1. Introduction
The field of mathematical finance is one of the most rapidly emerging domains in the subject of finance. Dynamically Simulated Autoregressive Distributed Lag (DYS-ARDL) [
1] is an influential tool that may help an investor analyze and benefit by understanding the positive and negative shocks in policy indicators. This strategy enables investors to observe the reaction of equity prices to positive and negative shocks of various magnitude (1%, 5%, 10%, and others). More importantly, it may assist the diversification of potential portfolios across various equities based on predicted reaction. Coupled with DYS-ARDL, the few other effective strategies include statistical arbitrage strategies (SAS) and pairs trading strategy (PTS) that are empirically executed in mathematical finance literature; see for example [
1,
2,
3,
4,
5,
6]. Stübinger and Endres [
2] developed and applied PTS to minute-by-minute data of oil companies constituting the S&P 500 market index for the US and revealed that the statistical arbitrage strategy enables intraday and overnight trading. Similarly, Stübinger, Mangold, and Krauss [
6] developed SAS (based on vine copulas), which is a highly flexible instrument with multivariate dependence modeling under the linear and nonlinear setting. The authors find it promising in the context of the S&P 500 index of the United States (US) equities. Using SAS, Avellaneda and Lee [
3] related the performance of mean-reversion SAS with the stock market cycle and found it effective in studying stock performance during the liquidity crisis. Empirical evidence from the US equity market on PTS links trading cost documents that PTS is profitable among well-matched portfolios [
5]. Liu, Chang, and Geman [
4] argue that PTS can facilitate stakeholders to capture inefficiencies in the local equity market using daily data. Interestingly, we find that SAS and PTS strategies are successfully employed in the context of the US, while to the best of our knowledge, we do not find the use of DYS-ARDL, which is surprising. Each of the described strategies has unique features in a given scenario in which they are used, yet it worthwhile to add little value to mathematical finance literature by empirically examining the DYS-ARDL specification in the US context.
Given the economic implications of financial markets and eventual behavior [
7,
8,
9,
10], this piece of research empirically examines the short- and long-run impacts of policy uncertainty (hereafter PU) on stock prices of the US using a novel DYS-ARDL setting proposed by Jordan and Philips [
1] and of threshold relation using the Tong [
11] model. The study is motivated by conflicting literature on policy risk stock price and shortcomings associated with the traditional cointegration model (e.g., Autoregressive Distributed Lag (ARDL)).
Since the introduction of the measure of PU by Baker et al. [
12], the effects of the PU on macro variables have gained substantial attention. PU is closely monitored and analyzed by businesses, policymakers, and academic scholars, as the global economy is now more closely interconnected than ever [
13]. Intuitively, an increase in PU is expected to negatively influence the stock market, while on the contrary, stock market indicators may react positively to a decline in PU [
14]. This intuition is consistent with the findings of Baker, Bloom, and Davis [
12], who have shown its adverse effects on economic activities, which is confirmed by the recent literature [
14,
15,
16,
17,
18,
19,
20,
21,
22,
23,
24,
25,
26,
27].
According to Baker, Bloom, and Davis [
12], economic PU refers to “
a non-zero probability of changes in the existing economic policies that determine the rules of the game for economic agents”. The impact of changes in PU may potentially rout the following channels:
First, it can change or delay important decisions made by companies and other economic actors, such as investment [
28], employment, consumption, and savings decisions [
14,
29].
Second, it increases financing and production costs by affecting supply and demand channels, exacerbating investment decline, and economic contraction [
14,
17,
30,
31].
Third, it can increase the risks in financial markets, especially by reducing the value of government protection provided to the market [
17].
Lastly, PU also affects inflation, interest rates, and expected risk premiums [
32,
33].
Importantly, in the context of the US, the phenomena are also captured by a few studies [
14,
21,
22,
23,
27] with conflicting findings. For example, some of them [
14,
15,
21,
23,
34] found a negative relationship, while others reported no effect [
22,
27]. The conflicting referred literature on the US [
14,
15] relies on the classical approach [
35] to capture the cointegration relationship. From the symmetry assumption perspective drawn on this approach [
35], it follows that an increase in PU will negatively affect the other macroeconomic variables and that a decrease in PU will increase this variable. However, this may not be the case, as investors’ responses may differ from increasing PU versus decreasing PU. It is possible that, due to an increase in uncertainty, investors move their equity assets to safer assets and that a decrease in uncertainty may cause them to shift their portfolio towards the stock market (assume the change in PU is less than increase) if they expect that a decrease in uncertainty is short-lived and then that asymmetry originates.
The shortcomings associated with Pesaran, Shin, and Smith [
35] are, to some extent, addressed by nonlinear extension by Shin et al. [
36], which generates two separate series (positive and negative) from the core explanatory variable. Thus, the asymmetric impact may be estimated; however, this approach overlooks the simulation features while estimating the short- and long-run asymmetries. The package is given by Jordan and Philips [
1], known as the DYS-ARDL approach, which takes into account the simulation mechanism and liberty to use positive and negative shocks in an explanatory variable and captures the impact in a variable of interest. According to recent literature [
37,
38], this novel approach is capable of predicting the actual positive and negative changes in the explanatory variable and its subsequent impact on the dependent variable. Moreover, it can stimulate, estimate, and automatically predict, and graph said changes. The authors also believe that classical ARDL can only estimate the long-term and short-term relationships of the variables. Contemplating the limitations associated with traditional estimators, this study uses Jordan and Philips [
1] inspirational DYS-ARDL estimator to examine the relationship between PU and US stock prices.
In addition, this study extends the analysis beyond the DYS-ARDL estimator [
1] by using Tong [
11] threshold regression Although DYS-ARDL [
1] is a powerful tool to capture the dynamic cointegration between an independent variable and dependent variable, and its unique feature automatically generates the simulation-based graph of changes to SP as a result of a certain positive/negative shock in PU, it is beyond its capacity to figure out a certain level (point) where the relationship (magnitude of coefficient) changes. For example, literature shows that the general stock market is linearity correlated with the changes in PU [
14,
15,
16,
17,
18,
19,
20,
21,
22,
23,
24,
25,
26,
27]. An increase in PU brings a negative influence on SP, in which a decrease translates into a positive change.
Threshold models have recently paid attention to modeling nonlinear behavior in applied economics. Part of the interest in these models is in observable models, followed by many economic variables, such as asymmetrical adjustments to the equilibrium [
39]. By reviewing a variety of literature, Hansen [
40] recorded the impact of the Tong [
11] threshold model on the field of econometrics and economics and praised Howell Tong’s visionary innovation that greatly influenced the development of the field of econometrics and economics.
Concisely, this small piece of research extends the financial economics and mathematical finance literature on PU and SP in the context of the United States, which is the world’s top-ranked equity market [
41] in three distinct ways. First, the novelty stems from the use of DYS-ARDL [
1], which produces efficient estimation using simulations mechanism (which traditional ARDL departs), and auto-predicts the relationship graphically alongside empirical mechanics. To the best of our knowledge, this is the first study to verify traditional estimation with this novel and robust method. The empirical findings of DYS-ARDL document a negative response of stock prices in the short-run for a 10% positive and negative change (shock) in PU, while a linear relationship is observed in case of the long-run in response to said change.
Second, coupled with novel DYS-ARDL, this study adds value to relevant literature by providing evidence from threshold regression [
11], which provides two significant thresholds in the nexus of PU-SP that may offer useful insight into policy matters based upon identified threshold(s). It is worth noting that SP negatively reacts to PU until a certain level (threshold-1), where the magnitude of such reaction changes (declines) to another point (threshold-2) with relatively low magnitude (still negative). Interestingly, below threshold-2, the PU became irrelevant to the US-SP nexus.
Third, this is a compressive effort to provide a broader picture of the US stock market reaction to policy changes. In this regard, prior literature is confined to the New York Stock Exchange Composite Index and S&P 500, while this study empirically tested seven major stock indices: S&P 500, Dow Jones Industrial Average, Dow Jones Composite Average, NASDAQ composite, NASDAQ100, and Dow Jones Transpiration Average. Expending analysis of these indices potentially provides useful insights to investors and policymakers because all are not equally exposed to adverse changes in PU. Some of them are nonresponsive to such changes, which may help a group of investors diversifying their investments to avoid unfavorable returns and to construct the desired portfolio with low risk. On the other hand, risk-seeking investors may capitalize on risk premiums, where understanding the identified thresholds may help to diversify their investments reasonably.
The rest of the work is organized as follows.
Section 2 outlines the related literature;
Section 3 illustrates the material and methods; results and discussion are covered by
Section 4; the study is concluded in
Section 5.
2. Literature Review
Bahmani-Oskooee and Saha [
15] assessed the impact of PU on stock prices in 13 countries, including the United States, and find that, in almost all 13 countries, increased uncertainty has negative short-term effects on stock prices but not in the long term. Sum [
18] utilized the ordinary least squares method to analyze the impact of PU on stock markets (from January 1993 to April 2010) of Ukraine, Switzerland, Turkey, Norway, Russia, Croatia, and the European Union. The study finds that PU negatively impacts EU stock market returns, except for in Slovenia, Slovakia, Latvia, Malta, Lithuania, Estonia, and Bulgaria. The analysis does not identify any negative impact of stock market returns of non-EU countries included in the study. Sum [
24] used a vector autoregressive model with Granger-causality testing and impulse response function and founds that PU negatively impacts stock market returns for most months from 1985 to 2011.
Another study [
34] analyzed monthly data of PU and stock market indices of eleven economies, including China, Russia, the UK, Spain, France, India, Germany, the US, Canada, Japan, and Italy. The study found that PU negatively impacts stock prices mostly except periods of low-to-high frequency cycles. The study used data from 1998 to 2014. Using data from 1900 to 2014, Arouri, Estay, Rault, and Roubaud [
14] measured PU’s impact on the US stock market and found a weak but persistent negative impact of PU on stock market returns. Inflation, default spread, and variation in industrial production were the control variables used. The study also found that PU has a greater negative impact on stock market returns during high volatility.
Pastor and Veronesi [
17] estimated how the government’s economic policy announcement impacts stock market prices and reported that stock prices go up when the government makes policy announcements and that more unexpected announcement brings in greater volatility. Li, Balcilar, Gupta, and Chang [
19] found a weak relationship between PU and stock market returns in China and India. For China, the study used monthly data from 1995 to 2013, and for India, it used monthly data from 2003 to 2013. The study employed two methods (i) bootstrap Granger full-sample causality testing and (ii) subsample rolling window estimation. The first method did not find any relationship between stock market returns and PU, while the second method showed a weak bidirectional relationship for many sub-periods. Employing the time-varying parameter factor-augmented vector autoregressive (VAR) model on data from January 1996 to December 2015, Gao, Zhu, O’Sullivan, and Sherman [
20] estimated the impact of PU on the UK stock market returns. The study considered both domestic and international economic PU factors. The paper maintains that PU explains the cross-section of UK stock market returns.
Wu, Liu, and Hsueh [
22] analyzed the relationship between PU and performance of the stock markets of Canada, Spain, the UK, France, Italy, China, India, the US, and Germany. Analyzing monthly data from January 2013 to December 2014, the study found that not all stock markets under investigation react similarly to PU. According to the study, the UK stock market falls most with negative PU, but the markets of Canada, the US, France, China, and Germany remain unaffected. Asgharian, Christiansen, and Hou [
21] measured the relationship between PU and the US (S&P 500) and the UK (FTSE 100) stock markets. The study used daily data for stock market indices and monthly data for PU. The paper found that stock market volatility in the US depends on PU in the US and that stock market volatility in the UK depends on PU in both the US and UK.
Christou, Cunado, Gupta, and Hassapis [
23] estimated the impact of PU on the stock markets of the US, China, Korea, Canada, Australia, and Japan. Using monthly data from 1998 to 2014 and employing a panel VAR model with impulse response function, the study found that own country PU impacts stock markets negatively in all aforementioned countries. The study also found that PU in the US also negatively impacts all other countries’ stock markets in the analysis, except Australia. Debata and Mahakud [
25] found a significant relationship between PU and stock market liquidity in India. The study used monthly data from January 2013 to Granger 2016 and employed VAR Granger causality testing, variance decomposition analysis, and impulse response function. The impulse response function showed that PU and stock market liquidity are negatively related.
Liu and Zhang [
42] investigated PU’s impact on stock market volatility of the S&P 500 index from January 1996 to June 2013. The study found that PU and stock market volatility are interconnected and that PU has significant predictive power on stock market volatility. Pirgaip [
27] focused on the relationship between stock market volatility for fourteen OECD countries, subject to monthly data from March 2003 to April 2016 for Japan, France, Germany, Chile, Canada, Italy, Australia, the US, UK, Sweden, Spain, Netherlands, Australia, and South Korea. Employing the bootstrap panel Granger causality method, the study found that PU impacts stock prices in all countries except the US, Germany, and Japan.
Škrinjarić and Orlović [
26] estimated the spillover effects of PU shocks on stock market returns and risk for nine Eastern and Central European countries, including Bulgaria, Estonia, Lithuania, Croatia, Slovenia, Hungary, Czech Republic, Poland, and Slovakia. The paper employed a rolling estimation of the VAR model and the spillover indices. The study’s findings suggest that Poland, the Czech Republic, Slovenia, and Lithuania are more sensitive to PU shocks compared to other markets in the study. In contrast, the Bulgarian stock market is least impacted by PU shocks. Other countries’ stock markets have an individual reaction to PU shocks.
Ehrmann and Fratzscher [
43] examined how the US monetary policy shocks are transmitted stock market returns over February 1994 to December 2004, with a weak association in India, China, and Malaysia’s stock markets while strong on Korea, Hong Kong, Turkey, Indonesia, Canada, Finland, Sweden, and Australia. Brogaard and Detzel [
44] examined the relationship between PU and asset prices using a monthly Center for Research in Security Prices (CRSP) value-weighted index as the US stock market’s performance measure and PU. The findings suggest that a one standard deviation increase in PU decreases stock returns by 1.31% and increases 3-month log excess returns by 1.53%. The study also found that dividend growth is not affected by PU. Antonakakis et al. [
45] estimated co-movements between PU and the US stock market returns and stock market volatility using S&P 500 stock returns data and S&P 500 volatility index data. The study found a negative dynamic correlation between PU and stock returns except during the financial crisis of 2008, for which the correlation became positive.
Stock market volatility also negatively impacts the stock market returns, according to the study. Dakhlaoui and Aloui [
46] scrutinized the relationship between the US PU and Brazil, Russia, India, and China stock markets, estimating daily data from July 1997 to July 2011. The study found a negative relationship between the US PU and the returns, but the volatility spillovers were found to oscillate between negative and positive making, it highly risky for investors to invest in US and BRIC stock markets simultaneously. Yang and Jiang [
47] used data from the Shanghai stock index from January 1995 to December 2014 to investigate the relationship between PU and china stock market returns and suggest that stock market returns and PU are negatively correlated and that the negative impact of PU lasts for about eight months after the policy announcement.
Das and Kumar [
16] estimated the impacts of domestic PU and the US PU on the economies of 17 countries. The analysis included monthly data from January 1998 to February 2017 and found that emerging markets are less prone and vulnerable to domestic and US PU than developed economies while Chile and Korea are relatively more sensitive to both Domestic PU and US PU, whereas China is least affected. Estimation reveals that except Canada and Australia, stock prices and all other developed economies in the analysis are quite sensitive to US PU. Australia and Canada stock prices are more reliant on domestic PU. Stock prices of all the emerging economies are more reliant on domestic PU except for the marginal exception of Russia and Brazil.
We conclude that the reviewed literature on policy-stock prices is conflicting. See, for example, Bahmani-Oskooee and Saha [
15]; Asgharian, Christiansen, and Hou [
21]; Christou, Cunado, Gupta, and Hassapis [
23]; Ko and Lee [
34]; and Arouri, Estay, Rault, and Roubaud [
14], who found that the US stock market is negatively correlated to changes in PU, and Wu, Liu, and Hsueh [
22], and Pirgaip [
27], who documented no effect of US. Sum [
13] revealed a cointegration relationship that exists between the economic uncertainty of the US and Europe, showing a spillover effect across financial markets across the national borders. The literature referred to the US with few exceptions including Arouri, Estay, Rault, and Roubaud [
14], and Bahmani-Oskooee and Saha [
15], who assumed a linear relationship between PU and stock prices and relied on Pesaran, Shin, and Smith [
35] for the traditional cointegration approach to finding the long-run dynamics of the PU and stock prices. Amongst these, Arouri, Estay, Rault, and Roubaud [
14] found a long-run weak negative impact in general and persistent negative impact during high volatility regimes. However, Bahmani-Oskooee and Saha [
15] found short-run negative impacts and no effect in the long-run.
The strand of literature relied on traditional cointegration [
35] for modeling policy-stock price connection follows the symmetry assumption perspective holding that an increase in PU will negatively affect the other macroeconomic variable and a decrease in PU will increase this variable. However, this may not be the case, as investors’ responses may differ from increasing PU versus decreasing PU. It is possible that, due to an increase in uncertainty, investors move their equity assets to safer assets and that a decrease in uncertainty may cause them to shift their portfolio towards the stock market (assume the change in PU is less than increase) if they expect that a decrease in uncertainty is short-lived and then that asymmetry originates.
Figure 1 plots the theoretical framework based on reviewed papers [
14,
15].
We conclude that empirical literature on PU and stock prices is conflicting, with no consensus on its empirical impact, as the literature shows mixed results (positive, negative, and no effect). This may be attributable to the differences in methodological strategies used, time coverage, and other controls used in the estimation process. Among empirical methods used, ARDL is commonly used to arrive at short- and long-run cointegration relationships. Moreover, it is surprising that threshold identification in PU and stock price connection is an unaddressed phenomenon. Thus, it is imperative to go ahead and comprehensively examine the short- and the long-run association between PU and stock prices using an updated dataset coupled with DYS-ARDL and the threshold strategy in the context of the United States, the world top-ranked financial market (in terms of market size) [
41].
5. Discussion
The empirical findings document a declining trend in stock prices in the short-run for both an increase and a decrease in PU. We have found that increased PU hurts stock prices while decreasing uncertainty increases them in the long-run. Following relevant literature, the study uses the New York Stock exchange composite index for baseline analysis and provides a comprehensive insight by extending the analysis to alternative stock indices (S&P 500, Dow Jones Industrial Average, Dow Jones Composite Average, NASDAQ Composite, NASDAQ 100, and Dow Jones Transpiration Average) for the United States. Moreover, besides the news-based measure of PU, we use three component-based uncertainties to affirm the baseline results. Interestingly, the findings produced by the alternative measures of stock prices (Dow Jones Industrial Average, Dow Jones Composite Average, and Dow Jones Transpiration Average) and PU are found consistent and robust.
For convenient discussion, the overall findings are categorized into three groups, namely, (1) DYS-ARDL output, (2) threshold points, and (3) channels following which PUs influence the stock prices.
- (1)
It is observed that a 10% shock in PU_NB (both positive/negative) negatively drives the stock prices in the short- and long-run (as depicted by
Figure 4). This may be attributable to standard investment behavior differentials, depicted by declining risk premiums, which constitutes a substantial part of security prices. More specifically, a decline in PU also reduces the risk premium, which was part of security prices before the decline in PU. In this scenario, risk-seeking investors may shift investments to relatively high-risk securities while risk-averse investors may continue trading in existing securities. This behavior causes disequilibrium to the traditional demand and supply metaphor; however, in the long run, this disequilibrium is automatically rectified with monthly rates of around 6.7, and 7%, respectively (see
Table 4), and investment patterns are corrected accordingly.
- (2)
The threshold(s) levels identified through threshold regression are interesting for policy matters. The PU score above the threshold point of 4.89 (natural log—equals 132.39 of original score) compels the pessimistic investors to be involved in selling their securities, which results in high supply and low demand, which causes a decline in stock prices and vice-versa for a decline in such risk. It is important to understand that a high level of PU appears to include most of the investors in shifting investments to relatively safe heavens, which, in contrast, behave differently for the second threshold. This difference denotes a relatively low magnitude in the explanation power of PU, which is still negative. In this stream between two threshold points (4.89–4.48 (132.39–87.98, original score)—the area covered between points a and b in
Figure 2), the policy risk is not extremely high, which eventually influence the stock prices with relatively low magnitudes (
Table 5, model (1), where coefficient changes from −0.291 to −0.07). This channel holds for models (2–4). While the stock price reaction to changes in PU below the second threshold appears to be irrelevant to decision making, it still carries a positive coefficient (which is statistically insignificant).
- (3)
It may take any one or a combination of more than one to influence the stock prices. The impact of changes in PU may theoretically take any combination or one of the following avenues to trigger stock prices. It can cause a delay in important decisions (e.g., employment, investment, consumption, and savings) by stakeholders (policymakers, regulators, and businesses, and economic agents) [
29]. It increases financing and production costs by affecting the supply and demand channels, exacerbating the decline in investments and economic contraction [
17,
30,
31]. Finally, the financial risk may be amplified due to such changes, as it is argued that the jump risk premium associated with policy decisions should be positive on average [
17], which also influences inflation, interest rates, and expected risk premiums [
32,
33]. Therefore, the firms facing increased uncertainty in economic policy will reduce their investments in the short- and long-term [
28]. This argument is supported by [
58], who recorded a negative reaction in accounting-based performance measures of firm performance in response to an increase in PU in the context of listed non-financial corporations in the United States.
The readers may carefully interpret the results of the threshold by understanding the original PU scores of 132.39 and 87.98 for single and double thresholds, respectively.
Summing up this section, we find that the literature supports our findings, for example, Asgharian, Christiansen, and Hou [
21]; Bahmani-Oskooee and Saha [
15]; Christou, Cunado, Gupta, and Hassapis [
23]; Ko and Lee (2015); and Arouri, Estay, Rault, and Roubaud [
14]. However, the findings of Wu, Liu, and Hsueh [
22]; Pirgaip [
27]; and Bahmani-Oskooee and Saha [
15] are not in the same line, documenting no effect of the US stock market to changes in PU. Therefore, the PU-stock market dilemma shall remain debatable in the future.