On the Linkage between the Energy Market and Stock Returns: Evidence from Romania
Abstract
:1. Introduction
2. Literature Review
3. Quantitative Framework
3.1. Variables and Data
3.2. Econometric Methods
4. Empirical Findings and Discussion
4.1. Summary Statistics and Correlation Analysis
4.2. Causality Investigation
5. Conclusions and Policy Implications
Author Contributions
Funding
Conflicts of Interest
References
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Author(s) | Period | Sample | Methodology | Findings |
---|---|---|---|---|
Al-hajj, Al-Mulali and Solarin [26] | Monthly data from January 1990 to November 2016 and from May 2000 to November 2016 for the aggregate market and the sectors | Nine sectors listed in Bursa Malaysia | Nonlinear ARDL | Oil price shocks negatively impact the stock market returns for all sectors except for aggregate stock market return |
Xiao, Hu, Ouyang and Wen [27] | Daily data from March 16, 2011 to May 9, 2018 | China | Quantile regression approach | The effects of the implied volatility index of the oil market (OVX) shifts on the implied volatility index of the Chinese stock market (VXFXI) variations are significantly positive across quantiles and incline to be stronger at upper quantiles |
Xiao, Zhou, Wen and Wen [28] | Daily data from May 10, 2007 to September 20, 2017 | China | Quantile regressions | At low quantiles, the variations of crude oil volatility index (OVX) show a negative impact on the aggregate and sectoral stock returns in China |
Acaravci, Ozturk and Kandir [29] | Quarterly data from the first quarter of 1990 to the first quarter of 2008 | EU-15 nations | Johansen and Juselius cointegration test and error-correction based Granger causality models | Long-term association between natural gas prices, industrial production and stock prices in Austria, Denmark, Finland, Germany and Luxembourg No link in case of Belgium, France, Greece, Ireland, Italy, Netherlands, Portugal, Spain, Sweden and the UK |
Kang, Ratti and Vespignani [31] | Monthly data for the two periods: January 1973 to December 2006 and January 1973 to December 2014. | US | Structural VAR model | Positive link between shocks to oil production and real stock returns |
Sim and Zhou [32] | Monthly data from January 1973 to December 2007 | US | Quantile-on-quantile (QQ) approach | Adverse oil price shocks can increase the return of US equities when the US market is performing fine |
Bouri, Jain, Biswal and Roubaud [36] | Daily closing price for the period June 2009 to May 2016 | Indian stock market | ARDL model | Causality from the gold and crude volatilities to the volatility in Indian stock market |
Bouri [37] | Weekly prices covering the period 02 February 1998 to 30 May 2014 | Lebanese stocks | Bivariate VAR-GARCH | Unidirectional volatility transmission from oil prices to the Lebanese stock market |
Bildirici and Badur [62] | Monthly data from August 2000 to September 2017 | Energy companies for Turkey and the US | Markov Switching Vector Auto Regressive (MS-VAR) method & the Markov Switching-Granger Causality (MS-GC) method | Bidirectional link among gasoline price and confidence index in all regimes for the US, while bidirectional relation merely for the first regime for Turkey Bidirectional causality among oil price and confidence index in the US in all regimes, but unidirectional connection in Turkey |
Zhou et al. [63] | Daily time-series from May 10 2007 to May 16 2017 | BRICS (Brazil, Russia, India, China, and South Africa) | Cross-quantilogram model | Oil instability has strong directional expectedness for the stock returns |
Salisu and Isah [64] | Monthly data from January 2000 to December 2015 | Argentina, Australia, France, Germany, Japan, South Korea (S-Korea), UK, and USA selected as net oil importing and Kuwait, Indonesia, Nigeria, Qatar, and Saudi Arabia nominated as net oil exporting. | Panel ARDL | Significant positive association between oil price and stock price for both categories |
Huang et al. [65] | Daily and monthly frequencies from January 2000 to September 2015 | China and Russia | Wavelet transform, the vector auto-regression model and the gray correlation analysis | Russian stock market reacts to the oil charge positively through nearly all time scales Chinese stock market is negatively influenced by the oil price in the long-term |
Gupta [66] | Monthly data from May 1983 to December 2014. | 70 countries | Panel regression | Oil price shocks and market pressure have a strong influence on firm-level stock return |
Jammazi et al. [67] | Weekly closing prices from January 4 1993 to December 31 2014 | France, Germany, Italy, Spain, the UK and the US | Haar à trous wavelet (HTW) transform and time-varying Granger causality test | Significant bidirectional causal associations among oil and stock markets |
Khalfaoui et al. [68] | Daily data from January 2010 to December 2016 | Oil-importing nations (the United States and China) and oil-exporting nations (Saudi Arabia and Russia) | DCC-GARCH specifications | Bidirectional volatility spillover between stock market and oil market |
Variables | Description | Period | Source |
---|---|---|---|
Variables regarding energy market | |||
Biodiesels | Supply and transformation of oil. Gross inland deliveries-Biodiesels | January 2008–November 2018 | Eurostat |
CO2 | Greenhouse gas emissions by source sector—greenhouse gases (CO2, N2O in CO2 equivalent, CH4 in CO2 equivalent, HFC in CO2 equivalent, PFC in CO2 equivalent, SF6 in CO2 equivalent, NF3 in CO2 equivalent); all sectors (excluding LULUCF and memo items, including international aviation) | 1997–2016 | European Environment Agency (EEA) |
Coke oven coke | Supply and transformation of solid fuels. Gross inland deliveries—coke oven coke | January 2008–November 2018 | Eurostat |
Gas diesel oil | Supply and transformation of oil. Gross inland deliveries—total gas/diesel oil (blended with bio components) | January 2008– November 2018 | Eurostat |
Hard coal | Supply and transformation of solid fuels. Gross inland deliveries—hard coal | January 2008–November 2018 | Eurostat |
Kerosene | Supply and transformation of oil. Gross inland deliveries. Total kerosene type jet fuel (blended with bio components) | January 2008–November 2018 | Eurostat |
Lignite brown coal | Supply and transformation of solid fuels. Gross inland deliveries—lignite/Brown Coal | January 2008–November 2018 | Eurostat |
LPG | Supply and transformation of oil. Gross inland deliveries—liquefied petroleum gas (LPG) | January 2008–November 2018 | Eurostat |
Motor gasoline | Supply and transformation of oil. Gross inland deliveries. Total motor gasoline (blended with bio components) | January 2008–November 2018 | Eurostat |
Naphtha | Supply and transformation of oil. Gross inland deliveries—naphtha | January 2008–November 2018 | Eurostat |
Petroleum coke | Supply and transformation of oil. Gross inland deliveries—petroleum coke | January 2008–November 2018 | Eurostat |
Refinery gas | Supply and transformation of oil. Gross inland deliveries—refinery gas | January 2008–November 2018 | Eurostat |
Road diesel | Supply and transformation of oil. Gross inland deliveries. Road diesel (blended with bio components) | January 2008–November 2018 | Eurostat |
Variables regarding capital market | |||
BET | The first index developed by the Bucharest Stock Exchange | January 2008–November 2018/1997–2016 | BSE |
OIL | Listed stock—OIL TERMINAL S.A. | January 2008–November 2018 | BSE |
PTR | Listed stock—ROMPETROL WELL SERVICES S.A. | January 2008–November 2018 | BSE |
SNP | Listed stock—OMV PETROM S.A. | January 2008–November 2018 | BSE |
WTI | West Texas Intermediate (WTI) crude oil is the underlying commodity of the New York Mercantile Exchange’s oil futures contracts. | January 2008–November 2018 | Investing.com |
Variables | Obs. | Mean | Std. Dev. | Skewness | Kurtosis | Jarque-Bera | Jarque-Bera Probability |
---|---|---|---|---|---|---|---|
LNBET | 112 | 8.669 | 0.264 | –1.445 | 6.275 | 88.996 | 0.000 |
LNBIODIESELS | 112 | 2.329 | 0.704 | –1.158 | 4.001 | 29.722 | 0.000 |
LNCOKEOVENCOKE | 112 | 4.148 | 0.509 | –2.739 | 12.950 | 602.082 | 0.000 |
LNGASDIESELOIL | 112 | 5.953 | 0.185 | –0.883 | 3.643 | 16.463 | 0.000 |
LNHARDCOAL | 112 | 4.380 | 0.518 | 0.833 | 4.852 | 28.954 | 0.000 |
LNKEROSENE | 112 | 2.305 | 0.449 | –1.078 | 4.460 | 31.622 | 0.000 |
LNLIGNITE_BROWNCOAL | 112 | 7.757 | 0.228 | –0.444 | 2.779 | 3.912 | 0.141 |
LNLPG | 112 | 3.915 | 0.158 | –0.451 | 3.098 | 3.842 | 0.146 |
LNMOTORGASOLINE | 112 | 4.748 | 0.208 | –0.341 | 3.110 | 2.233 | 0.327 |
LNNAPHTHA | 112 | 2.867 | 0.510 | –1.193 | 6.116 | 71.863 | 0.000 |
LNOIL | 112 | –2.000 | 0.519 | 1.207 | 4.264 | 34.632 | 0.000 |
LNPETROLEUMCOKE | 112 | 3.687 | 0.475 | –0.726 | 3.887 | 13.524 | 0.001 |
LNPTR | 112 | –0.997 | 0.272 | 0.538 | 2.914 | 5.433 | 0.066 |
LNREFINERYGAS | 112 | 1.932 | 0.460 | 0.308 | 3.390 | 2.479 | 0.290 |
LNROADDIESEL | 112 | 5.932 | 0.188 | –0.899 | 3.693 | 17.312 | 0.000 |
LNSNP | 112 | –1.000 | 0.274 | –0.871 | 3.966 | 18.518 | 0.000 |
LNWTI | 112 | 4.290 | 0.348 | –0.423 | 1.913 | 8.859 | 0.012 |
LNCO2 | 20 | 11.830 | 0.120 | –0.188 | 1.877 | 1.170 | 0.56 |
Variables | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | ||
1 | LNBET | 1 | ||||||||
2 | LNBIODIESELS | 0.019837 | 1 | |||||||
3 | LNCOKEOVENCOKE | 0.302639 ** | 0.056402 | 1 | ||||||
4 | LNGASDIESELOIL | 0.294173 ** | 0.506691 *** | 0.152773 | 1 | |||||
5 | LNHARDCOAL | –0,205658 * | –0.186641 * | 0.116550 | –0.198480 * | 1 | ||||
6 | LNKEROSENE | –0.224338 * | 0.379759 *** | 0.301373 ** | 0.206797 * | 0.267411 ** | 1 | |||
7 | LNLIGNITE_BROWNCOAL | –0.381451 *** | –0.060636 | 0.163637 | –0.053999 | 0.403372 *** | 0.449909 *** | 1 | ||
8 | LNLPG | 0.486944 *** | 0.262153 ** | 0.067080 | 0.685985 *** | –0.076180 | 0.116272 | –0.137539 | 1 | |
9 | LNMOTORGASOLINE | –0.153176 | 0.421622 *** | 0.162057 | 0.451096 *** | 0.017844 | 0.367806 *** | 0.176028 | 0.312964 *** | |
10 | LNNAPHTHA | –0.264576 ** | 0.146914 | –0.097473 | –0.109589 | 0.342754 *** | 0.223665 * | 0.168755 | –0.016386 | |
11 | LNOIL | –0.168808 | 0.051095 | 0.181445 | –0.214490 * | 0.617855 *** | 0.418831 *** | 0.543073 *** | –0.204072 * | |
12 | LNPETROLEUMCOKE | 0.237965 * | 0.125421 | –0.058735 | 0.211975 * | 0.142200 | 0.008375 | 0.050026 | 0.404952 *** | |
13 | LNPTR | 0.373404 *** | –0.177492 | 0.088181 | –0.168382 | 0.205093 * | –0.130723 | –0.059304 | 0.006590 | |
14 | LNREFINERYGAS | –0.466324 *** | –0.074417 | 0.102623 | –0.376549 *** | 0.283673 *** | 0.311054 *** | 0.410634 *** | –0.418005 *** | |
15 | LNROADDIESEL | 0.295797 ** | 0.521459 *** | 0.159496 | 0.997894 *** | –0.196566 * | 0.220585 * | –0.043773 | 0.684611 *** | |
16 | LNSNP | 0.453917 *** | –0.112876 | 0.326782 *** | –0.026363 | 0.020845 | –0.149667 | 0.017320 | –0.069653 | |
17 | LNWTI | –0.154106 | –0.070255 | 0.179022 | –0.210518 * | 0.264572 ** | 0.136983 | 0.357137 *** | –0.370116 *** | |
Variables | 9 | 10 | 11 | 12 | 13 | 14 | 15 | 16 | 17 | |
9 | LNMOTORGASOLINE | 1 | ||||||||
10 | LNNAPHTHA | 0.247586 ** | 1 | |||||||
11 | LNOIL | 0.135107 | 0.410597 *** | 1 | ||||||
12 | LNPETROLEUMCOKE | 0.032217 | 0.004021 | –0.081141 | 1 | |||||
13 | LNPTR | –0.017205 | 0.262863 ** | 0.397021 *** | 0.010538 | 1 | ||||
14 | LNREFINERYGAS | 0.062327 | 0.240188 * | 0.493485 *** | –0.352170 *** | –0.057429 | 1 | |||
15 | LNROADDIESEL | 0.451411 *** | –0.105440 | –0.205540 * | 0.210668 * | –0.186680 * | –0.370143 *** | 1 | ||
16 | LNSNP | –0.153259 | –0.171836 | 0.138726 | –0.039764 | 0.568214 *** | –0.013468 | –0.039758 | 1 | |
17 | LNWTI | –0.013816 | 0.088698 | 0.517778 *** | –0.223729 * | 0.451084 *** | 0.434059 *** | –0.224446 * | 0.687447 *** | 1 |
Variables | Level | First Difference |
---|---|---|
LNBET | –1.68 | –7.48 *** |
LNBIODIESELS | –0.24 | –11.97 *** |
LNCOKEOVENCOKE | –6.78 *** | –11.026 *** |
LNGASDIESELOIL | 0.35 | –12.56 *** |
LNHARDCOAL | –6.36 *** | –13.71 *** |
LNKEROSENE | –2.53 | –7.82 *** |
LNLIGNITEBROWNCOAL | –1.29 | –3.94 *** |
LNLPG | –0.80 | –8.09 *** |
LNMOTORGASOLINE | –1.41 | –8.54 *** |
LNNAPHTHA | –2.78 * | –5.88 *** |
LNOIL | –3.05 ** | –6.50 *** |
LNPETROLEUMCOKE | –4.85 *** | –6.42 *** |
LNPTR | –3.32 ** | –11.45 *** |
LNREFINERYGAS | –1.50 | –9.23 *** |
LNROADDIESEL | 0.38 | –6.01 *** |
LNSNP | –2.16 | –5.48 *** |
LNWTI | –2.31 | –7.81 *** |
LNCO2 | 1.33 | –3.49 *** |
Variables | No. of Lags | Selected Lag | ||||
---|---|---|---|---|---|---|
LR | FPE | AIC | SC | HQ | ||
LNBIODIESELS | 4 | 4 | 4 | 2 | 4 | 4 |
LNGASDIESELOIL | 3 | 4 | 6 | 1 | 2 | 4 |
LNKEROSENE | 7 | 7 | 7 | 2 | 2 | 7 |
LNLIGNITEBROWNCOAL | 4 | 2 | 2 | 2 | 2 | 2 |
LNLPG | 4 | 5 | 5 | 2 | 4 | 5 |
LNMOTORGASOLINE | 6 | 6 | 6 | 1 | 2 | 6 |
LNNAPHTHA | 4 | 4 | 4 | 1 | 2 | 4 |
LNREFINERYGAS | 4 | 4 | 4 | 2 | 2 | 4 |
LNROADDIESEL | 4 | 4 | 4 | 1 | 2 | 4 |
LNSNP | 4 | 4 | 4 | 2 | 4 | 4 |
LNWTI | 4 | 4 | 4 | 2 | 3 | 4 |
LNCOKEOVENCOKE | 6 | 2 | 2 | 2 | 2 | 2 |
LNHARDCOAL | 5 | 5 | 5 | 1 | 4 | 5 |
LNPETROLEUMCOKE | 4 | 4 | 4 | 1 | 4 | 4 |
LNOIL | 5 | 5 | 5 | 2 | 5 | 5 |
LNPTR | 7 | 7 | 7 | 1 | 2 | 7 |
LNCO2 | 1 | 1 | 1 | 1 | 1 | 1 |
Variables | Unrestricted Cointegration Rank Test | Trace (Prob.) | Maximum Eigenvalue (Prob.) |
---|---|---|---|
LNBET-LNBIODIESELS | None | 0.0000 | 0.0000 |
At most 1 | 0.0055 | 0.0055 | |
LNBET-LNGASDIESELOIL | None | 0.0000 | 0.0001 |
At most 1 | 0.0201 | 0.0201 | |
LNBET-LNKEROSENE | None | 0.1686 | 0.2949 |
At most 1 | 0.0903 | 0.0903 | |
LNBET-LNLIGNITEBROWNCOAL | None | 0.0009 | 0.0013 |
At most 1 | 0.1087 | 0.1087 | |
LNBET-LNPG | None | 0.0002 | 0.0005 |
At most 1 | 0.0543 | 0.0543 | |
LNBET-LNMOTORGASOLINE | None | 0.0002 | 0.0007 |
At most 1 | 0.0346 | 0.0346 | |
LNBET-LNNAPHTHA | None | 0.0017 | 0.0107 |
At most 1 | 0.0137 | 0.0137 | |
LNBET-LNREFINERYGAS | None | 0.0460 | 0.0494 |
At most 1 | 0.2301 | 0.2301 | |
LNROADDIESEL | None | 0.0000 | 0.0001 |
At most 1 | 0.0192 | 0.0192 | |
LNBET-LNSNP | None | 0.0362 | 0.0309 |
At most 1 | 0.3583 | 0.3583 | |
LNBET-LNWTI | None | 0.0160 | 0.0117 |
At most 1 | 0.4496 | 0.4496 | |
LNBET-LNCO2 | At most 1 | 0.2161 | 0.2161 |
None | 0.3519 | 0.4189 |
Variables | C(1) (Value, p-Value) | Wald Test (F-Statistic) |
---|---|---|
LNBIODIESELS | 0.000391, 0.8750 | 0.3151 |
LNGASDIESELOIL | –0.059197, 0.0128 | 0.0041 |
LNKEROSENE | 1.422164, 0.0000 | 0.8871 |
LNLIGNITEBROWNCOAL | –0.046490, 0.0458 | 0.0458 |
LNLPG | –0.042521, 0.1106 | 0.0337 |
LNMOTORGASOLINE | –0.002714, 0.8584 | 0.2554 |
LNNAPHTHA | –0.087209, 0.0016 | 0.0686 |
LNREFINERYGAS | –0.096225, 0.0009 | 0.0457 |
LNROADDIESEL | –0.056744, 0.0156 | 0.0048 |
LNSNP | –0.030277, 0.0002 | 0.3064 |
LNWTI | –0.071507, 0.0002 | 0.0489 |
LNCO2 | 0.844634, 0.0000 | 0.3829 |
Period | LNBIODIESELS | LNGASDIESELOIL | LNKEROSENE | LNLIGNITEBROWNCOAL | LNLPG | LNMOTORGASOLINE |
---|---|---|---|---|---|---|
1 | 0.000000 | 0.000000 | 0.000000 | 0.000000 | 0.000000 | 0.000000 |
2 | 0.008435 | 0.060778 | 0.242017 | 0.001701 | 0.008453 | 0.176719 |
3 | 0.378916 | 0.065720 | 1.021310 | 0.183346 | 0.050265 | 0.643361 |
4 | 1.003426 | 0.082615 | 1.218346 | 1.877389 | 0.429810 | 0.473112 |
5 | 0.822535 | 1.457270 | 1.244091 | 4.879756 | 2.467062 | 0.356942 |
6 | 0.663140 | 4.169189 | 1.380386 | 8.146468 | 3.887900 | 0.367541 |
7 | 0.556186 | 6.639736 | 1.559117 | 11.15242 | 5.180235 | 0.559518 |
8 | 0.462366 | 8.665825 | 1.498315 | 13.75194 | 6.978590 | 0.533991 |
9 | 0.390719 | 10.40187 | 1.406995 | 15.92905 | 8.431184 | 0.473832 |
10 | 0.337200 | 11.72497 | 1.389392 | 17.72764 | 9.190025 | 0.450882 |
Period | LNNAPHTHA | LNREFINERYGAS | LNROADDIESEL | LNSNP | LNWTI | LNCO2 |
1 | 0.000000 | 0.000000 | 0.000000 | 0.000000 | 0.000000 | 0.000000 |
2 | 0.003096 | 0.324156 | 0.051732 | 2.279641 | 0.138500 | 1.827051 |
3 | 0.102637 | 0.223559 | 0.077700 | 5.301670 | 0.141625 | 1.412508 |
4 | 0.811653 | 0.167780 | 0.072658 | 7.241695 | 0.494297 | 2.106627 |
5 | 2.192161 | 0.283645 | 1.334785 | 7.893597 | 0.447065 | 4.922611 |
6 | 4.929504 | 0.780374 | 3.860445 | 9.764183 | 1.207580 | 9.284095 |
7 | 8.339854 | 1.819206 | 6.194822 | 12.32793 | 2.440293 | 14.17315 |
8 | 11.93322 | 3.190016 | 8.167273 | 14.85113 | 4.089324 | 18.82026 |
9 | 15.84959 | 5.076928 | 9.892050 | 17.09041 | 6.743225 | 22.89836 |
10 | 20.05696 | 7.492947 | 11.21554 | 19.60460 | 10.24462 | 26.36051 |
Null Hypothesis | F-Statistic | Prob. |
---|---|---|
DLNBIODIESELS does not Granger Cause DLNBET | 1.32353 | 0.2653 |
DLNBET does not Granger Cause DLNBIODIESELS | 0.09749 | 0.9831 |
DLNGASDIESELOIL does not Granger Cause DLNBET | 2.35200 | 0.0580 |
DLNBET does not Granger Cause DLNGASDIESELOIL | 1.22840 | 0.3026 |
DLNKEROSENE does not Granger Cause DLNBET | 0.40646 | 0.8963 |
DLNBET does not Granger Cause DLNKEROSENE | 1.49439 | 0.1780 |
DLNLIGNITEBROWNCOAL does not Granger Cause DLNBET | 0.64722 | 0.5253 |
DLNBET does not Granger Cause DLNLIGNITEBROWNCOAL | 0.44476 | 0.6420 |
DLNLPG does not Granger Cause DLNBET | 2.17514 | 0.0617 |
DLNBET does not Granger Cause DLNLPG | 1.14795 | 0.3394 |
DLNMOTORGASOLINE does not Granger Cause DLNBET | 1.41031 | 0.2169 |
DLNBET does not Granger Cause DLNMOTORGASOLINE | 0.84028 | 0.5414 |
DLNNAPHTHA does not Granger Cause DLNBET | 0.20804 | 0.9334 |
DLNBET does not Granger Cause DLNNAPHTHA | 0.19171 | 0.9422 |
DLNREFINERYGAS does not Granger Cause DLNBET | 1.14505 | 0.3392 |
DLNBET does not Granger Cause DLNREFINERYGAS | 0.42684 | 0.7890 |
DLNROADDIESEL does not Granger Cause DLNBET | 2.34823 | 0.0584 |
DLNBET does not Granger Cause DLNROADDIESEL | 1.15396 | 0.3348 |
DLNSNP does not Granger Cause DLNBET | 1.87925 | 0.1186 |
DLNBET does not Granger Cause DLNSNP | 4.16508 | 0.0034 |
DLNWTI does not Granger Cause DLNBET | 2.45496 | 0.0496 |
DLNBET does not Granger Cause DLNWTI | 1.92364 | 0.1110 |
LNCOKEOVENCOKE does not Granger Cause DLNBET | 0.07349 | 0.9292 |
DLNBET does not Granger Cause LNCOKEOVENCOKE | 8.22567 | 0.0005 |
LNHARDCOAL does not Granger Cause DLNBET | 2.81054 | 0.0197 |
DLNBET does not Granger Cause LNHARDCOAL | 4.42659 | 0.0010 |
LNPETROLEUMCOKE does not Granger Cause DLNBET | 1.20128 | 0.3143 |
DLNBET does not Granger Cause LNPETROLEUMCOKE | 1.69044 | 0.1572 |
LNOIL does not Granger Cause DLNBET | 2.43211 | 0.0391 |
DLNBET does not Granger Cause LNOIL | 2.76777 | 0.0213 |
LNPTR does not Granger Cause DLNBET | 3.78945 | 0.0010 |
DLNBET does not Granger Cause LNPTR | 1.64743 | 0.1299 |
DLNCO2 does not Granger Cause DLNBET | 0.09129 | 0.7667 |
DLNBET does not Granger Cause DLNCO2 | 15.3506 | 0.0014 |
Null Hypothesis: No Long-Run Relationships Exist | F-Statistic | |
---|---|---|
LNCOKEOVENCOKE | 2.08557 | |
LNHARDCOAL | 7.779161 | |
LNOIL | 10.35561 | |
LNPETROLEUMCOKE | 2.160678 | |
LNPTR | 1.319994 | |
Critical Value Bounds | ||
Significance | I0 Bound | I1 Bound |
10% | 4.04 | 4.78 |
5% | 4.94 | 5.73 |
2.50% | 5.77 | 6.68 |
1% | 6.84 | 7.84 |
Variables | Coefficient | Std. Error | t-Statistic | Prob. | CointEq(–1) |
---|---|---|---|---|---|
LNHARDCOAL | –0.676532 | 0.267828 | –2.525995 | 0.0129 | –0.078588 (0.001) |
LNOIL | –0.524756 | 0.185585 | –2.827569 | 0.0055 | –0.07528 (0.0001) |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Armeanu, D.Ş.; Joldeş, C.C.; Gherghina, Ş.C. On the Linkage between the Energy Market and Stock Returns: Evidence from Romania. Energies 2019, 12, 1463. https://doi.org/10.3390/en12081463
Armeanu DŞ, Joldeş CC, Gherghina ŞC. On the Linkage between the Energy Market and Stock Returns: Evidence from Romania. Energies. 2019; 12(8):1463. https://doi.org/10.3390/en12081463
Chicago/Turabian StyleArmeanu, Daniel Ştefan, Camelia Cătălina Joldeş, and Ştefan Cristian Gherghina. 2019. "On the Linkage between the Energy Market and Stock Returns: Evidence from Romania" Energies 12, no. 8: 1463. https://doi.org/10.3390/en12081463
APA StyleArmeanu, D. Ş., Joldeş, C. C., & Gherghina, Ş. C. (2019). On the Linkage between the Energy Market and Stock Returns: Evidence from Romania. Energies, 12(8), 1463. https://doi.org/10.3390/en12081463