1. Introduction
In recent years, due to global warming, the world has changed in many respects, including the natural environment, social processes, territorial development and business strategies. This change was accompanied by political, sociological, technological and economical challenges that affected countries, societies and individuals. All the challenges that appeared as a result of climate change, to a greater or lesser extent, are related to energy issues. As energy use can alleviate or aggravate the observed challenges, its role has become a focal point in almost every debate on sustainable development.
At a macro level, energy issues are often identified with ES. Historically, this term referred to an abstract concept or a general idea rather than a certain policy [
1]. Over time, however, a widely accepted definition has been developed. It states that ES is the “continuous availability of energy in varied forms, in sufficient quantities and at affordable prices” [
2]. In the same vein, Speight [
3] claims that “energy security is the continuous and uninterrupted availability of energy, to a specific country or region”. According to Miller [
4], ES has two aspects: (1) long-term security, which is associated with resource availability; and (2) short-term security, which refers to the system reliability that allows for the continuous supply of energy to meet consumer needs at any given time.
Regardless of the definition of ES, it should be noted that many countries pursue ES while implementing SDGs. Particular attention is paid to ensuring efficient alternative and preferably RESs and reducing conventionally obtained energy consumption. As the demand for energy is growing and alternative energy resources are expensive, new ways of financing projects to improve ES are being developed, e.g., issuing GBs.
In the literature that is available at present, many authors try to describe economic processes by referring to dependencies between macroeconomic variables, energy consumption, carbon dioxide emission and selected aspects of sustainable development. For instance, Acheampong [
5] proves that economic growth does not cause energy consumption, but has a negative impact on carbon emissions at the global level. At the same time, economic growth is positively impacted by carbon emissions and negatively impacted by energy consumption at the global level. Additionally, energy consumption has different effects on carbon emissions depending on the economies that are considered. Finally, carbon emissions, in general, do not cause energy consumption. On the other hand, Mealy and Teytelboym [
6] indicate that higher ranked countries (in terms of their ability to competitively export complex green products) are more likely to have lower carbon dioxide emissions. Moreover, early success in gaining green production capabilities better enables countries to develop more green production capabilities in the future. Furthermore, Topcu et al. [
7] found that, in high-income countries, gross capital formation, urbanization and energy consumption have a positive impact on economic growth, whereas the coefficient of natural resources is positive but statistically insignificant. In middle-income countries, an increase in natural resources, energy consumption and urbanization leads to GDP growth. Natural resources and energy consumption positively affect GDP, while capital formation has a negative impact in low-income countries. Similar results were also presented in other studies (see, for instance, [
8,
9,
10,
11,
12]).
Regarding the dependencies between energy and financial markets (including the GB market), as well as selected aspects of sustainable development, we can refer, for instance, to Glomsrød and Wei [
13], who showed that green finance reduces coal consumption, raises the share of non-fossil electricity and avoids global carbon dioxide emissions. Furthermore, Kanamura [
14] confirmed the positive relationship between energy and environmental value, and suggested that the greenness is incorporated in the Bloomberg Barclays MSCI and the S&P GB indices. Tang and Zhang [
15] looked at the same problem from a different perspective. They showed that stock prices positively respond to GB issuances. They also suggested that the positive response of stock returns to GB announcements does not result from the lower cost of debt. Unlike previous authors, Reboredo et al. [
16] dealt with the problem of dependencies between different classes of bonds. The obtained results revealed a strong connectedness between green, treasury and corporate bonds in the short- and long-term in both the EU and the USA. Additionally, they noticed that GBs were strongly influenced by treasury and corporate bond prices and were weakly connected with high-yield corporate bonds, stocks and energy assets. A more holistic approach was proposed by Ferrer et al. [
17], who proved the existence of the short-term dependence between the global GB market and the conventional financial and energy markets. Despite the fact that a strong connectedness in return and volatility was found between GBs, treasury and investment-grade corporate bonds, it was confirmed that green fixed-income securities are not a different class of assets. Extending the above studies, Saeed et al. [
18] determined return connectedness across clean energy stocks, GBs, crude oil and energy ETF and showed that return connectedness measures vary with time. Moreover, Broadstock and Cheng [
19] determined a connection between green and black bonds; however, they argued that this is sensitive to several factors, i.e., changes in financial market volatility, economic policy uncertainty, daily economic activity, oil prices and uniquely constructed measures of positive and negative news-based sentiment towards GBs. Pham [
20] found that a shock in the conventional bond market tends to spill over into the GB market, but the spillover effect varies over time. A similar variability was also noted by Le et al. [
21], who suggested that, first, the total connectedness of 21st century technology assets and traditional common stocks is very high, and Bitcoin, MSCIW, MSCI US and KFTX are net contributors of volatility shocks, whereas USD, oil, gold, VIX, GB and GB select are net receivers. On the other hand, Liu et al. [
22] showed a positive dependence between the GB and clean energy stock markets, which proved the existence of the spillover effect. Furthermore, Jin et al. [
23] confirmed the connectedness between GB Index returns and carbon futures returns, and claimed that the dependence is most evident during the market’s volatile period. It should be noted that similar dependencies were also presented in [
24,
25,
26,
27,
28]. Additionally, analysis of the relationships between returns of more sophisticated asset classes and GBs can be found in [
29,
30,
31,
32,
33].
The aim of this article is to examine the dependences (in the sense of Granger causality) between the GB market, different aspects of sustainable development, as measured by selected environmental indices, and ES, as represented by crude oil prices. As some of the relationships have already been investigated (see Ferrer et al. [
24]), we focus on the asset classes that have not previously been analyzed as a system. For this reason, we selected the following: the S&P GB Index, which measures the market value of globally issued green-labeled bonds, spot prices of Europe Brent FOB, and three indicators taken from the NASDAQ OMX family of indices. The novelty of the research lies in the choice of a unique set of measures, which are then used to identify the relationships between the GB market, previously unexplored environmental aspects of sustainable development, and ES. We believe that conclusions regarding causal relationships might be useful for both market practitioners and policymakers in the GB, sustainable development and ES fields.
For market practitioners, information about co–movements between returns on different types of assets is important for two reasons. First, it allows single investment performance forecasts to be improved. Second, insight into links between the returns of financial instruments can be helpful in achieving the desired risk–return profile on a portfolio level. For policymakers, knowing the dependencies between the GB market, selected aspects of sustainability and ES plays a key role in achieving SDGs and harmonizing different segments of financial and commodity markets. For these reasons, it is crucial for them to know how green debt instruments, stocks issued by companies with environmentally and socially conscious business practices, and the world’s biggest commodity market, i.e., the oil market, are related.
This paper is divided as follows:
Section 2 contains the characterization of empirical data, model formulation and a description of the applied methodology,
Section 3 presents the results produced by the applied model, and
Section 4 includes a short discussion on the obtained results and provides prospects for further research.
3. Results
Following the procedure proposed in the previous subsection of the paper, we firstly examined the stationarity of the times series. The assessment of stationarity plays a key role in the proposed methodology because, in the VAR(p) model, all variables should be integrated of order one, i.e., I(1) (an effective and correct VAR(p) model giving meaningful forecasts can be built only if time series are stationary). In this respect, ADF, PP and KPSS tests were performed. Although the first two tests are most commonly used to determine if the variable has a unit root [
39,
40], they both suffer from a lack of robustness in small data samples (see, for instance, [
41]). As only 99 observations were included in our study, stationarity assessments should be performed on the basis of a KPSS test [
42]. The obtained results are presented in
Table 3.
From
Table 3, all variables included in the model are not stationary at level, but they are stationary at first difference, based on a 1% level of significance. This means that the order of integration of all time series is one, i.e., I(1). It should be noted that this property holds regardless of which unit root test is performed.
Having established the stationarity, we proceeded to specify the lag length using four different criteria, i.e., the Final Prediction Error (FPE), Akaike Information Criterion (AIC), Hannan–Quinn Information Criterion (HQIC) and Schwartz Bayesian Information Criterion (SBIC). The results are exhibited in
Table 4.
As in small samples, FPE and AIC have better properties than HQIC, and SBIC models based on FPE and AIC produce superior forecasts [
43]. For this reason, in our further research, only AIC and FPE were used for lag length selection. Since the results of the models’ estimations are of limited use from the perspective of our research, they are not presented in the paper.
According to the proposed procedure, before determining causality in a Granger sense, the existence of the long-term relationships between variables is checked. For this purpose, we performed the Johansen test, which is based on the maximum likelihood method and gives two statistics: trace and maximum statistics. As the cointegration analysis uses the case of non-stationary variables, input data are in the form of log values instead of their first differences. The obtained results are shown in
Table 5.
From
Table 5, at maximum rank 0, neither trace statistics nor maximum statistics exceed the corresponding critical value. Therefore, the null hypothesis of no cointegration between included variables cannot be rejected. This suggests that there are no cointegrating relationships between ln.SPUSGRN, ln.BFO and any variable from the following set: ln.GRNREG, ln.GRNNR and ln.GRNEUROPE. As a consequence, no long-term relationships exist between these variables.
It should be noted that if the time series are cointegrated and integrated of order one, the vector error correction model (VECM) should be applied. If the order of integration of the time series is mixed, i.e., I(0) or I(1), the autoregressive distributed lag model (ARDLM) is justified. In our case, none of the abovementioned properties were observed in the datasets; therefore, the VAR(p) model was considered.
To additionally justify the use of the VAR(p) model, we performed an LM test for the presence of the ARCH effect in the time series of log returns. The results are presented in
Table 6.
In
Table 6, none of the values in the last column had a
p-value lower than 0.05, which indicates that the null hypothesis of no ARCH effect cannot be rejected. This suggests that the ARCH effect has not been identified in the considered data series.
Having performed LM tests for the presence of the ARCH effect, we proceeded to perform a Granger causality test. It is worth noting that the Granger cause of one variable by another means that using the second variable for the prediction of the first reduces its variance. Therefore, the Granger causality test helps to determine whether one variable is useful in forecasting another. The results of the Granger tests for models 1, 2 and 3, constructed on the basis of Equation (1), are presented in
Table 7.
From
Table 7, we can draw three conclusions. Firstly, we can note that d.ln.SPUSGRN is Granger caused by the lagged values of:
d.ln.BFO and d.ln.GRNREG in the first model;
d.ln.GRNNR in the second model;
d.ln.BFO and d.ln.GRNEUROPE in the third model.
Secondly, d.ln.BFO is Granger caused by the lagged values of d.ln.GRNREG, d.ln.GRNNR and d.ln.GRNEUROPE in models 1, 2 and 3, respectively. Thirdly, d.ln.GRNREG, d.ln.SPUSGRN and d.ln.GRNEUROPE are not Granger caused by the lagged values of any of the variables included in the analyzed models. It is worth noting that all these causalities are unidirectional.
Next, during the post-estimation procedure, we performed tests for autocorrelation of the residuals and stability of the model. The results are presented in
Table 8 and
Figure 2.
From
Table 8, we cannot reject the null hypothesis that there is no autocorrelation in the residuals for any of the five tested orders. This suggests that the models are not misspecified. As exhibited in
Figure 2, for all three models, the eigenvalues are inside the unit circle. This means that the coefficients are reliable and all models are stable.
Finally, IRFs are plotted and FEVD is conducted. It should be noted that every IRF is established to identify the effect of a shock in an endogenous variable to the whole system of equations in the VAR(p) model. Since the cross-equation correlation coefficients for residuals are different than zero (see
Appendix A), further analysis is based on the orthogonalized IRFs (see
Appendix B). This can trace the impact of a shock to each endogenous variable within the equation systems corresponding to models 1, 2 and 3. In all figures in
Appendix B, the dashed lines indicate two standard deviation bands and the solid line represents the impulse response of the endogenous variable to the shock.
The results show that:
In all models, the effects of one-standard-deviation shocks to d.ln.SPUSGRN d.ln.GRNREG, d.ln.GRNNR and d.ln.GRNEUROPE on the future log returns of the corresponding indices die out almost completely after 2–3 months. A one-standard-deviation shock to d.ln.BFO first reduces and then increases the log returns of the Europe Brent FOB;
In all models, the impact of a shock to d.ln.BFO on future values of d.ln.SPUSGRN is insignificant. This property does not hold for the effect of a shock to d.ln.SPUSGRN on future values of d.ln.BFO;
d.ln.SPUSGRN responds positively in the second lag to a shock to d.ln.GRNREG, d.ln.SPUSGRN and d.ln.GRNEUROPE in models 1, 2 and 3, respectively. From the third lag, the effects rapidly decay to zero;
d.ln.BFO responds in the same manner as d.ln.SPUSGRN to a shock to d.ln.GRNREG, d.ln.SPUSGRN and d.ln.GRNEUROPE in models 1, 2 and 3, respectively. From the fourth lag, the effects quickly vanish;
The effect of a shock to d.ln.SPUSGRN on future values of d.ln.GRNREG, d.ln.SPUSGRN and d.ln.GRNEUROPE is moderate, i.e., d.ln.GRNREG, d.ln.SPUSGRN and d.ln.GRNEUROPE fall slowly, before slightly rising and falling again;
The effect of a shock to d.ln.BFO on future values of d.ln.GRNREG, d.ln.SPUSGRN and d.ln.GRNEUROPE is also moderate; however, d.ln.GRNREG, d.ln.SPUSGRN and d.ln.GRNEUROPE do not follow the same pattern of changes.
While IRFs trace the effect of a shock to an endogenous variable on the whole system of equations in the VAR(p) model, variance decomposition is conducted to separate the variation in an endogenous variable into the component shocks to the model. The results of the variance decomposition are shown in
Appendix C.
In model 1, d.ln.BFO and d.ln.GRNREG’s contribution to d.ln.SPUSGRN increases with the increase in the period, reaching 6.11% and 34.18%, respectively, in the 10th period. The contribution of d.ln.SPUSGRN and d.ln.GRNREG to d.ln.BFO increases with the increase in the period, reaching 6.98% and 15.12%, respectively, in the 10th period. The contribution rates of d.ln.SPUSGRN and d.ln.BFO to d.ln.GRNREG quickly stabilize and do not exceed 5% in the 10th period;
In model 2, the contribution of d.ln.BFO and d.ln.GRNNR to d.ln.SPUSGRN increases with the increase in the period, reaching 2.69% and 8.25%, respectively, in the 10th period. The contribution of d.ln.SPUSGRN and d.ln.GRNNR to d.ln.BFO is relatively stable from the second period and reaches 14.99% and 11.19%, respectively, in the 10th period. The contribution rates of d.ln.SPUSGRN and d.ln.BFO to d.ln.GRNNR do not exceed 1% and 4%, respectively, in the 10th period;
In model 3, the contribution of d.ln.BFO and d.ln.GRNEUROPE to d.ln.SPUSGRN stabilizes quickly and reaches 4.98% and 35.43%, respectively, in the 10th period. The contribution of d.ln.SPUSGRN and d.ln.GRNEUROPE to d.ln.BFO does not significantly change from the fourth period and reaches 3.34% and 27.80%, respectively, in the 10th period. The contribution rates of d.ln.SPUSGRN and d.ln.BFO to d.ln.GRNEUROPE do not exceed 3.35% and 1.62%, respectively, in the 10th period.
4. Summary and Discussion
The obtained results can be used to draw conclusions on the existence of Granger causality between the GB market, ES and the multidimensional nature of sustainable development. Despite the fact that the issues discussed in the paper were separately analyzed by many authors (see, for instance, [
44,
45]), not many of them used a holistic approach to investigating the interrelationships between the GB market, selected aspects of sustainable development and ES.
Our empirical results clearly suggest that there exists a short-term dependence between the S&P GB Index, which measures the market value of globally issued green-labeled bonds, three indicators taken from the NASDAQ OMX family of indices, and spot prices of Europe Brent FOB. However, the links between the GB market, different aspects of sustainable development, as measured by selected environmental indices, and ES, as represented by crude oil prices, depend on which assets are analyzed as a system.
In model 1, we analyzed the links between the performance of the globally issued, green-labeled bonds, market value of shares of companies that produce energy through renewable sources and the spot prices of the Europe Brent BFO. The empirical evidence obtained from this part of the study confirms that the shares of the companies that produce energy through renewable sources Granger cause both the spot prices of the Europe Brent BFO and the quotes of the S&P GB Index. Furthermore, the spot prices of the Europe Brent BFO respond more pronouncedly to a shock to the share prices of the clean energy companies than the index of green bonds. The impact of crude oil spot prices on the index of green debt instruments is less evident. It is also worth noting that the effects of shocks are not persistent, reflecting the short-term dependence between the considered variables.
In model 2, we investigated the dependencies between the performance of the S&P GB Index, market value of shares of companies participating in agriculture, forestry and other natural product industries using sustainable methods, and the spot prices of the Europe Brent BFO. The obtained results provide evidence that the shares of companies participating in agriculture, forestry and other natural product industries using sustainable methods Granger cause both the spot prices of the Europe Brent BFO and the quotes of the S&P GB Index. As previously, the spot prices of the Europe Brent BFO are more severely impacted by a shock to shares’ prices than the S&P GB Index. Both spillover effects are limited to about 3–4 periods, showing their short-term nature.
In model 3, we analyzed the relationships between the performance of the S&P GB Index, market value of shares of companies across the spectrum of industries that are closely associated with the economic model of sustainable development through every economic sector, and the spot prices of the Europe Brent BFO. The conclusions drawn on the basis of empirical data are almost identical to those in model 1.
The links between variables included in models 1, 2 and 3 are in line with other studies (see, for instance, [
24,
46]). However, they partially contradict the results presented, for example, in [
47,
48,
49]. In [
47], Kumar et al. showed that oil prices and technology stock prices separately affect stock prices of clean energy firms. In [
48], Troster and Shahbaz found no Granger causality between variations in oil prices and economic activity, while in [
49], Dominioni et al. claimed that oil was in a predator–prey relationship with wind energy stock prices for the entire period considered, and had a mutualistic relationship with solar energy stock prices after 2012.
It is worth noting that the contradiction of our results with other findings (see, for instance, [
47,
48,
49]) may result from the fact that small VAR(p) models consisting of three equations are often unstable, and thus may poorly predict the future values of the included variables. This problem could be partially solved by adding extra variables to the model. In such a case, however, the number of coefficients that need to be estimated increases. Furthermore, adding extra variables may require changing the applied methodology, e.g., as a consequence of nonstationarities in added data series (see, for instance, [
50]).
Indices of shares are good candidates for inclusion in the proposed VAR(p) model. Alternatively, as GBs are debt instruments, we may consider including bond indices as additional variables. Finally, we could focus on the indicators measuring uncertainty in financial markets and the global economy. Such approaches were proposed, for example, by [
20,
51], and referred to the EPU and the VIX indices, respectively. The VAR(p) model could also be extended by the MOVE index, which is dedicated to the bond market. The addition of any other variable to the model should be preceded, however, by further research.