Spillover and Drivers of Uncertainty among Oil and Commodity Markets

: The paper aims to examine the spillover of uncertainty among commodity markets using Diebold–Yilmaz approach based on forecast error variance decomposition. Next, causal impact of global factors as drivers of uncertainty transmission between oil and other commodity markets is analyzed. Our analysis suggests that oil is a net transmitter to other commodity uncertainties, and this transmission signiﬁcantly increased during the global ﬁnancial crisis of 2008–2009. The use of linear and nonlinear causality tests indicates that the global factors have a causal effect on the overall connectedness, and especially on the spillovers from oil to other commodity uncertainties. Further segregation of transmissions between oil to individual commodity markets indicates that stock market implied volatility, risk spread, and economic policy uncertainty are the inﬂuential drivers of connectedness among commodity markets.


Introduction
Amidst the financialization of commodities, understanding the dynamics of commodity markets, such as energy, precious metals, industrial metals, and agriculture, has become an important topic for investors, policymakers, and risk managers. This financialization, along with increased integration of global markets, has augmented the transmission between different markets [1][2][3]. The increased flow of capital between countries and substantial technological development are the key reasons contributing to globalization. Thus, it is essential to understand the extent and nature of linkages among different financial markets [4].
In global financial markets, oil is considered as an important commodity [5]. Despite being an underlying asset, oil is also considered as life support for profuse economies [6]. The focus of researchers is now moved more towards the transmission among commodities, especially with oil markets, after an increase in general trend for investment in commodity markets [7]. Empirical researchers have proposed several possible channels of connectedness between the oil and other commodity markets. Accordingly, an increase in the price of oil leads to inclination in commodity prices [8]. According to Jain and Ghosh [9], is a net transmitter to other commodity uncertainties, and this transmission significantly increased during the period of the global financial crisis. Additionally, our results indicate that the global factors in some way have a causal effect on the overall connectedness, especially on the spillovers from oil to other commodity uncertainties. Further segregation of transmissions from oil to individual commodity markets and vice versa indicate the S&P 500 volatility index (VIX), and to some extent, difference between the interest rate on short-term U.S. government debt and the interest rate on interbank loans (TED) spread and the U.S. economic policy uncertainty index (EPU), as the most influential drivers of connectedness among commodity markets.
The remainder of this paper is divided into five sections. Section 2 provides a review of previous literature. Section 3 outlines the methodology used to analyze the transmission between oil and other commodity uncertainties and examination of the impact of global factors on the transmission across commodity markets. Section 4 provides details of the data and summary statistics. The empirical findings are discussed in Section 5. Finally, Section 6 makes concluding remarks.

Oil and Commodity Markets
As indicated earlier, the empirical finance literature is rich in studies focusing on the linkage between the precious metals, industrial metals, and agricultural commodities with oil markets (such as [7,19,[39][40][41][42][43][44][45][46][47][48][49][50]). Sari et al. [26] find a short-term relationship between precious metals and crude oil in the context of developed countries. Hammoudeh and Yuan [11] indicate that, in the US metal market, lagged crude oil prices drive univariate volatilities of precious metals like gold, silver, and copper. In the same way, high comovement between gold and crude oil prices under long-term equilibrium is documented by Zhang and Wei [51]. Further, the study of Bildirici and Turkmen [52] found significant long-term association between crude oil prices and precious metals. In accordance with the findings of Kanjilal and Ghosh [31], the study also reported significant long-run influence of crude oil prices on gold and copper returns. Diebold et al. [20] characterize connectedness in 19 key commodity volatilities over the period 2011 to 2016 using high-dimensional generalized vector-autoregressive (VAR) and network analysis. The study finds apparent clustering of commodities into groups, and the energy sector is most important in sending shocks to other commodities. Moreover, there is high connectedness between energy commodities, precious metals, industrial metals, agricultural commodities, and soft commodities. Balli et al. [19] find that connectedness among 22 commodity uncertainty indexes increased during the global financial crisis (GFC) and the oil price collapse of 2014-2016 using spillover analysis. Furthermore, network graphs analysis shows that precious metals may have served as a safe-haven due to less spillover with other commodities during the crisis period. In that regard, the study tests the following hypotheses: Hypothesis 1a (H1a). There are no spillovers between oil and commodity markets.
Hypothesis 1b (H1b). There are no spillovers between oil and commodity markets during crisis period.

Global Factors and Commodity Markets
Various studies have witnessed more synchronization in the oil prices movement with commodity returns including precious metals, agricultural commodities, and commodity futures for the current decade due to the increased financialization and inclusion of alternative investments within a portfolio of investors [39,[53][54][55][56]. The crude oil and commodity market risk and return interactions are profoundly investigated in the earlier studies from both directions (say [57,58]). However, studies that examine the possible causal effect of different global factors on the connectedness of oil and commodities are Mathematics 2021, 9, 441 4 of 26 scarce. Therefore, in this study, we argue that global factors can have direct economy-wide effects that ultimately cascade into financial markets.
The earlier research has shown that lenders react with a conservative approach in government lending practices when an augmented level of uncertainty regarding government economic policies exists and, by consequence, the interest rates increase in the market [59]. Rogoff [60] argues that higher oil consumption countries are less vulnerable to shocks than they were in the past due in part to increased energy efficiency. Bouoiyour et al. [61] explores the dynamic association between oil prices and geopolitical risk (low-and high-risk scenarios). The findings of the study indicate oil prices as a nonlinearswitching phenomenon. Prokopczuk et al. [35] explore the association between volatility of commodity markets and economic and financial uncertainty. They conclude that there is a bidirectional relationship between the volatility of a commodity market with financial and economic uncertainty during a recession period. Ordu-Akkaya and Soytas [62] finds that spillover from stocks to commodities during a period of financialization increased for all commodities. Moreover, one of the underlying reasons for increasing spillover between markets was quantitative easing, including default spread, current factors, or interest rate. Several other factors have been shown to affect the commodity markets, such as financial stress or TED spread [63], Morgan Stanley Capital International (MSCI) World index, U.S. Dollar (USD) index, and financial stress, among others (say [32,64]). Huang et al. [25] investigate the relationship between US oil prices and the prices of gold, copper, and silver in Chinese market. The findings of the study unveil that the network of oil, silver, and gold prices have significant explanatory power in establishing silver and gold prices in the Chinese commodity market. Accordingly, Jebabli et al. [33] find that shocks to MSCI markets or crude oil had short-term and immediate impacts on food markets during the GFC of 2008-2009. De Boyrie and Pavlova [29] find that an increase in the Chicago Board Options Exchange (CBOE) volatility index (VIX) is related to higher agriculture commodities correlations.
Murray [65] finds evidence of Granger-causality from commodity prices to the geopolitical risk (GPR) index in the years preceding the GFC but not afterward. Liu et al. [66] find that GPR causes fluctuations in the oil market, where results strongly confirm the GARCH-MIDAS-GPRS model with serious GPR significantly outperforms the GARCH-MIDAS model in the out-of-sample results.
Robe and Wallen [64] reveal that short-term oil implied volatilities and West Texas Intermediate (WTI)-implied volatility term structure is significantly affected by VIX and the other constraints of oil output such as inflation. The authors' explanation regarding inflation channel suggests that higher oil prices not only imply higher energy and production costs, but also that the phenomena cause an interest rate hike. In addition, the positive impact of EPU on stock-commodity association is reported by Badshah et al. [30]. The effects were more pronounced in the case of energy and industrial metals. In the same way, Kanjilal and Ghosh [31] also report the linkages between oil and gold in two specific ways, either through an inflation channel for oil-importing countries or through a revenue channel for oil exporters. Considering the above literature, we test the following hypotheses: Hypothesis 2a (H2a). Global factors do not Granger-cause spillovers between oil and commodity markets in a linear setting.
Hypothesis 2b (H2b). Global factors do not Granger-cause spillovers between oil and commodity markets in a nonlinear setting.

Methodology
The empirical analysis of this paper is divided into two parts. First, we follow the connectedness framework of Diebold and Yilmaz [36] to estimate the transmission between oil and other commodity uncertainties. After estimating the transmission measures, we then test the impact of global factors on the transmission measures between oil and other commodity uncertainties using linear and nonlinear causality tests.

Diebold and Yilmaz Transmission Approach
We follow the connectedness framework of Diebold and Yilmaz [36] to estimate the different transmission measures built from the forecast-error variance decomposition (FEVD) matrix centered on the generalized vector-autoregressive (VAR) model. Consider an n-variate covariance stationary VAR (p) model, where t ∼ N(0, Σ). The moving average component of the VAR process is represented by the following moving average (MA) (∞) process where ω i is a n × n coefficient matrix and calculated recursively using and ω 0 represents the identity matrix. Taking help from the MA coefficient, we utilize the generalized FEVD, which permits splitting the H-step-ahead forecast error of each variable and attributed to various shocks in the system.
We favor the generalized approach of Koop et al. [67] and Pesaran and Shin [68] to achieve orthogonality since the Cholesky factor depends upon the ordering of the variables. The contribution of variable j to the H-step-ahead generalized variance of forecast error of variable i is denoted as τ ij (H) and computed as: where the jth diagonal component of the standard deviation is represented by σ jj . ∑ represents the covariance matrix of errors. e i has a value 1 for ith component and 0 otherwise. Finally, the coefficient matrix that multiplies h-lagged error in the infinite moving-average representation of non-orthogonalized VAR is represented by ω h . We measure the pairwise directional transmission, τ ij (H), from j to i as: The ratio of the off-diagonal sum of rows to the sum of all the elements represents the total directional transmission from others to i as: Furthermore, the ratio of the off-diagonal sums of columns to the sum of all the elements represents the total directional transmission to others from j as: Finally, the total system-wide transmission is the ratio of the sum of the from-others (to-others) elements of the variance decomposition matrix to the sum of all its elements:

Causality Tests
In the second part of our analysis, we empirically examine the impact of global factors on the transmission relationship between oil and other commodity uncertainties utilizing the linear and nonlinear causality tests.

Linear Causality Test
Based on the vector autoregressive (VAR) framework, we employ the linear causality test following Granger [37]. The test can be expressed as: where x t and y t represent global factors and transmission between oil and other commodity uncertainties, respectively. ε 1t and ε 2t are uncorrelated idiosyncratic terms. The null hypothesis tested using Granger [37] causality test is "x t does not Granger-cause y t ". If the lags of x t can predict y t , we can reject the hypothesis and x t "Granger-causes" y t .

Nonlinear Causality Tests
The pioneering work by Granger [37] paved the way for other researchers to look deeply into the causal relationship between economic and financial time series. Péguin-Feissolle and Teräsvirta [38] proposed two nonlinear causality tests: (1) Taylor series approximation and (2) Artificial Neural Network (ANN)-based.
The Taylor series approximation causality test is based on the Taylor expansion of the nonlinear function: where ϑ * is a vector, x t and y t are weakly stationary series, and f * is an unknown function but assumed to represent the causal relationship between y t and x t . Moreover, for every point of the sample (parameter) space ϑ * ∈ Θ, f * has a convergent Taylor expansion. In order to examine the non-causality hypothesis, i.e., y t does not cause x t , we have: To test Equation (9) against Equation (8), following Péguin-Feissolle and Teräsvirta [38] and later Péguin-Feissolle et al. [69], we linearize f * and increase the function form into a kth order Taylor series around an arbitrary sample space. After the approximation and re-parameterization of f * , we obtain: where ε * t = ε t + R t (k) (y, x), R t (k) represents the remainder with n ≤ k and q ≤ k. Péguin-Feissolle and Teräsvirta [38] indicate two possible difficulties related to Equation (10). One being multicollinearity due to large k, q, and n, and second is the small number of degrees of freedom, due to the rapid increase in the number of regressors with k. By replacing some observation matrices with their principal components, we can tackle both problems. Hence, we use the principal components and test the null hypothesis of zero coefficients of principal components, tested as: where we obtain SSR 0 and SSR 1 using the following methods. For SSR 0 , we regress x t on 1 and the first principal components p * of the matrix of lags of x t only, to estimate the residualsε t , t = 1, . . . , T. The squared residuals are summed to obtain SSR 0 . SSR 1 are obtained by regressingε t on 1 and all the terms of the two principal component matrices. The problem of degree of freedom can be tackled by assuming that the general model is "semi-additive": where ϑ = ϑ f , ϑ g is the parameter vector. If g y t−1 , . . . , y t−n , ϑ g = constant, then y t does not cause x t . In order to obtain the static called "additive", we linearize both functions into kth order Taylor series. The artificial neural network causality test uses a logistic function. The approximation of the equation g y t−1 , . . . , y t−n , ϑ g is obtained using: where ϑ 0 ∈ R, µ t = (1, µ t ) is a (n + 1) × 1 vector, µ t = (y t−1 , . . . , y t−n ) , α = (α 1 , . . . , α n ) are (n × 1) vectors, and γ j = γ j0 , . . . , γ jn for j = 1, . . . , p, are (n + 1) × 1 vectors. The null hypothesis of the test is {y t } does not cause {x t }. The estimation of the ANN-based causality test serves as (1) comparative analysis for the Taylor-based nonlinear causality test, and (2) serves as a robustness check. The use of nonlinear causality tests also helps minimize possible estimation errors, since we use the estimated transmission measures. Additionally, we utilize the VAR stability tests to ensure the stationarity of residuals.
The summary statistics of uncertainty indices indicate that silver and gold have the highest mean uncertainty along with the highest standard deviation indicating the presence of extreme fluctuations. This can be related to the fact that investors use precious metals, such as gold, as a hedge against the inflationary and monetary policy uncertainty [70]. The results of the Jarque Bera test reject the null of normality for all uncertainty indices. Furthermore, the results of Augmented Dickey−Fuller (ADF) and Phillips−Perron (PP) indicate stationarity in all the uncertainty indices and hence, appropriate for the use of the Diebold-Yilmaz (DY) framework. Following Balli et al. [19], we analyze the uncertainty transmission between crude oil WTI and other commodity uncertainties using log-transformed uncertainty indices.
For our objective to analyze whether global factors impact the transmission between crude oil WTI and other commodity uncertainties, we employ a battery of six potential global factors, widely used in the literature. six global factors indicate that EPU, GPR, VIX, and TED are stationary; hence, they are not transformed. Whereas MSCI and USD are transformed using the logarithmic first difference in order to achieve stationarity. Whereas, JB represents Jarque-Bera test of normality. ** and *** denotes rejection of null hypothesis at 5% and 1% level of significance.

Empirical Findings
The empirical findings consist of two sections. First, we employ the DY framework to analyze the transmission between crude oil WTI and other commodities' uncertainties and provide evidence of significant transmission between them. Second, we apply linear and non-linear Granger causality models to analyze the impact of six global factors on the transmission between crude oil WTI and other commodity uncertainties. Table 2 reports the transmission estimates between oil and other commodity uncertainties. Panel A and B report the estimates of the DY framework for full-sample and the global financial crisis (GFC). Analyzing Panel A, we find that metals, such as palladium, platinum, copper, aluminum, and lead, are the highest receivers of uncertainty from oil, whereas silver, palladium, and copper are the highest transmitters. Strikingly, most of the metals are the highest transmitters and receivers of uncertainty from oil. These findings indicate the strong bi-directional transmission between oil and metal markets, which are in line with the findings evidenced by Kang et al. [21] and Reboredo and Ugolini [57]. Additionally, we also find significant bi-directional transmission between oil and agricultural commodity uncertainties, consistent with the findings of Ji et al. [73] and Nazlioglu et al. [46]. Although the analysis of overall net spillovers (net spillover all uncertainties) between oil and other commodity uncertainties indicates that oil is mostly a net transmitter, additional examination of net pairwise spillovers between oil and other commodity uncertainties suggests oil is a net receiver from gold, silver, palladium, soybean, and cocoa. Similar to the findings of Albulescu et al. [27] about the heterogeneity in the relationship between oil and commodity currencies, we find additional evidence of heterogeneity in the relationship between oil and other commodities. We further analyze the transmission between oil and other commodity uncertainties during the period of the GFC (from January 2008 until June 2009) in Table 2 Panel B and find a substantial increase in the bi-directional transmission between oil and agricultural commodity uncertainties during this period. These results corroborate the findings of Shahzad et al. [74], who find symmetry in the upside and downside spillover impact between oil and agricultural commodities. We also find a significant increase in the overall net spillovers of oil uncertainty, indicating an increase in the overall transmission from oil to other commodity uncertainties. Using visual aid in Figure 1 provides additional support to the argument of a significant increase in the net spillovers of oil during the GFC period. Although we do not report the overall spillovers, the findings indicate a significant increase in the overall spillovers, implying a more pronounced dependence between oil and other commodities during the GFC. from oil to other commodity uncertainties. Using visual aid in Figure 1 provides additional support to the argument of a significant increase in the net spillovers of oil during the GFC period. Although we do not report the overall spillovers, the findings indicate a significant increase in the overall spillovers, implying a more pronounced dependence between oil and other commodities during the GFC.

Impact of Global Factors
In the previous section, we observed bi-directional transmission between oil and other commodity uncertainties, with an increase in the overall transmission during the global financial crisis. Our analysis also points out the role of oil as a net transmitter of uncertainty shocks to the other commodities. In this section, we explore the impact of global factors on the connectedness of commodity markets. Indeed, with the world becoming a global village, stakeholders throughout the world have investments across different markets. Just as markets are open to investment opportunities, they also become prone to the risks associated with globalization, i.e., global liquidity conditions and the risk appetite of investors [27,75], the most notable example being the 2008 sub-prime mortgage crisis, which triggered a global financial meltdown.
We test the impact of global factors on the transmission between oil and other commodity uncertainties using three distinct methods of causality tests, i.e., a linear Granger-causality test proposed by Granger [37], along with two nonlinear (Taylor-and ANN-based) causality tests proposed by Péguin-Feissolle and Teräsvirta [38] and Péguin-Feissolle et al. [69] in Table 3. Panel A and B report the findings for the whole sample and GFC period, respectively. The null hypothesis of global factor does not Granger-cause (a) overall transmission, (b) transmission from oil uncertainty to other commodity uncertainties, and (c) transmission from other commodity uncertainties to oil uncertainty. These are tested.

Impact of Global Factors
In the previous section, we observed bi-directional transmission between oil and other commodity uncertainties, with an increase in the overall transmission during the global financial crisis. Our analysis also points out the role of oil as a net transmitter of uncertainty shocks to the other commodities. In this section, we explore the impact of global factors on the connectedness of commodity markets. Indeed, with the world becoming a global village, stakeholders throughout the world have investments across different markets. Just as markets are open to investment opportunities, they also become prone to the risks associated with globalization, i.e., global liquidity conditions and the risk appetite of investors [27,75], the most notable example being the 2008 sub-prime mortgage crisis, which triggered a global financial meltdown.
We test the impact of global factors on the transmission between oil and other commodity uncertainties using three distinct methods of causality tests, i.e., a linear Grangercausality test proposed by Granger [37], along with two nonlinear (Taylor-and ANN-based) causality tests proposed by Péguin-Feissolle and Teräsvirta [38] and Péguin-Feissolle et al. [69] in Table 3. Panel A and B report the findings for the whole sample and GFC period, respectively. The null hypothesis of global factor does not Granger-cause (a) overall transmission, (b) transmission from oil uncertainty to other commodity uncertainties, and (c) transmission from other commodity uncertainties to oil uncertainty. These are tested. The results from Panel A indicate the impact of MSCI World, TED spread, and USD index on the overall connectedness of oil and other commodity uncertainties. We do not find the impact of EPU, GPR, and VIX on the overall connectedness. Interestingly, the results in sub-panel A2 indicate a substantial impact of the global factors on the transmission from oil to other commodity uncertainties, especially VIX, TED spread, and USD index, where linear and nonlinear tests show consistent evidence of causality. Consequently, we find evidence of the nonlinear causal impact of EPU, GPR, and MSCI World. The evidence from Panel A3 further indicates the bi-directional impact of EPU, GPR, TED spread, and USD index. The above findings provide evidence that nearly all the global factors in some way tend to drive the bi-directional connectedness of commodity markets. The evidence also suggests the intermediary role of oil to transfer the impact of global factors on other commodity markets. The above evidence can be related to the findings provided by Ciner et al. [42], and more recently, by Batten et al. [76] about the feasibility of oil as a hedge against market shocks. Indeed, if oil can be used as a hedge against market shocks, it is safe to assume that oil acts as a buffer against the impact of global factors on other commodity markets.
We further test the impact of global factors on the transmission between oil and individual commodity uncertainties. In Table 4, we present the results of linear and nonlinear causality tests for the spillovers running from oil to other commodity uncertainties for the whole sample. Although we generally find a significant impact of global factors, the results indicate a stronger impact of VIX, TED spread, and USD index on the transmissions running from oil to other commodity uncertainties. Additionally, a comparison of the linear and nonlinear causality tests yields that the relationship between the spillovers and the global factors is mostly nonlinear. In order to provide further insight into the impact of global factors on the transmission from oil to individual commodity uncertainties, we perform a sub-sample analysis during the period of the GFC. We report the results of the causality tests in Table 5. Compared with other global factors, the analysis indicates the significant impact of VIX, and to some extent, the nonlinear impact of TED spread and EPU on the transmission from oil to individual commodity uncertainties during the GFC period.
Finally, we report the results of linear and nonlinear causality tests for the transmissions running from individual commodity uncertainties to oil in Table 6. Comparing the results to Table 4, we find VIX and TED spread as the significant drivers of connectedness from individual commodity uncertainties to oil. We also find the nonlinear impact of the USD index across all commodity markets. Nevertheless, the analysis reported in Table 7 related to the transmission of individual commodity uncertainty to oil during the GFC sub-period points out the importance of VIX, and to a lesser extent, TED spread and EPU, as the drivers to cross-commodity connectedness.
Interestingly, we find a heterogeneous impact of global factors across different commodity markets. Our findings provide further evidence in support of the idea of the "financialization" of commodity markets [75,77] through various channels. First, our analysis of inter-connectedness between oil and other commodity uncertainties provides evidence of the increase in connectedness, especially during the global financial crisis. These findings are consistent with previous literature on the bi-directional inter-connectedness among commodity markets (such as [19,22,46,73,74]). Second, the results related to VIX as the most influential driver of transmission between oil and other commodity uncertainties corroborate the findings of Silvennoinen and Thorp [78] and Yoon et al. [79], indicating the importance of the US stock market as the most significant contributor of spillovers across different asset classes. Finally, the relatively significant causal impact of TED spread, and EPU provides support to the evidence provided by Buyuksahin and Robe [80] and Albulescu et al. [27] for financial market stress (TED spread) and US monetary policy (EPU) as the drivers of financial market connectedness.

Conclusions
In this study, we investigate the impact of global factors on the connectedness of commodity uncertainties from January 2007-December 2016. To this end, we first employ the methodology proposed by Diebold and Yilmaz [36] to estimate the transmission between oil and other commodity uncertainties. Moreover, we make use of the linear and nonlinear (Taylor-and ANN-based) causality tests to estimate the impact of global factors on the connectedness of commodity uncertainties. Performing additional sub-sample analysis, during the global financial crisis, helps us obtain an in-depth insight into the relationship among commodity markets and their interaction with the global factors.
In our study, we find strong bi-directional transmission between oil and metal (agriculture) markets, and this transmission became significantly more pronounced during the turmoil period, i.e., the GFC. Our analysis suggests that oil is a net transmitter to other commodity uncertainties, and this transmission of oil significantly increased during the period of the GFC (2008-2009), which originated as the sub-prime mortgage crisis in the U.S. and consequently resulted in the meltdown of financial markets globally. Additionally, our results indicate that the global factors in some way have a causal effect on the overall connectedness, especially on the spillovers from oil to other commodity uncertainties. Further segregation of transmissions from oil to other commodity markets and vice versa indicate VIX, and to some extent, TED spread and EPU, as the most influential drivers of connectedness among commodity markets.
Amidst the "financialization" of commodities, resulting in a sharp upsurge in the connectedness of commodity markets and their interaction with other financial and macroeconomic determinants, we find that the price of commodities is not only dependent on the supply and demand channel but also determined by the risk appetite of stakeholders. Thus, investors can be watchful of the global factors, such as VIX, which is considered as a proxy for investor sentiment and risk aversion [81] and also regarded as a good predictor of commodity and equity markets [82,83] to better forecast the price changes in commodity markets. Additionally, investors in the commodity market can utilize the insights from our analysis to formulate better portfolio diversification and hedging strategies. In this way, they would be better placed to get through the environment of high-contagion risk.
Additionally, policymakers and regulators should carefully assess the risk associated with financial stress and economic policy. This way, they would be able to provide better avenues of risk-sharing for the producers and will be able to incentivize the commodity markets to provide relief to the consumers against the inflationary effects.
Among the limitations of our analysis is that it only uses Diebold and Yilmaz [36] time-domain approach to estimate total static connectedness. A possible direction for future research can be the further segregation of total connectedness into frequencies (i.e., short-, medium-, and long-term). This would provide a more in-depth insight into the causal impact of global factors on different frequency scales. In addition, although the static analysis effectively unveils the structure of connectedness spillovers among commodities, still, time-varying analysis of spillover patterns would also add important insights; hence, the future research can look into this matter.