Mining
Petroleum
and
Natural
Gas
Business
Supplies
Personal
Services
Mean Eqn ParametersCoefficientsCoefficientCoefficientCoefficientCoefficientCoefficientCoeffiicentCoefficient
μ 0.13 (0.25)0.07 (0.29)−0.07 (0.13)0.14 (0.14)−0.21 (0.26)0.12 (0.15)−0.05 (0.16)0.17 (0.19)
ρ 0.13 ** (0.05)0.015 (0.05)−0.08 (0.065)0.20 *** (0.056)0.069 * (0.041)0.10 ** (0.054)−0.09 * (0.05)−0.08 (0.056)
γ 1 0.13 (0.26)0.12 (0.3)0.28 ** (0.144)0.10 (0.15)0.48 * (0.28)0.11 (0.17)0.19 (0.17)0.13 (0.19)
Variance Equation Parameters
α o 1.37 ** (0.06)0.29 *** (0.009)0.37 (0.32)0.79 (0.57)1.78 * (0.86)0.24 (0.18)0.029 * (0.017)0.23 *** (0.033)
α 1 −0.15 *** (0.00008)−0.057 *** (0.02)0.023 (0.044)−0.059 (0.072)−0.024 (0.036)0.019 (0.031)−0.0282 *** (0.006)−0.023 (0.023)
β 1 0.72 *** (0.15)0.96 *** (0.02)0.63 ** (0.28)0.33 (0.42)0.42 * (0.24)0.89 *** (0.08)0.99 *** (0.000008)0.89 *** (0.045)
γ i 0.09 (0.058)0.029 (0.021)0.13 (0.096)0.22 (0.14)0.32 * (0.17)−0.095 (0.06)0.036 ** (0.02)0.044 (0.037)
λ 1 −0.85 * (0.46)−0.23 *** (0.00073)−0.143 (0.16)−0.39 (0.33)−0.59 (0.47)−0.12 (0.099)−0.025 (0.02)−0.13 *** (0.00003)
SectorsReal
Estate
RetailRubber
and
Plastic Products
Shipbuilding
and
Railroad
TobaccoCandy
and
Soda
Computer
Software
Steel
Works
Mean Eqn ParametersCoefficientsCoefficientCoefficientCoefficientCoefficientCoefficientCoeffiicentCoefficient
μ 0.058 (0.12)0.11 (0.19)0.082 (0.64)0.29 * (0.16)−0.192 (0.32)0.22 (0.15)0.33 (0.26)−0.045 (0.26)
ρ −0.068 (0.06)0.035 (0.05)−0.19 (0.28)−0.13 ** (0.06)−0.002 (0.039)−0.04 (0.06)0.14 ** (0.059)−0.027 (0.06)
γ 1 0.11 (0.13)0.09 (0.19)0.50 (0.73)−0.14 (0.17)0.49 (0.337)−0.18 (0.16)−0.042 (0.28)0.26 (0.27)
Variance Equation Parameters
α o 0.58 * (0.32)0.05 ** (0.023)4.16 (3.56)0.35 * (0.19)3.43 *** (0.17)1.78 *** (0.43)0.25 *** (0.05)6.67 *** (1.16)
α 1 0.26 ** (0.12)−0.029 ***−0.006 *** (0.00005)0.02 (0.03)0.026 (0.036)−0.012 (0.06)−0.05 *** (0.0003)−0.04 (0.026)
β 1 0.25 (0.26)1.002 *** (0.00002)0.59 (0.37)0.70 *** (0.11)0.53 *** (0.069)−0.132 (0.11)1.002 *** (0.000005)−0.77 *** (0.18)
γ i −0.01 (0.16)0.015 (0.011)−0.52 (0.39)0.13 ** (0.05)−0.11 *** (0.033)0.22 *** (0.08)−0.024 (0.023)−0.016 (0.063)
λ 1 −0.31 (0.22)−0.035 ** (0.02)−0.016 (1.23)−0.03 (0.11)−1.92 *** (0.00003) 0.83  **  ( 0.39 ) −0.16 *** (0.036)−4.03 *** (1.12)
SectorsCommunicationRecreationTransportationUtilitiesOther
Mean Eqn ParametersCoefficientsCoefficientCoefficientCoefficientCoefficient
μ 0.41 (0.28)0.13 (0.18)0.02 (0.081)0.01 (0.2)0.001 (0.18)
ρ 0.036 (0.051)−0.04 (0.06)−0.024 (0.05) 0.09 ( 0.07 ) −0.12 ** (0.059)
γ 1 −0.128 (0.29)0.016 (0.19)0.21 (0.13)0.12 (0.23)0.19 (0.19)
Variance Equation Parameters
α o 0.122.58 (1.65)0.02 (0.02)1.58 ** (0.64)0.089 ** (0.046)
α 1 −0.014 *** (0.00003)0.063 (0.062)−0.03 *** (0.0001)0.32 *** (0.099)−0.015 (0.017)
β 1 1.0002 *** (0.00004)−0.27 (0.69)1.005 *** (0.000012)0.25 (0.17)0.95 *** (0.027)
γ i −0.011 (0.011)−0.008 (0.099)0.038 *** (0.01) 0.07 ( 0.123 ) 0.08 ** (0.035)
λ 1 −0.097 ** (0.037)−1.38 (1.02)−0.012 (0.017)−1.28 ** (0.58)−0.065 ** (0.035)
Notes: Standard errors are in parenthesis. *** Significant at 1% level. ** Significant at 5% level. * Significant at 10% level.
Table 5. Swine flu and sectoral stock returns.
Table 5. Swine flu and sectoral stock returns.
SectorsAircraftAutomobiles
and
Trucks
BankingBeer
and
Liquor
Construction
Materials
Printing
and
Publishing
Shipping
Containers
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ −0.12 (0.31)0.14 (0.39)−0.33 (0.65)0.003 (0.19)−0.23 (0.324)−0.2 (0.432)−0.025 (0.23)
ρ −0.008 (0.06)0.06 (0.05)−0.17 *** (0.1)−0.001 (0.06)0.026 (0.055)0.002 (0.0668)0.029 (0.04)
γ 1 0.320.180.57 (0.76)0.11 (0.20)0.44 (0.345)0.412 (0.412)0.15 (0.24)
Variance Equation Parameters
α o 0.12 (0.17)1.58 *** (0.068)1.55 ** (0.67)0.25 *** (0.026)0.296 *** (0.035)0.28 (0.26)0.15 *** (0.017)
α 1 0.006 (0.032)0.05 (0.041)0.04 (0.026)0.007 (0.025)0.029 (0.028)0.031 (0.031)0.011 (0.026)
β 1 0.92 *** (0.03)0.79 *** (0.05)0.91 *** (0.022)0.86 *** (0.036)0.90 *** (0.031)0.92 *** (0.026)0.88 *** (0.031)
γ i 0.12 ** (0.05)0.089 ** (0.05)0.0233 (0.031)0.075 (0.056)0.07 * (0.039)0.078 * (0.045)0.13 *** (0.042)
λ 1 −0.13 (0.16)−1.36 *** (0.0003)−1.49 ** (0.65)−0.18 (0.000089)−0.25 *** (0.00032)−0.26 (0.25)−0.12 *** (0.0002)
SectorsBusiness
Services
ChemicalsElectronic
Equipment
ApparelConstructionCoalPharmaceutical
Products
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.09 (0.27)0.16 (0.34)0.13 (0.33)−0.016 (0.37)0.02 (0.47)−0.11 (0.91)−0.036 (0.17)
ρ −0.07 (0.058)−0.06 (0.05)−0.037 (0.06)0.02 (0.054)−0.01 (0.065)−0.03 (0.059)−0.024 (0.065)
γ 1 0.046 (0.28)0.083 (0.35)0.012 (0.34)0.256 (0.39)0.07 (0.49)0.49 (0.94)0.14 (0.18)
Variance Equation Parameters
α o 1.045 *** (0.04)6.36 ** (3.14)0.56 (0.35)0.46 (0.32)0.43 *** (0.033)0.21 (0.15)0.17 (0.12)
α 1 −0.07 *** (0.02)−0.08 * (0.05)−0.02 (0.02)0.04 (0.04)0.035 (0.037)−0.015 *** (0.00087)0.04 (0.049)
β 1 0.85 *** (0.03)0.42 (0.25)0.91 *** (0.042)0.89 *** (0.04)0.93 *** (0.028)1.002 *** (0.0000068)0.82 *** (0.061)
γ i 0.14 *** (0.049)0.06 (0.07)0.085 ** (0.037)0.05 (0.044)0.013 (0.045)−0.028 *** (0.005)0.1 (0.07)
λ 1 −0.84 *** (0.00001)−4.42 * (2.43)−0.45 (0.31)−0.41 (0.31)−0.37 *** (0.00001)−0.0009 (0.14)−0.11 (0.094)
SectorsElectrical
Equipment
Fabricated
Products
TradingFood
Products
EntertainmentPrecious
Metals
Defense
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ −0.23 (0.42)−0.0002 (0.49)0.22 (0.51)−0.11 (0.19)0.035 (0.49)0.27 (0.40)0.07 (0.30)
ρ −0.02 (0.063)0.013 (0.059)−0.16 ** (0.064)−0.07 (0.04)0.042 (0.05)−0.05 (0.03)−012 * (0.06)
γ 1 0.40 (0.43)0.19 (0.5)−0.06 (0.52)0.22 (0.19)0.28 (0.52)0.014 (0.013)0.002 (0.32)
Variance Equation Parameters
α o 0.41 (0.39)0.79 *** (0.045)1.48 *** (0.45)0.072 *** (0.005)0.72 (0.56)1.18 *** (0.11)0.93 (0.64)
α 1 0.014 (0.04)0.013 (0.03)−0.008 (0.02)−0.02 (0.015)0.025 (0.024)−0.09 *** (0.0000325)0.043 (0.067)
β 1 0.89 *** (0.04)0.91 *** (0.032)0.89 *** (0.031)0.93 *** (0.014)0.94 *** (0.038)0.99 *** (0.000046)0.82 *** (0.11)
γ i 0.13 *** (0.048)0.076 (0.005)0.15 *** (0.032)0.12 *** (0.04)−0.016 (0.029)0.014 (0.013)0.005 (0.06)
λ 1 −0.37 (0.36)−0.69 *** (0.00003)0.15 *** (0.05)−0.06 *** (0.00001)−0.48 (0.42)−0.67 *** (0.067)−0.68 (0.5)
SectorsComputersConsumer GoodsInsuranceMeasuring and Control EquipmentRestaurants, Hotels and MotelsMedical EquipmentMetal Mining
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.11 (0.25)−0.09 (0.32)−0.22 (0.43)−0.15 (0.25)0.02 (0.27)−0.06 (0.23)0.36 (0.41)
ρ −0.0061 (0.056)−0.14 ** (0.059)−0.17 *** (0.056)0.029 (0.06)−0.043 (0.055)0.035 (0.062)0.001 (0.05)
γ 1 0.130.24 (0.32)0.46 (0.44)0.31 (0.25)0.16 (0.28)0.18 (0.24)−0.11 (0.44)
Variance Equation Parameters
α o 0.89 *** (0.056)−0.017 (0.04)0.26 *** (0.016)0.48 *** (0.025)0.17 (0.149)0.11 (0.13)7.15 *** (2.19)
α 1 −0.041 (0.03)−0.0089 (0.0119)0.064 (0.04)−0.02 (0.032)0.015 (0.04)−0.0141 (0.041)−0.089 *** (0.0006)
β 1 0.83 *** (0.045)1.004 *** (0.00006)0.90 *** (0.027)0.87 *** (0.039)0.92 *** (0.038)0.92 *** (0.048)0.64 *** (0.1)
γ i 0.17 *** (0.047)−0.0295 (0.0262)0.03 (0.04)0.18 *** (0.05)0.073 (0.06)0.124 ** (0.055)0.09 (0.057)
λ 1 −0.71 *** (0.0002)0.0262 (0.036)−0.25 *** (0.00008)−0.42 *** (0.0001)−0.15 (0.14)−0.07 (0.1)−4.36 *** (1.58)
SectorsPetroleum
and
Natural
Gas
Business
Supplies
Personal
Services
Real
Estate
RetailRubber
and
Plastic
Products
Shipbuilding
and
Railroad
Equipment
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ −0.03 (0.32)−0.16 (0.41)−0.11 (0.277)−0.24 (0.67)0.023 (0.27)−0.38 (0.39)−0.038 (0.36)
ρ −0.05 (0.07)−0.07 (0.05)0.023 (0.06)−0.06 (0.06)−0.003 (0.049)−0.02 (0.06)−0.03 (0.056)
γ 1 0.15 (0.33)0.38 (0.42)0.27 (0.29)0.6 (0.69)0.097 (0.29)0.56 (0.41)0.36 (0.37)
Variance Equation Parameters
α o 0.26 *** (0.042)0.51 *** (0.012)0.87 (0.56)5.25 *** (0.13)1.33 ** (0.57)0.39 (0.30)2.29 *** (0.23)
α 1 0.072 (0.05)−0.00559 (0.012)0.027 (0.035)0.08 (0.05)−0.045 *** (0.00006)0.039 (0.033)−0.05 *** (0.02)
β 1 0.89 *** (0.037)0.95 *** (0.01)0.83 *** (0.095)0.75 *** (0.05)0.71 *** (0.078)0.89 *** (0.041)0.75 *** (0.06)
γ i 0.0018 (0.066)0.009 (0.02)0.02 (0.05)0.14 * (0.07)0.25 *** (0.078)0.055 (0.047)0.19 *** (0.067)
λ 1 −0.17 *** (0.00018)−0.44 *** (0.00003)−0.60 (0.42)−4.87 *** (0.00006)−1.132 ** (0.052)−0.33 (0.27)−1.43 *** (0.0003)
SectorsTobacco
Products
Computer
Software
Steel
Works
CommunicationRecreationTransportationTextiles
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ −0.086 (0.17)0.059 (0.28)−0.013 (0.45)−0.095 (0.29)−0.1 (0.243)−0.23 (0.46)−0.42 (0.53)
ρ −0.002 (0.05)−0.089 (0.05)0.02 (0.061)−0.056 (0.066)0.078 (0.053)0.002 (0.062)0.11 * (0.058)
γ 1 0.200.096 (0.29)0.27 (0.48)0.23 (0.29)0.25 (0.25)0.41 (0.45)0.644 (0.54)
Variance Equation Parameters
α o 0.13 (0.12)0.49 * (0.28)0.49 *** (0.09)0.34 (0.22)0.33 *** (0.04)1.19 *** (0.025)0.71 (0.55)
α 1 0.015 (0.03)−0.011 (0.03)0.025 (0.04)−0.01 (0.03)0.0078 (0.03)0.002 (0.06)0.05 * (0.03)
β 1 0.87 *** (0.055)0.87 *** (0.05)0.89 *** (0.041)0.91 *** (0.035)0.84 *** (0.04)0.89 *** (0.028)0.90 *** (0.029)
γ i 0.14 ** (0.067)0.14 *** (0.05)0.075 * (0.042)0.13 ** (0.05)0.27 *** (0.08)0.11 *** (0.0383)0.055 (0.04)
λ 1 −0.08 (0.08)0.14 *** (0.05)−0.31 *** (0.00007)−0.31 (0.21)−0.26 *** (0.00019)−1.13 *** (0.00003)−0.66 (0.53)
SectorsUtilitiesWholesaleOther
Mean Eqn ParametersCoefficientsCoefficientCoefficient
μ −0.065 (0.23)0.11 (0.22)−0.14 (0.42)
ρ 0.007 (0.063)−0.009 (0.059)0.04 (0.063)
γ 1 0.150.079 (0.22)0.27 (0.43)
Variance Equation Parameters
α o 0.22 (0.16)0.16 *** (0.018)0.38 (0.28)
α 1 0.06 (0.06)−0.01 (0.022)0.034 (0.03)
β 1 0.85 *** (0.07)0.91 *** (0.027)0.91 *** (0.032)
γ i 0.03 (0.065)0.11 *** (0.039)0.06 (0.043)
λ 1 −0.15 (0.12)−0.11 *** (0.00016)−0.36 (0.28)
Notes: Standard errors are in parenthesis. *** Significant at 1% level. ** Significant at 5% level. * Significant at 10% level.
Table 6. COVID-19 and sectoral stock returns.
Table 6. COVID-19 and sectoral stock returns.
SectorsAircraftAgricultureAutomobiles
and Trucks
BanksBeerConstruction
Materials
Shipping
Containers
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ −0.09 (0.09)−0.12 (0.15)0.16 (0.12)0.06 (0.064)−0.02 (0.07)0.07 (0.07)−0.001 (0.1)
ρ 0.01 (0.1)−0.11 (0.08)0.037 (0.073)−0.08 (0.07)−0.16 ** (0.078)0.04 (0.063)−0.12 * (0.07)
γ 1 0.002 (0.31)0.28 (0.38)0.092 (0.51)−0.05 (0.28)0.02 (0.11) 0.056 ( 0.25 ) −0.08 (0.24)
Variance Equation Parameters
α o 0.022 (0.02)0.22 (0.19)0.17 ** (0.08)0.038 ** (0.015)0.051 * (0.02)0.03 *** (0.012)0.05 (0.03)
α 1 −0.07 *** (0.004)0.09 (0.09)−0.08 ** (0.033)−0.055 (0.04)−0.03 (0.079)−0.06 *** (0.02)−0.07 * (0.04)
β 1 0.96 *** (0.02)0.80 *** (0.09)0.15 *** (0.053)0.86 *** (0.05)0.83 *** (0.068)0.89 *** (0.03)0.91 *** (0.04)
γ i 0.19 *** (0.03)0.05 (0.10)0.90 *** (0.064)0.33 *** (0.089)0.31 *** (0.08)0.29 *** (0.078)0.24 *** (0.07)
λ 1 0.23 ** (0.1)0.65 (0.41)1.82 *** (0.67)0.39 * (0.23)0.043 (0.035)0.35 * (0.2)0.29 * (0.13)
SectorsBusiness
Services
ChemicalsElectronic
Equipment
ApparelConstructionCoalPharmaceutical
Products
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.05 (0.084) 0.02 ( 0.09 ) 0.23 ** (0.10)0.083 *** (0.02)0.16 * (0.08)−0.32 (0.23)0.16 * (0.07)
ρ −0.004 (0.08)0.02 (0.07)−0.17 ** (0.07)0.07 (0.05)0.02 (0.07)0.056 (0.081)−0.09 (0.08)
γ 1 0.08 (0.21)−0.11 (0.26)−0.18 (0.24)−0.07 (0.06)−0.05 (0.2)−0.26 (0.63)−0.21 (0.17)
Variance Equation Parameters
α o 0.04 (0.03)0.05 (0.03)0.083 ** (0.03)0.02 *** (0.002)0.07 ** (0.04)1.04 * (0.59)0.027 (0.017)
α 1 −0.03 (0.07)−0.035 (0.049)−0.11 *** (0.04)−0.143 *** (0.0002)0.17 * (0.09)0.05 (0.059)0.004 (0.004)
β 1 0.82 *** (0.05)0.87 *** (0.05)0.89 *** (0.04)0.98 *** (0.00002)0.67 *** (0.062)0.74 *** (0.12)0.84 *** (0.049)
γ i 0.34 *** (0.12)0.26 *** (0.074)0.34 *** (0.072)0.27 *** (0.00004)0.36 *** (0.14)0.098 (0.083)0.84 *** (0.05)
λ 1 0.11 (0.09)0.20 (0.13)0.25 ** (0.11)0.24 *** (0.03)0.059 *** (0.00001)4.6 * (2.62)0.11 * (0.063)
SectorsElectrical
Equipment
Fabricated
Products
TradingFood ProductsEntertainmentPrecious
Metals
Defense
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.09 (0.09)−0.05 (0.05)0.18 ** (0.08)0.013 (0.06)0.06 (0.12)0.09 (0.66)0.06 (0.087)
ρ −0.016 (0.08)−0.04 (0.07)−0.079 (0.074)−0.15 ** (0.07) 0.06 ( 0.07 ) 0.072 (0.84)−0.05 (0.08)
γ 1 −0.23 (0.27)−0.24 (0.36)−0.16 (0.21)0.017 (0.15)0.002 (0.24)0.19 (0.39)0.046 (0.22)
Variance Equation Parameters
α o 0.026 (0.03)0.036 *** (0.01)0.051 ** (0.023)0.046 *** (0.014)0.25 *** (0.09)0.08 (0.05)0.069 ** (0.03)
α 1 −0.02 (0.05)−0.08 *** (0.01)−0.027 (0.059)−0.033 (0.057) 0.08 ( 0.07 ) 0.026 (0.045)0.022 (0.04)
β 1 0.87 *** (0.045)1.01 *** (0.00001)0.76 *** (0.07)0.81 *** (0.06)0.77 *** (0.084)0.91 *** (0.041)0.84 *** (0.04)
γ i 0.27 *** (0.083)0.10 *** (0.0239)0.44 *** (0.12)0.322 *** (0.081)0.37 *** (0.099)0.0677 (0.054)0.23 *** (0.076)
λ 1 0.26 (0.17)0.92 *** (0.14)0.31 (0.19)0.11 *** (0.072)0.411 (0.27)0.35 (0.18)0.096 (0.0977)
SectorsComputersHealthcareConsumer
Goods
InsuranceMeasuring
and
Control Equipment
MachineryRestaurants,
Hotels, Motels
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.02 (0.11)0.17 * (0.09)0.034 (0.0783)0.098 * (0.06)0.15 ** (0.089)0.092 (0.068)0.03 (0.09)
ρ −0.18 ** (0.07)−0.11 (0.074)−0.055 (0.078)0.024 (0.064)−0.17 ** (0.07)−0.01 (0.06)−0.03
γ 1 0.015−0.11 (0.25)−0.066 (0.16)−0.152 (0.233)−0.12 (0.24)−0.19 (0.24)−0.14 (0.22)
Variance Equation Parameters
α o 0.11 *** (0.037)0.048 (0.031)0.0277 (0.021)0.05 *** (0.017)0.042 (0.03)0.08 *** (0.016)0.03 (0.02)
α 1 −0.077 ** (0.036)0.01 (0.056)0.019 (0.069)−0.066 *** (0.0002)−0.03 (0.047)−0.095 *** (0.00098)−0.025 (0.04)
β 1 0.88 *** (0.042)0.82 *** (0.05)0.81 *** (0.049)0.733 *** (0.06)0.84 *** (0.048)0.86 *** (0.02)0.86 *** (0.04)
γ i 0.23 *** (0.06)0.24 *** (0.09)0.29 ** (0.11)0.56 *** (0.15)0.29 *** (0.08)0.34 *** (0.04)0.26 *** (0.08)
λ 1 0.43 ** (0.19)0.19 (0.13)0.089 ** (0.04)0.53 *** (0.18)0.21 * (0.15)0.53 *** (0.18)0.13 * (0.072)
SectorsMedical
Equipment
Non-metallic and
Industrial Mining
Petroleum and
Natural Gas
Business
Supplies
Personal
Services
Real
Estate
Retail
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.028 (0.085)0.04 (0.0976)−0.095 *** (0.029)0.04 (0.089)0.009 (0.08)0.096 (0.088)0.006 (0.067)
ρ −0.132 * (0.07)0.02 (0.06)−0.08 (0.06)−0.11 * (0.06)−0.042 (0.076)−0.037 (0.067)−0.16 ** (0.07)
γ 1 −0.034 (0.2121)−0.32 (0.33)−0.46 * (0.25)−0.266 (0.243)−0.26 (0.24)−0.20 (0.25)0.22 (0.19)
Variance Equation Parameters
α o 0.014 (0.014)0.077 * (0.036)0.041 *** (0.0092)0.04 (0.024)0.015 (0.013)0.01 (0.02)0.0246 ** (0.01)
α 1 −0.1 *** (0.03)−0.09 *** (0.04)−0.11 *** (0.00457)−0.1 *** (0.027)0.02 (0.05)−0.039 (0.048)−0.027 (0.049)
β 1 0.96 *** (0.02)0.92 *** (0.032)1.002 *** (0.000076)0.94 *** (0.022)0.88 *** (0.03)0.91 *** (0.028)0.87 *** (0.035)
γ i 0.22 *** (0.045)0.26 *** (0.07)0.18 *** (0.000007)0.23 *** (0.05)0.15 (0.09)0.23 *** (0.061)0.222 *** (0.062)
λ 1 0.16 ** (0.06)0.55 ** (0.27)0.36 *** (0.078)0.32 *** (0.11)0.15 ** (0.063)0.14 ** (0.06)0.085 ** (0.035)
SectorsRubber and Plastic ProductsShipbuildingTobacco ProductsCandy and SodaComputer SoftwareSteel WorksCommunication
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficientsCoefficientsCoefficients
μ 0.042 (0.078)0.05 (0.049)0.17 * (0.09)0.043 (0.077)0.15 * (0.08)−0.04 * (0.02)0.025 (0.06)
ρ −0.068 (0.07)0.016 (0.05)−0.049 (0.078)−0.13 * (0.07)−0.12 (0.08)−0.033 (0.05)−0.12 * (0.07)
γ 1 −0.088 (0.23)−0.24 (0.26)−0.41 * (0.21)0.17 (0.13)0.01 (0.22)−0.59 *** (0.2)−0.03 (0.175)
Variance Equation Parameters
α o 0.024 (0.018)0.034 *** (0.007)0.045 (0.037)0.051 ** (0.022)0.05 *** (0.02)0.017 *** (0.001)0.023 (0.015)
α 1 −0.019 (0.047)−0.08 *** (0.0001)0.073 (0.065)−0.089 ** (0.035)−0.01 (0.06)−0.07 *** (0.0001)−0.047 (0.06)
β 1 0.88 *** (0.039)0.99 *** (0.000014)0.79 *** (0.041)0.85 *** (0.04)0.79 *** (0.063)0.99 *** (0.0000012)0.86 *** (0.05)
γ i 0.19 *** (0.065)0.133 *** (0.005)0.18 ** (0.075)0.36 *** (0.09)0.33 *** (0.087)0.15 *** (0.0000036)0.29 *** (0.09)
λ 1 0.19 ** (0.09)0.38 *** (0.11)0.26 ** (0.12)0.066 * (0.036)0.16 (0.11)0.26 *** (0.076)0.14 (0.08)
SectorsRecreationTransportationTextilesUtilitiesWholesale
Mean Eqn ParametersCoefficientsCoefficientCoefficientsCoefficientsCoefficients
μ −0.11 (0.21)−0.028 (0.08)−0.05 (-0.15)0.03 (0.06)0.075 (0.06)
ρ −0.03 (0.089)0.095 (0.07)0.16 ** (0.066)−0.003 (0.079)−0.03 (0.07)
γ 1 −0.12 (0.37)0.015 (0.25)−0.26 (0.42)0.15 (0.15)−0.1 (0.17)
Variance Equation Parameters
α o 0.27 * (0.15)0.08 ** (0.039)0.13 *** (0.03)0.043 ** (0.02)0.022 * (0.011)
α 1 −0.03 (0.03)−0.08 * (0.044)−0.032 *** (0.00039)−0.0003 (0.07)−0.08 *** (0.00006)
β 1 0.90 *** (0.04)0.80 *** (0.06)0.92 *** (0.000003)0.78 *** (0.063)0.87 *** (0.03)
γ i 0.16 *** (0.04)0.43 *** (0.13)0.18 *** (0.03)0.36 *** (0.13)0.41 *** (0.09)
λ 1 0.13 (0.19)0.69 ** (0.34)0.53 (0.33)0.023 (0.05)0.15 (0.11)
Notes: Standard errors are in parenthesis. *** Significant at 1% level. ** Significant at 5% level. * Significant at 10% level.
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Koirala, N.P.; Nyiwul, L. Pandemics and Stock Price Volatility: A Sectoral Analysis. J. Risk Financial Manag. 2023, 16, 467. https://doi.org/10.3390/jrfm16110467

AMA Style

Koirala NP, Nyiwul L. Pandemics and Stock Price Volatility: A Sectoral Analysis. Journal of Risk and Financial Management. 2023; 16(11):467. https://doi.org/10.3390/jrfm16110467

Chicago/Turabian Style

Koirala, Niraj Prasad, and Linus Nyiwul. 2023. "Pandemics and Stock Price Volatility: A Sectoral Analysis" Journal of Risk and Financial Management 16, no. 11: 467. https://doi.org/10.3390/jrfm16110467

APA Style

Koirala, N. P., & Nyiwul, L. (2023). Pandemics and Stock Price Volatility: A Sectoral Analysis. Journal of Risk and Financial Management, 16(11), 467. https://doi.org/10.3390/jrfm16110467

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