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Article

On the Dynamic Changes in the Global Stock Markets’ Network during the Russia–Ukraine War

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Office of Research Innovation Comercialization (ORIC), Rawalpindi Medical University (OTB), Tipu Road, Rawalpindi 46000, Pakistan
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Department of Management Sciences, COMSATS University, Park Road, Islamabad 45550, Pakistan
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School of Business Administration (SBA), Al Akhawayn University, Ifrane 53000, Morocco
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VALORIZA—Research Center for Endogenous Resource Valorization, 7300-555 Portalegre, Portugal
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Department of Economic Sciences and Organizations, Polytechnic Institute of Portalegre, 7300-555 Portalegre, Portugal
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CEFAGE-UE, IIFA, Universidade de Évora, Largo dos 2 Colegiais, 7000-809 Évora, Portugal
*
Author to whom correspondence should be addressed.
Economies 2024, 12(2), 41; https://doi.org/10.3390/economies12020041
Submission received: 25 November 2023 / Revised: 9 January 2024 / Accepted: 17 January 2024 / Published: 4 February 2024

Abstract

:
Analysis of the relationships among global stock markets is crucial for international investors, regulators, and policymakers, particularly during a crisis. Complex network theory was applied to analyze the relationship between global stock markets during the Russia–Ukraine war. Daily data from 55 stock markets from 6 August 2021 to 23 September 2023 were retrieved and used to investigate the changes in global stock market networks. The sample period was divided into 22 subsamples, using a 100-day rolling window rolled forward a trading month, and then long-range correlations based on distance matrices were calculated. These distance matrices were utilized to construct stock market networks. Moreover, minimum spanning trees (MSTs) were extracted from these financial networks for analytical purposes. Based on topological and structural analysis, we identified important/central nodes, distinct communities, vulnerable/stable nodes, and changes thereof with the escalation of war. The empirical findings reveal that the Russia–Ukraine war impacted the global stock markets’ network. However, its intensity varied with changes in the region and the passage of time due to the level of stock market integration and stage of war escalation, respectively. Stock markets of France, Germany, Canada, and Austria remained the most centrally connected within communities; surprisingly, the USA’s stock market is not on this list.

1. Introduction

Financial crises have remained pervasive throughout history (Allen et al. 2009). It may occur at any time because of myriad factors. However, in recent years, there has been an alarming increase in the frequency of their occurrence (Adekoya et al. 2022). Due to this increased tendency of crises and their frequent long and short episodes, it has become essential to analyze them more extensively and rigorously. Moreover, it should be studied and investigated emergently because of the lesser response time available and its variant dynamics from preceding crises. The most recent and prominent crisis is the Russia–Ukraine war (geopolitical situation), which has global implications and the potential to trigger global financial crises.
This war began when all the diplomatic attempts to resolve the conflict in Crimea and avert armed confrontation were negated, and Russia proclaimed a “special military operation” against Ukraine on 24 February 2022 (Dole 2022). War may have catastrophic implications worldwide; however, as per Boungou and Yatié (2022), it is premature to approximate the significance of the impacts it may cause. This will depend on various factors like conflict duration and the Russian response to the European sanctions. Further, it will also hinge on the escalation level and corresponding regional and global responses. However, as Adekoya et al. (2022) pointed out, this war may be considered the most notable conflict in Europe after World War II.
The implications of the Russia–Ukraine war may emerge through numerous drains on the world and its economy. For example, historical displacement of people may cause an increase in refugee flow; higher prices for commodities, such as foodstuff and energy, may cause rising inflation levels; reduced business confidence and increased uncertainty for investors may further affect prices of items; stringent financial conditions possibly lead to capital flight from emerging markets, and neighboring economies in specific may face interruption in trade, supply chains, and remittances (Kammer et al. 2022; Orhan 2022). Obviously, the most substantial consequence of the Russian–Ukraine conflict is the loss of lives and humanitarian crises related to a large number of people besieged and ousted (Orhan 2022). The war generated one of the fastest mounting refugee pressure after World War II, with more than 4 million displaced persons, about half of whom are children, departing from Ukraine in the first month of the aggression. In addition, 6.5 million people are expected to be expatriated within Ukraine, with about one-third of the population needing emergent humanitarian assistance (Guenette et al. 2022). The contest is expected to affect the world economy and global stock markets.
These expected economic effects of the Russia–Ukraine conflict are detailed below. The Russia–Ukraine war, in addition to a humanitarian disaster, may severely disrupt the global economy, primarily due to the significance of Russia, Ukraine, and their bordering countries. The impairment may occur in food insecurity, energy crises, and supply chains. Firstly, Russia and Ukraine have a significant position in the global economy (Orhan 2022) even though Russia and Ukraine’s combined trade constitutes less than 2% of world commerce (Dole 2022). They are still critical international economic actors (Mbah and Wasum 2022); both countries are considered the world’s bread baskets. They provide 30% of world wheat and barley, more than 50% of its sunflower oil, and 20% of its maize; Saudi Arabia is the only country that has more oil exports than Russia, and Russia supplies about one-fifth of the world’s natural gas and one-ninth of its oil requirements (Orhan 2022). European countries are highly dependent on Russian energy exports to ignite their economy; about 25% of their oil and 40% of their gas needs are fulfilled through this source (Adekoya et al. 2022). Russia and Belarus, one of its neighboring countries, export around a fifth of the world’s fertilizer requirements (Orhan 2022). In conclusion, exports of both countries constitute almost 25% of the total global exports (Cohen and Ewing 2022). This economic importance of Russia, Ukraine, and their neighboring countries may cause severe economic consequences owing to evolving war situations.
Secondly, in response to this recent attack, heavy financial sanctions on Russia’s Central Bank, ousting their seven core banks from a significant global payment system (Aloisi and Daniel 2022), and holding Russia’s gross international reserves kept overseas, impeding Russian capability to settle its financial compulsions (Orhan 2022), were announced by Ukraine’s Western allies. In addition to these restrictions, the European leaders imposed additional economic, energy, and transportation sanctions against Russia. Russia is also subject to limitations, including exports, export financing, visa policies, and imports of items with dual uses. In this way, Russia is now considered the most-sanctioned country globally. It is a worldwide popular belief that global financial sanctions enforced against Russia and confiscation of assets/possessions of President Putin’s oligarch friends in response to recent Russian aggression against Ukraine will deter Russia from further strikes on Ukraine. Despite this compelling argument, the effects of this catastrophe began to affect the world economy (Mbah and Wasum 2022), and war is still escalating. Albeit having fatal implications for the economy of Russia, it is clear from the reviewed literature that the global economy is now feeling the effects of this calamity (Mbah and Wasum 2022).
Finally, significant world forces were already forecasting this war and considered its beginning only a matter of time (Boungou and Yatié 2022) and prepared themselves for the probable consequences of war. They have now started worrying about escalating prices and shrinking economies. For instance, crude oil prices reached the highest in eight years (Adekoya et al. 2022), leading to higher inflation (Buriyev and Muxiddinova 2022). Commodity prices have risen internationally while the financial market has shrunk substantially (Tank and Ospanova 2022). The fear of rising prices is growing poverty and distracting global commodity production (Orhan 2022). Tug of war in Ukraine may entail a decline in global GDP by 0.5% and 1% by 2022 and 2023, respectively, which is about $1 trillion. Moreover, this war is expected to add up to 3% and about 2% to global inflation in 2022 and 2023, respectively (Tank and Ospanova 2022). These fatal effects will be highly polarized for the European region (Tank and Ospanova 2022) because of Europe’s higher dependence on gas and oil imports from Russia, and one-fifth of the total foreign value added also comes from Russia (Kersan-Škabić 2023). Gas and oil’s prevailing prices in Europe are now more than ten and two times higher than in the previous year, respectively (Orhan 2022). GDP growth in the Eurozone is predicted to decline by 0.9% and 1.5% in 2202 and 2023, respectively, compared to the February forecast, and an expected rise in inflation to 5.5% and 2.1% in 2022 and 2023, respectively, against forecasts of 3.1%t and 1.3% in 2022 and 2023, respectively, in February (Tank and Ospanova 2022).
All these factors mentioned above emerged gradually and should substantially influence equity markets and their networks, as the global financial markets and economies are interconnected and inseparable (Egan 2022). Hence, the contest also started impacting financial markets. For example, during this war, overall volatility spillover in the commodity universe surged from 35% to 85%, surpassing the level observed during the pandemic (Wang et al. 2022). Financial markets indices showed a drastic decline: S&P 500 decreased by 10%; IMOEX decreased by 33.28%; Wig Poland Index decreased by 10.53%; DAX decreased by 3.96%; FTSE Italia decreased by 4.04% (Boungou and Yatié 2022), and SENSEX decreased by 4.72% (Dole 2022). In conclusion, the humanitarian disaster is becoming an economic crisis that may have global consequences on financial markets and their networks rather than a direct concern of the two nations (Adekoya et al. 2022).
Financial networks originate from network graphs, which are studied widely in mathematics, particularly in graph theory. However, network graphs have numerous applications in health sciences, sociology, statistical physics, economics, and finance, which has given rise to complex network theory. The complex network theory, when applied in finance to study and analyze a financial phenomenon, is termed financial network analysis. Due to their numerous applications, these analyses are gaining increasing importance in finance and becoming an area of immense interest for researchers, academicians, investors, regulators, and policymakers.
A network may be defined as an abstract representation of objects and their relations; in this manner, in a network (G), there is an array of edges (E) and nodes (N) that are linked. Applying complex network theory to global stock markets, one may conceptualize their networks such that each stock market index may be considered a node and their interconnectedness as an edge, which will provide the global stock markets’ network. The previous literature on the financial networks of stock markets revealed three things. Firstly, this method of analyzing the relationship of stock markets is more appropriate for studying financial time series because stock market data are often non-parametric, dynamic, and chaotic, exhibiting nonlinear behavior (Han 2019). Secondly, it becomes a more robust tool in times of crisis because it can identify instability and variations in topological features and structural arrangement during such periods (Memon et al. 2019). Thirdly, a handful of the literature on financial networks of stock markets focused on static analysis of these networks; however, little research on temporal global stock markets’ networks is available.
Some studies analyzed the impact of the pandemic crisis on stock markets’ networks dynamically by using pre- and post-analysis methods. For instance, Aslam et al. (2020) and Zhang et al. (2020) used a temporal network approach to explore the impacts of the crisis on stock markets’ networks. In these studies, while analyzing impacts, the researchers mentioned above only focused on two snapshots related to pre- and post-crisis. Whereas market structures and scenarios of crisis development are dynamic, implications related to a crisis on stock markets’ network structure should also primarily be dynamic, like a crisis gradually developed into a systemic from a local issue. Hence, a dynamic approach is being proposed in this study to analyze changes in the stock markets’ network, considering the all-pervasive nature of this misfortune event and its ubiquitous effects on financial markets. The need for temporal analysis increases significantly during a crisis because less time is available to respond, and its dynamics may vary from preceding crises.
We suggest this dynamic procedure to investigate the formation of the stock markets’ network with the Russia–Ukraine war escalation by following Kolaczyk and Csárdi (2014), who proposed such an approach in the network representation of hospital contact data. We believe that stationary analysis of only two networks at a particular point in time, like pre- and post-analysis, to report variations in financial markets’ networks due to the Russia–Ukraine war is inadequate. Since it is incapable of identifying variations in networks with the escalation of the Russia–Ukraine war, it is likely that a node with a prominent role in the stock market’s network in the pre-crisis period has changed its position several times from the core node to the periphery and/or inversely during the crisis. Then, when it again becomes central in the post-crisis period, it may be overlooked. Moreover, changes in the structural arrangement of nodes and topological features that occurred with the development of the crisis will be missed. Furthermore, stable and vulnerable nodes may not be identified; hence, the network evolutionary process in crisis will remain unexplored. Consequently, international investors following active portfolio management strategies, regulators, and policymakers recommending policy changes during the crisis cannot extract useful information from such analysis to support their decisions. This study attempts to fill this gap. By proposing this macro- and meso-level analysis procedure for networks during a crisis, this study may be placed in the existing literature on shrinking financial networks and tries to extend the current knowledge domain by enriching prevailing pre- and post-crisis methodology in network analysis.
This study may uniquely contribute in the following ways: it will enhance understanding of the topological structure of financial networks of stock markets. This study further aims to understand and analyze the evolutionary process of stock market networks, structural arrangements changes, topological properties, and internal dynamics during war crises. This study will enrich existing pre- and post-crisis analysis methods in financial networks and increase information available for decision-making. It will enable the identification of network structure stability and fragility at the levels of the node(s) and edge(s). Furthermore, this study will provide an in-depth analysis of stock markets’ financial networks during the ongoing Russia–Ukraine war. It will extend an understanding of the direct impact of military operations on stock markets’ networks. It will add value as many previous studies are limited to a nation or a particular area; in the available literature, static approaches were adopted instead of dynamic ones, and they were unrelated to the Russia–Ukraine war.
The present study is structured as follows: Section 2, “The Literature Review”; Section 3, “Materials and Methods”; Section 4, “Results and Discussion”; and Section 5, “Conclusions”.

2. The Literature Review

The geopolitical risk (GPR), like terrorist moves, disputes between nations, and the likelihood of wars, has economic consequences because of increased uncertainty (Caldara and Iacoviello 2022).

2.1. Geopolitical Risk and Uncertainty

Once again, the GPR level has risen tremendously due to the Russia–Ukraine war, which has imposed significant uncertainty because of vulnerability about potential escalation, political and economic stress spillovers to the global economy, sanctions, and response to those sanctions; all these factors would lead to further policy uncertainty (Guenette et al. 2022). Furthermore, the recent Russian invasion of Ukraine is supposed to change the geopolitical landscape (Tank and Ospanova 2022) and threaten the stability of geopolitical relations (Orhan 2022). Russian aggression against Ukraine in 2022 is seen to have reignited geopolitical rivalry amongst the world’s superpowers and expressively escalated GPRs. As the literature suggests, these factors have economic consequences and will impact financial markets and their networks. Investment and trade would suffer as firms seek to hedge against an adverse outcome to avoid risk premia owing to high policy uncertainty.
This uncertainty will also have repercussions on the financial markets. For example, Berkman et al. (2011) reported a significant association between political crises and global stock returns’ mean and volatility. The empirical fact that equity market returns and risk profile of securities both strongly influenced negatively when political risk was analyzed with financial market performance is also confirmed by another research (Kapar and Buigut 2020). Other studies explored this relationship; Smales (2017) discovered a strong correlation between GPR and market uncertainty by looking at recent key geopolitical events. Similarly, Lehkonen and Heimonen (2015) found a negative association between political uncertainty and equity return and that political risk affected the currency carry trading profit (Dimic et al. 2016). He et al. (2017) examined the economic costs of non-aggressive diplomatic disagreement between Taiwan and mainland China. They concluded that political stress was correlated with a considerable reduction in equity market returns and further reported a connection between lower present stock returns and expected future tension levels. Diplomatic and economic embargoes on Qatar, according to Kapar and Buigut (2020), had a profound effect on the nation’s stock market volatility and further demonstrated that the Qatari boycott had a significant influence on Gulf Cooperation Council countries’ stock markets, with repercussions spanning across several industries and nations. Various studies reported a considerable impact of GPR on businesses and financial markets; for example, Caldara and Iacoviello (2022) demonstrated different effects on the environment; Rigobon and Sack (2005) documented bond margins and stock returns, and Choi (2022) investigated for stock markets volatility. Geopolitical concerns such as military buildups, war threats, and terrorism have a more substantial negative impact on equity returns than geopolitical acts, as Salisu et al. (2022) have shown in recent research.

2.2. Impact of Military Conflicts and Territorial Disputes on Equity Markets

However, there is a shortage of studies on the direct effects of military conflicts, incursions, and territorial disputes on equity markets. Niederhoffer (1971) examined how international events (such as conflicts and political unrest) affected stock investments worldwide. A few researchers studied the impact of aggressive and non-aggressive global incidents on financial markets (Gu et al. 2021; Hudson and Urquhart 2015). Some studies discussed the impact of war on regional stock market indices; Fernandez (2007), for instance, looked at the effects of conflicts in the Middle East. Guyot (2011) explored the impacts of geopolitics on Islamic countries’ financial market indices. In Jordan, the effects of regional conflicts were examined by Alshwawra (2020). Estrada et al. (2020) explored the impact of the suppositional USA–Iran conflict; Zaremba et al. (2022) documented how GPRs affected developing market indices. They all reported an adverse effect of war on equity market indices. However, research that explored the effects of wartime experiences on stock markets is rare, and conclusions drawn are diverse; for instance, Leigh et al. (2003) documented that equity markets became weaker, whereas gold and energy sectors became stronger during the Iraq war. For the invasion of the same nation, the stated results are conflicted. The 1990 invasion of Kuwait by Iraq had a negative commercial impact, but Operation Desert Storm, led by the US, had a favorable one, according to Schneider and Troeger (2006). Finally, according to Bash and Alsaifi (2019), Jamal Khashoggi’s disappearance has had a very unfavorable implication on Saudi equity market returns. It is still unclear how the war would affect stock markets because some researchers have found negative consequences (Hudson and Urquhart 2015), while others reported favorable results (Guidolin and La Ferrara 2010).
Conflicts are generally believed to have a detrimental effect on the financial markets, as Gu et al. (2021) and Hudson and Urquhart (2015) reported. However, the research on the repercussions of the Russia–Ukraine war on financial markets is in the preliminary phase. Some researchers took the initiative to document these consequences. Wang et al. (2022) evaluated return and volatility spillover for the commodity market and reported an increase in overall volatility spillover from 35% to 85%; crude oil had become a net transmitter, and other commodities became the net receivers of return spillovers. Adekoya et al. (2022) documented a strong association between oil and other financial assets during periods of war; however, individual results were heterogeneous in net directional pair-wise results; oil was observed as a net spillover transmitter in the period before this war, and oil was a net receiver, the spillover effect being transitory and dying over time. The systemic vulnerability of the global financial system increased due to the Russia–Ukraine war (Qureshi et al. 2022), but the response was not long-lasting (Izzeldin et al. 2023). This systemic risk spillover was due to sanctions on Russia that negatively affected the rest of the world (Qureshi et al. 2022), the fear of reduced exports, and investors’ concern about suspending business with Russia (Sun and Zhang 2023) due to sanctions negatively driving the market (Kumari et al. 2023). Mohamad (2022) examined flight to safety phenomena and reported flight from the ruble to other currencies and herd behavior between energy commodities and cryptocurrencies. Investment in oil is also considered a safe haven during this war (Diaconaşu et al. 2023). The Russia–Ukraine war harmed the global returns of the stock market. According to Boungou and Yatié (2022), who used panel data to analyze and document this relationship, the impact was significant at the start of the war, particularly in the first fortnight following the Russian attack on Ukraine, and diminished in later weeks. Izzeldin et al. (2023) reached the same conclusion regarding the stock market response to this war. Boubaker et al. (2022) reported varying degrees of negative CARs for global equity market indices due to the Russian invasion of Ukraine. European stock markets also showed abnormal negative returns, which continued even after the event period (Ahmed et al. 2023), with heterogeneous magnitude across countries. A more negative reaction was observed for firms with headquarters in EU countries and countries with great trade dependency on Russia (Sun and Zhang 2023; Tajaddini and Gholipour 2023). Furthermore, the effects were most pronounced for nearby countries, in particular those that share a border with Russia and Ukraine, as well as for UN members that asked for an end to Russia’s attack on Ukraine (Boungou and Yatié 2022). Yousaf et al. (2022) concluded that European and Asian countries were more significantly and adversely affected than North American, Latin American, Middle Eastern, and African regions (Yousaf et al. 2022; Ahmed et al. 2023). Policymakers in Europe should reduce their reliance on oil and gas supplies from Russia by pursuing alternate energy sources (Ahmed et al. 2023).

2.3. Network Analysis and Financial Networks

Historically, networks have been studied widely in mathematics and, more precisely, in graph theory. However, it has also been applied in health sciences, sociology, statistical physics, economics, and finance. Examples are the World Wide Web (Huberman 2001), the Internet (Faloutsos et al. 1999), financial networks, the food webs (Pimm 1982), bibliometric analysis like university–industry cooperation, green technology innovation, financial performance relationships (Borges et al. 2022; Qing et al. 2022), and many others. Based on growth networks that have a binary classification, the first are growing networks, e.g., Barabási and Albert (1999) (BA model), and the other are shrinking ones, e.g., The Watts and Strogatz (1998) (WS model). In growing networks, the number of nodes and edges between them grow continuously; on the other hand, in shrinking networks, the number of nodes is fixed (almost fixed). However, a shrinking network does not mean a static one; in both classes, networks evolve with the passage of time. In the case of growing, both nodes and links may increase, and in shrinking network cases, the nodes may remain fixed, and the links between these nodes may change, a process termed network rewiring (Xie et al. 2008).
In finance, network analysis has many valuable applications. For instance, Garlaschelli and Loffredo (2004) applied development and topological characteristics (Fagiolo et al. 2009, 2010), firm connection maps (Bernard et al. 2019; Rungi et al. 2017; Vitali et al. 2011) to webs of global commerce. Networks for technology adoptions were used to examine the transfer of innovations among different disciplines from scientific to any other related field (Acemoglu et al. 2016). Other uses include investigating cross-border exposure (Kubelec and Sá 2010) and international banking networks at the macro (Degryse et al. 2010) and micro levels (Minoiu and Reyes 2013).
A separate body of the research literature on financial webs concentrates on measuring and managing risks, and this is thoroughly investigated by different researchers, such as Cossin and Schellhorn (2007), for credit risk at the company level, Mistrulli (2011) for counterparty risk, and Billio et al. (2012) for market risk. The reason behind the phenomenal growth of this utilization of network analysis is its revealing capabilities reported by various researchers; for instance, Allen et al. (2009) captured the domino effect, and Craig and Von Peter (2014) identified structural arrangements and topological features. According to Mistrulli (2011), this approach can also predict which institutions’ failure might result in more significant losses. Few researchers extended discussion from organizational to securities level analysis, such as Cetina et al. (2018), to swap exposures (CDC), Hüser et al. (2018) to bail in able securities, and Cai et al. (2018) and Hale (2012) to syndicate loan. For such research studies for network construction purposes, some researchers use fundamental data, while others apply technical data (Billio et al. 2012; Mantegna 1999). In some rare cases, the relationship between financial institutions belonging to different market segments is under consideration; multiple-layer networks are used in such situations for analytical purposes (Bargigli et al. 2015; Hüser et al. 2018; Langfield et al. 2014; Poledna et al. 2015).
In webs related to finance, links are assigned a value based on associations, either statistical relationships (Bargigli et al. 2015) or causal relationships (Wang et al. 2017); this procedure will generate a complete network (Billio et al. 2012). The literature provides a variety of models for filtering information from such a comprehensive network without defined thresholds, for instance, the Minimum Spanning Tree (MST) (Mantegna 1999). MSTs are constructed using a distance matrix; these distances are calculated based on associations, and such filtered network (MST) has nodes (n) and edges (n − 1). n represents the number of nodes, MST built in a way that the sum of distance among these links, without cycles, is the minimum. The distance between nodes is dependent on correlation values; as a method for calculating correlation changes, the structure of MST also changes (Wang et al. 2017). Planar Maximally is another type of filtered network (Tumminello et al. 2005); the construction method is the same as of MST, and only the filtration procedure changed because of the limit of number of nodes (n) and 3(n − 2) edges, avoiding the cross of links, which returns the same hierarchical tree as MST and with the added information content.
Other financial webs include the risk spillover (Wang et al. 2021), tail risk spillover (Hautsch et al. 2015), extreme risk spillover (Wang et al. 2017), return spillover (Billio et al. 2012), and networks. Correlation between various stock markets worldwide has also been extensively studied using financial networks, as seen in the work of Adjaouté and Danthine (2004) and Yang et al. (2006).

3. Materials and Methods

3.1. Data

The data relating to the daily closing price of 55 countries’ leading stock exchange indices were used to examine the impact of the Russia–Ukraine war on these stock markets. The data were retrieved from DataStream for the period starting from 6 August 2021 to 23 September 2023. The sample period consists of 778 days, approximately 533 trading days per stock market index. The list of these 55 leading stock market indices and their countries is provided in Table A1.
The whole sample duration is sliced into subsamples for temporal analysis purposes and to investigate the dynamic impact of the crisis on the international stock markets’ network. Details of such subsample periods are provided in Table 1. The sample period related to the Russia–Ukraine war was divided into 22 subsamples by keeping the date of the Russian attack on Ukraine.
Every subsample duration comprises 100 trading days, detached by a month, yielding a total of 22 subsamples duration; i.e., the initial subsample begins on 6 August 2021 and ends on 23 December 2021, after 100 trading days; the second subsample begins on 1 September 2021 and ends on 23 January 2022. It continues until the last subsample duration, which runs from 5 May 2023 to 23 September 2023. On 24 February 2022, Russia began a “special military operation” against Ukraine. Nineteen subsamples were taken after this date, while three were taken before. An MST representing each subsample has been drawn separately.

3.2. Network Analysis

The network construction (MSTs) started by computing conventional log returns by applying the following formula:
R i   t = l n p i t l n p i t 1
where  p i t  and  p i t 1  represent i stock market index’s closing value at time t and t − 1, sequentially.
The correlation coefficient was calculated based on a long-range approach proposed by Andrews (1991) to evaluate the interconnectedness between stock markets. According to Výrost et al. (2019), this technique is deemed appropriate during a crisis because it can mitigate perceived excessive co-integration, supposed increased volatility, and expected exposure to minor lag reversion across succeeding time intervals of stock market returns.
Andrews (1991) proposed a heteroskedasticity and autocorrelation consistent variance-co-variance matrix for a specified sample size T as
^ T = w ^ i , i w ^ i , j w ^ j , i w ^ j , j = m = T + 1 T 1 k m B Γ ^ m
where
Γ ^ m = T 1 t = m + 1 T Z t Z t m   , m 0 T 1 t = m + 1 T Z t + m Z t   , m < 0
and where  ^ T  represents the variance-co-variance matrix between stock markets at time t = 1, 2, …, T, Zt = [ri,t,rj,t]T; k(.) is the quadratic spectral kernel weighting function, and B is the bandwidth parameter that weighs lagged variances and covariances. The highest weight can be achieved by opting for a bandwidth parameter equivalent to four trading days; we pick this automatic choice in the current study. The quadratic spectral kernel function is defined as
k x = m B = 25 12 π 2 x 2 s i n 6 π x 5 6 π x 5 c o s 6 π x 5
In the end, long-run correlation  ρ ^ i , j  between i and j stock markets’ returns is calculated as
ρ ^ i , j = w ^ i , j w ^ i , i w ^ j , j
where  w ^ i , j  the covariance between stock markets i and j, and  w ^ i , i w ^ j , j  is the product of the standard deviation of i and j stock markets. Afterward, the distance matrix was calculated by transforming the correlation coefficients using the following Equation:
d i j = 2 1 ρ i j
where  ρ i j  is the long-range correlation between stock market indexes i and j. This converted correlation coefficient matrices into square distance matrices, which are used further to construct stock markets’ networks.
In a directed network graph, nodes are connected in a specific order, demonstrating mono-directional flow, unlike an undirected network graph, which shows bi-directional flows in connections. Furthermore, if edges contain information about the intensity of directional flow, the network is weighted; otherwise, it is unweighted.
Every stock market index represents a node in the stock market’s network, and inter-dependence between them is an edge. Resultantly, a weighted network was constructed, for which weights were calculated using Equation (6) proposed by Mantegna and Stanley (1999), who created such a network based on the coefficient of correlations between equity markets in formerly referred groundbreaking research work. Such networks contain substantial independent information in their structure (Buonocore et al. 2016).
MST is a sub-network with nodes (N) and edges (N − 1), constructed in such a way that the total weight of edges for connected nodes is at its lowest value without cycle. The Kruskal or Prim algorithm (Kruskal 1956) can be used to attain this goal of a minimum-cost network; we choose the Prim approach. An MST is a filter graph that has been used in this study to extract topological properties, structural arrangements, and valuable insights. In order to properly visualize the data and obtain a deeper understanding, this approach to the construction of MST is frequently used in the literature to analyze equity market interdependence (Han 2019; Mantegna 1999; Memon and Yao 2019; Nguyen et al. 2019). Several financial and economic crises were also analyzed using the same technique (Mahamood et al. 2019; Majapa and Gossel 2016; Memon et al. 2019; Yang et al. 2014).
In accordance with the subsample period detailed in Table 1, different MSTs were created using temporal windows. The technique proposed by Blondel et al. (2008) was then used to identify communities to investigate clustering and homogeneity among nodes. MSCI categorization was used afterward to contrast with community structure.
MSTs can conceal many broader network characteristics (Han 2019); for this reason, structural dynamics of MSTs using topological properties such as closeness centrality, degree centrality, and betweenness centrality were analyzed according to Table 2, and changes in these attributes were documented for each subsample duration separately.
The level of the node’s ability to operate as a bridge is gauged by its betweenness centrality. According to (Freeman 1977), the influence of a node grows over the network with an increase in the level of betweenness centrality; it may be expressed mathematically as
B c   i = a , b V λ ( a ,   b | i )   λ ( a ,   b )  
where V is a collection of stock market indexes; λ(a, b) shows the number of shortest paths, and λ(a, b|i) denotes the number of shortest paths across stock market i.
The reciprocal of the sum of the shortest possible distance from node i to every other node in the network is termed closeness centrality. This metric indicates a node’s importance in relation to other nodes across the network (Freeman 1978); it can be calculated as
C V i = N 1 j = 1 n d V i V j
where d(ViVj) denotes the shortest paths between stock markets i and j Vi and Vj, which correspond to the smallest number of stock market transverses while moving i stock market to j in the network; N is the number of stock market indices in the network, and (N − 1) is a normalization factor.
Temporal network analysis is a robust analytical tool that can capture the dynamic aspect of the effect of the Russia–Ukraine war’s escalation on stock markets’ networks. In this temporal network analysis, each MST represents a snapshot of co-movement in integrated equity markets affected by the intensification of the Russia–Ukraine war for a certain subsample period. However, this may be difficult for the reader because identifying the most variable and stable entity across many time stamp MSTs is difficult. To overcome this problem, make analysis more robust, and document changes in topological features, the following solution was proposed by Goenawan et al. (2016). A network rewiring approach is adopted through which multi-state static networks are analyzed and explored with efficiency and effectiveness. The most vulnerable/stable nodes and edges across the whole sample period are highlighted by a minimal spanning tree rewiring analysis.
Such an analysis, in return, also provides a series of networks; by following Salamon et al. (2018), the positions of the nodes were maintained across several graphs to enable synchronization, detection of highly rewired nodes, and other properties with statistically high variance. This method can report changes even if the degree of nodes and cost of the nearby nodes for creating MST remained equal (Couzens et al. 2013). Each node in every network in such analysis acts as a vector, a component representing numerous other components, representative of an edge attribute or weight to calculate the rewiring score (Salamon et al. 2018). Equation (9) was used to calculate the variance of these vectors and determine which nodes and/or edges are the most vulnerable/stable
D n S c o r e = i = 0 n [ d i s t a n c e ( v i , c e n t r o i d ) ] 2     n 1
where  D n S c o r e  is the dynamic neighborhood score; Vi vector denotes each node in every network;  c e n t r o i d  is vector mean, and n represents the number of networks.

4. Results and Discussion

The summary of the number of positive correlation coefficients between countries is provided in Table 2.
In the first subsample period, the number of positive coefficients of correlation was 2447 out of 3025, constituting 80%, and the remaining 20% were negative. This number of positive correlations remained in the range from 70% to 90% during the analysis period, with the highest being at 2747 and the lowest at 2125. The number of positive correlation coefficients among the stock markets during the crisis, in some cases, reached a level of 100% (Chakrabarti et al. 2021; Zaheer et al. 2023). The reason for a reduced number of positive correlations may be associated with a quick response and diminishing impact after the first fortnight, as reported by Boungou and Yatié (2022). However, specific key events may be related to an increase in the number of positive correlations. For instance, the number of positive correlations in the 11th subsample period was 2747, i.e., 90.81% ‘+ve’ and 9.19% ‘−ve’. This was when the Russian President ordered the first mobilization since World War II, which also triggered protest and evacuation from the country (more details in https://www.reuters.com/world/europe/russias-partial-mobilisation-will-see-300000-drafted-defence-minister-2022-09-21/ (accessed on 4 January 2024)). The number of positive correlations decreased slightly in the 12th subsample period to 2667, i.e., 88.17% ‘+ve’ and 11.83% ‘−ve’. After that, it remained higher than 78% with a mixed trend in the rest of the period, with the highest at 2703, i.e., 89.36% ‘+ve’ and 10.64% ‘−ve’ in the 20th subsample period. At this time, the EU adopted the 11th package of sanctions, and Switzerland implemented a new round of sanctions in conformity with the European package (more details in https://www.consilium.europa.eu/en/press/press-releases/2023/06/23/russia-s-war-of-aggression-against-ukraine-eu-adopts-11th-package-of-economic-and-individual-sanctions/ (accessed on 4 January 2024) and in https://www.admin.ch/gov/en/start/documentation/media-releases.msg-id-96175.html (accessed on 4 January 2024), respectively).
Before the start of the war crisis, the highest number of positive correlations was seen for developed countries’ stock markets (1079 out of 1210, i.e., 89.17% ‘+ve’ and 10.83% ‘−ve’) and the lowest for frontier countries’ stock markets (391 out of 605, i.e., 64.63% ‘+ve’ and 35.37% ‘−ve’), which means that developed countries are the most connected and the frontier markets are least connected. This is because of strong economic and political ties among developed countries, with the same tendency of connectivity between stock markets during crises, also reported by Aslam et al. (2020) and (Chakrabarti et al. 2021). The maximum number of positive correlations for any subsample period is 1146 for developed, 1128 for emerging, and 495 for frontier markets. This shows that frontier markets are less linked with other markets. Berger et al. (2011) also identified such low-level interconnectedness of frontier markets with emerging and developed markets, with comparatively better connectivity between developed and emerging stock markets. The possible reason for this better linkage is developed and emerging markets’ needs to feed and develop their markets (Zaheer et al. 2023).
Significant coefficients of correlation (−0.5 >  ρ ^ i , j  > 0.5) with the escalation of the Russia–Ukraine war remained between a maximum of 1653 ‘+ve’ and 118 ‘−ve’ and a minimum of 693 ‘+ve’ and 0 ‘−ve’. In the first subsample period, the number of significant positive coefficients of correlation was 755 out of 3025, constituting 25% of the entire sample, whereas negative 10 out of 3025 represented less than 1%. This means that more stock market movements are observed in the same direction than in the opposite direction. This number of significant positive correlations remained in the range of 23% to 55% during the period under analysis. On the other hand, significant negative correlations remained lowest at 0% and did not increase more than 1%. This shows that global stock markets are highly interconnected, and this interconnectedness further increases during a crisis.
An average of 257 directional changes in the coefficient of correlation occurred from the first subsample period to the 22nd, with a maximum of 482 occurring from the fifth to the sixth subsample period when the first five packages of sanctions from the EU were imposed on Russia. More directional changes were observed from emerging and frontier markets than developed markets with respect to their proportion in the sample. This finding conforms with Aslam et al. (2020), who reported most directional changes for frontier markets and least for developed ones. Similarly, (Chakrabarti et al. 2021) found that Eurozone markets remained highly correlated before and during a period of the pandemic. This implies that more changes occurred due to the war crisis for emerging and frontier markets than developed ones. A possible explanation for this is the mimicking behavior adopted by emerging and frontier markets during periods of crisis to mitigate impact.
Distance matrices based on long-range correlation were used to construct 22 MSTs for each subsample period by using Equation (6). The communities in each MST of stock markets represent sub-groups of stock markets having more tied connectivity than other parts of MST. In Figure 1a,b, communities are identified using the Louvain algorithm proposed by Blondel et al. (2008) for each subsample period with escalation of war. Different colors were used to show membership for each community for comprehension purposes.
Codes of letters (alpha-3) to refer to a country are used as per ISO 3166-1:2020 (International Organization for Standardization 2020). A list of countries and their alpha-3 codes is provided in the 12th window of Figure 1b. The Morgan Stanley Capital International (MSCI) classification categorizes countries’ equity market indices based on economic progress, market accessibility, economy size, and liquidity requirements (classification details are available at https://www.msci.com/market-classification (accessed on 4 January 2024)). These variables make a significant contribution to changes in the community structures (Aslam et al. 2020; Zaheer et al. 2023).
(a)
Period I: the network exhibits eight communities. The highest degree nodes within communities are in the United States, Austria, Canada, Germany, Italy, Singapore, Peru, and Argentina;
(b)
Period II: the network has nine distinct communities. The highest degree nodes within communities are in the United States, Austria, Switzerland, Germany, Sweden, France, Peru, Spain, and Singapore;
(c)
Period III: the network at this stage demonstrates eight communities. The highest degree nodes in communities are in South Korea, Austria, Italy, Switzerland, Germany, Thailand, Portugal, and Russia;
(d)
Period IV: in this stage of the crisis network, there are eight communities. The highest degree nodes are in Australia, Austria, France, Germany, Japan, Singapore, Mexico, and Poland;
(e)
Period V: the network at this stage consists of nine communities. The highest degree nodes in respective communities are in Australia, Hungary, Finland, Canada, France, Germany, Hong Kong, China, and Greece;
(f)
Period VI: the network exhibits eight communities. The maximum degree nodes in each community are in Norway, Austria, Sweden, Switzerland, Finland, South Africa, Mexico, and Greece;
(g)
Period VII: configuration of network based on eight communities. The highest degree nodes in communities are in Canada, Austria, Norway, Ireland, the Netherlands, Croatia, Brazil, and Colombia;
(h)
Period VIII: at this stage, the network has eight communities. The highest degree nodes in respective communities are in South Korea, Austria, France, Canada, Denmark, Finland, the Netherlands, and Switzerland;
(i)
Period IX: the network now consists of nine communities. The highest degree nodes are in Australia, Finland, Norway, the Netherlands, France, South Korea, Singapore, India, and Colombia;
(j)
Period X: at this stage, nine communities can be observed in the network. The highest degree nodes are in Japan, Finland, Canada, the Netherlands, France, Ireland, Norway, India, and South Korea;
(k)
Period XI: the network demonstrates nine communities at this stage. The highest degree nodes are in France, Germany, Canada, Sweden, Ireland, the United Kingdom, New Zealand, Chile, and Indonesia;
(l)
Period XII: the networks have eight communities. The highest number of degree nodes are in France, Austria, Belgium, Portugal, Ireland, Germany, New Zealand, and India;
(m)
Period XIII: the configuration of networks based on nine communities. The maximum number of degrees in nodes is in France, Austria, Sweden, Portugal, Germany, the Netherlands, Ireland, Italy, and Spain;
(n)
Period XIV: at this stage, the network has eight communities. The highest degree nodes are in Australia, Italy, Ireland, the Netherlands, Germany, Hong Kong, Spain, and Portugal;
(o)
Period XV: at this stage, the network has eight communities. The highest degree nodes are in Australia, Germany, Belgium, Canada, Colombia, Hong Kong, Ireland, and the Netherlands;
(p)
Period XVI: at this stage, the network has nine communities. The highest degree nodes are in Australia, the United Kingdom, Spain, Canada, Norway, France, South Africa, Argentina, and South Korea;
(q)
Period XVII: at this stage, the network has eight communities. The highest degree nodes are in Australia, Austria, Portugal, Canada, Malaysia, Germany, Mexico, and Argentina;
(r)
Period XVIII: at this stage, the network has nine communities. The highest degree nodes are in Canada, Austria, Belgium, Denmark, Spain, France, South Africa, the Netherlands, and Vietnam;
(s)
Period XIX: at this stage, the network has seven communities. The highest degree nodes are in Austria, Australia, Canada, Germany, Vietnam, South Africa, and Colombia;
(t)
Period XX: at this stage, the network has nine communities. The highest degree nodes are in Australia, Spain, the United Kingdom, Germany, France, Colombia, South Africa, South Korea, and Pakistan;
(u)
Period XXI: at this stage, the network has nine communities. The highest degree nodes are in France, Austria, the United Kingdom, Canada, Hong Kong, the Netherlands, South Africa, Kenya, and Morocco;
(v)
Period XXII: at this stage, the network has seven communities. The highest degree nodes are France, Canada, the United Kingdom, Greece, the Netherlands, South Africa and Kenya.
The synopsis of all 22 windows of Figure 1a,b is provided in the 11th window of Figure 1b to avoid confusion and clearly show the position of the node within the community. The rationale, support, and comparison of the above results are provided in this paragraph. In this summary (Figure 1b (11th window)), the size of the node is proportionate to the number of times a country appeared most connected in a community. The color of the node represents the category according to MSCI stock market classification. The developed markets are represented in purple, the emerging markets in orange, and the frontier markets in green, which shows that most of the time, highly connected nodes are Germany, France, Austria, and Canada. The United States showed lesser connectedness with other countries during the crisis despite its strongest correlation in indices of economic policy uncertainty with most countries (Alkan et al. 2023). The fact that the United States did not remain a leading node before and during the crisis was also observed by Aslam et al. (2020). Most of the highly connected countries belong to Europe; as predicted at the start of this war, its fatal effects would be highly polarized for the European region (Tank and Ospanova 2022) because of Europe’s higher dependence on gas and oil imports from Russia and its one-fifth of total foreign value added also coming from Russia (Kersan-Škabić 2023). This is also consistent with the findings reported by Liadze et al. (2023). Another possible reason for these high linkages could be their political and economic ties (Zaheer et al. 2023).
Table 3 provides a synopsis of variations in MST topological features like mean closeness and betweenness centrality with the escalation of the Russia–Ukraine war. There is a considerable variation in the topological features of the MSTs. During this study, the mean betweenness centrality varied less. It demonstrated a little shift in the center node’s prominence during the investigation period. This center node, however, was altered many times over the investigation period. Such changes would be impossible to identify using static network analysis with two comparison points before and during the war crisis. Each topological feature’s temporal dynamicity is presented further in the following paragraphs.
Period-wise, the observed degrees, closeness centrality, and betweenness centrality are provided in Figure 2 and Figure 3, respectively.
Figure 2 contrasts the number of connections between nodes. Over time, the highest degree node was Austria, Germany, Russia, Austria, Canada, Finland, Canada, the Netherlands, France, Austria, Germany, Hong Kong, Germany, Hong Kong, Germany, and Spain. Most of the time, Germany (six times) and France (four times) were the highest degree nodes. The largest degree fluctuation was recorded for France, and the lesser variation in degree was detected for Nigeria with war development. During turbulence, the number of nodes of degree 1 remained at a minimum of 38.18% and a maximum of 50.09% of the entire sample, suggesting star-like clusters. The exact behavior of stock market networks was also identified by Han (2019) during another crisis.
Figure 3 depicts the distance between nodes. The greater betweenness centrality of a node shows that it can influence other nodes in the network. The network’s center node concerning other nodes shifted from Italy to Germany, Austria, Croatia, Switzerland, the United Kingdom, France, Canada, and Ireland. Most of the time during the Russia–Ukraine war, France (seven times) and Germany (six times) stayed in the center of MST. This means France and Germany ruled virtually all the time in this index and, hence, remained the most influential. This is because Germany and France were affected most by this war. This fact is also concluded by Liadze et al. (2023). The most isolated stock market was Australia, followed by Belgium, Denmark, Canada, Finland, New Zealand, and Ireland. The variance in betweenness centrality is most significant for Ireland and lowest for Nigeria. During the analysis period, the number of zeros for betweenness centrality grew, and betweenness centrality for individual nodes fell; nevertheless, the average betweenness centrality did not change significantly. Han (2019) documented the exact behavior of nodes in the network and argued that it occurred because node clusters were near dominating nodes during the turbulence phase.
Figure 4 depicts the sum of the reciprocal of the smallest route from a node to other nodes, with results indicating the following changes: from Italy to Germany, Austria, Croatia, Switzerland, United Kingdom, France, Norway, and Ireland. Before and during the war crisis, Germany (seven times) and France (six times) remained in the center of MST for most of the time. Changes also occurred in the most distant financial markets, which ranged from Vietnam to Kazakhstan, Serbia, Malaysia, Tunisia, Chile, Russia, China, Morocco, Indonesia, Brazil, Slovenia, and Denmark. Italy displayed the most centrality shifts, while Serbia experienced the least. During the war crisis, the value of closeness centrality grew because nodes moved closer to one another at such times (Han 2019).
The nodes/edges that were vulnerable changed the most; on the other hand, fewer changes represented the stability of nodes and edges. The most sensitive and stable nodes and linkages during the Russia–Ukraine war escalation were determined using Equation (9). Figure 5 is used as a reference network for MST synchronization purposes.
Figure 6a,b shows changes in the stock markets’ network with the escalation of the war, according to the chronology presented in Table 1.
In Figure 6, nodes with the highest variations are shown in red, and nodes with no changes are shown in white. Network linkages due to the minimum cost of the spanning tree are also changed; highly vulnerable linkages are shown in red, and grey is used for stable linkages. Network rewiring occurred due to a change in the minimum cost of connectivity of the network with war development. The topological structure changes are non-trivial and difficult to observe through visualizations. For this purpose, a reference network shown in Figure 5 is used for country nodes’ static location, and rewiring between them occurs with the escalation of the war.
Several changes occurred during the war in stock markets and co-movements of markets like Canada, France, Italy, and Austria.
These nodes are identified as the most vulnerable ones compared to China, Kazakhstan, and Czechia; there were few or no changes for Nigeria, which exhibited stable behavior among all nodes. The possible explanation for the stable behavior of this node can be associated with the Nigerian stock market’s low level of integration with the rest of the world, despite its anchoring position in West African stock markets, as reported by Emenike (2021). The same conclusion about the linkage between Nigerian and developed stock markets was also documented by Oluseun Olayungbo et al. (2023), who concluded on the availability of diversification and hedging opportunities. The co-movement of other stock markets changed within these two extremes. The vulnerability of nodes from the European region, specifically France and Italy, shows that these countries were affected the most by the war. This fact is also concluded by Liadze et al. (2023). Overall, during uncertain times, the financial networks become vulnerable due to low investor confidence, market instability, disruption of trade and supply chains, sanctions, fear of sanctions and economic disruptions, and investor sentiment and expectations (Aslam and Kang 2015; Aslam et al. 2020; Chakrabarti et al. 2021; Lai et al. 2023; Lai and Hu 2021; Zaheer et al. 2023).

5. Conclusions

In this study, the reaction of the network of global stock markets has been analyzed with the escalation of the Russia–Ukraine war. To attain this objective, 55 indices pertaining to different countries were employed to construct 22 financial networks, which were filtered using the Prim algorithm of an MST. These 22 financial networks were built using a 100-day rolling window rolled forward month’s trading days to capture temporal changes. These changes were related to their linking pattern with minimum weight, MST community structure, non-trivial topological properties, and rewiring of MSTs. The changes were analyzed to understand these financial networks and their evolution process. The node/edge level stability and frugality were studied through a network rewiring approach. It is concluded from the results, analysis, and discussion that the Russia–Ukraine war impacted the network of global stock markets. The level of impact varied in intensity with changes in the region and the passage of time due to the level of stock market integration and the Russia–Ukraine war stage of escalation, respectively.
During the Russia–Ukraine war, the global stock markets under analysis remained highly correlated, with those linkages during crises also reported by Chakrabarti et al. (2021). The number of positive correlations ranged between 70% and 90% of the total possible relationships. The Russia–Ukraine war led to increased volatility (Izzeldin et al. 2023), even surpassing the level observed during the pandemic (Wang et al. 2022). The high volatility between the markets could be directly related to strong correlations between those markets (Junior and Franca 2012). The highest number of positive correlations was observed for developed markets and the lowest for frontier markets, which was consistent with the findings of Berger et al. (2011). The number of significant correlations remained between 23% and 55%. Interestingly, the number of significant negative correlations was zero for the 11th, 19th, and 20th subsample periods. The 19th subsample period was when G7 leaders met and decided to “increase the costs to Russia and those supporting its war efforts”, and the G7 and EU announced the use of assets that were frozen since the first package of sanctions to rebuild Ukraine (see https://www.whitehouse.gov/briefing-room/statements-releases/2023/05/19/g7-leaders-statement-on-ukraine/ (accessed on 4 January 2024)). This also shows strong integration among global stock markets during the analysis period.
Most directional changes occurred for emerging and frontier markets and less so for developed during periods of crises. This result shows that global stock markets are highly interconnected, and this interconnectedness further increased during the crisis.
The pre- and post-analyses are insufficient to capture the changes during crisis periods, as suggested by Chakrabarti et al. (2021) and Zhang et al. (2020). For this purpose, 22 MSTs were constructed, and changes in the community structure of these financial networks were analyzed. Since it is likely that a node with a prominent role in the network in the pre-crisis period has changed its position several times from core node to periphery and/or inversely in crises and then again became central in the post-crisis period, it may be overlooked. During the analysis period, the number of communities and their membership changed with the escalation of the Russia–Ukraine war. Most of the time, France, Germany, Canada, and Austria remained the most connected nodes within the community. Surprisingly, the United States is not included in this list. This is because of Europe’s high dependency on Russia and Ukraine due to its energy and food needs. Liadze et al. (2023) reported more effects of this war on Europe.
The changes in non-trivial topological properties were also analyzed, and the number of nodes with degree 1 increased, showing a star-like structure. The exact behavior of stock market networks was also identified by Han (2019) during another crisis. The number of zeros for betweenness centrality increased, which was documented by Han (2019) as the exact behavior of nodes in the network, suggesting nodes clustering near dominating nodes, and nodes were observed to move closer to each other. France and Germany remained the most influential and central nodes. These two countries may be affected most by the Russia–Ukraine war, which goes against the conclusion drawn by Liadze et al. (2023).
France, Italy, Canada, and Austria were the most vulnerable nodes, whereas Nigeria showed the most stable behavior. The stable behavior of this node may be associated with the Nigerian market’s low level of integration with the rest of the world despite its anchoring position in West African stock markets, as reported by Emenike (2021). The same conclusion about the linkage between Nigerian and developed stock markets was also documented by Oluseun Olayungbo et al. (2023), who concluded on the availability of diversification and hedging opportunities. This also refers to more effects of this war on Europe than any other region.
This study will aid different market agents in formulating their strategies. For instance, it will be helpful in the identification of international portfolio diversification opportunities for international institutional and non-institutional investors. It will assist international investors, portfolio managers, regulators, and policymakers in designing portfolio management strategies, optimum intervention courses, and policies to mitigate crisis implications. It may work as a barometer for regulators in deciding the appropriate course of intervention during the trajectory of the crisis period. This will be particularly helpful in designing an early alarming system, and an active intervention option will be available to regulators with such analysis. It will help policymakers to identify stock markets with a dominant or passive role in the future and recommend policy changes accordingly. Furthermore, network rewiring analysis will point out more vulnerable or stable nodes and connections during the crisis. It will be helpful for policymakers in formulating future policies. Hence, the findings of this study will be equally valuable for decision-makers in developing such policies during the crisis that can lessen its effect and decide the future course of action.
An important focus for future research could be the inner dynamics and features that strengthen or weaken the interplay between Russian and European stock markets. Furthermore, a comparison between the economic and network vulnerability during the Russia–Ukraine war may be an interesting area of research.

Author Contributions

Conceptualization, F.A. and K.Z.; data curation, K.Z. and F.A.; formal analysis, K.Z. and F.A.; writing—original draft, K.Z., Y.T.M. and F.A.; writing—review and editing, P.F. and F.A. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Fundação para a Ciência e a Tecnologia, grant number UIDB/05064/2020.

Informed Consent Statement

Not applicable.

Data Availability Statement

The raw data supporting the conclusions of this article will be made available by the authors on request.

Conflicts of Interest

The authors declare no conflicts of interest.

Appendix A

Table A1. List of countries and respective stock indices.
Table A1. List of countries and respective stock indices.
S No.CountryIndex NameS No.CountryIndex Name
1AustraliaS&P/ASX 20029GreeceAthens General Composites
2AustriaATX30HungaryBudapest SE
3BelgiumBEL 2031IndiaBSE SENSEX
4CanadaS&P/TSK32IndonesiaIDX Composite
5DenmarkOMXC 2033MalaysiaKLCI
6FinlandOMX Helsinki 2534MexicoS&P/BMV IPC
7FranceCAC 4035PakistanKSE-100
8GermanyDAX36PeruS&P Lima General
9Hong KongFTSE China 5037PhilippinesPSEi Composite
10IrelandISEQ All Share38PolandWIG20
11ItalyFTSE MIB39RussiaMOEX
12JapanNikkei 22540South AfricaSouth Africa Top 40
13The NetherlandsAEX41South KoreaKOPSI
14New ZealandNZX 5042TaiwanTaiwan Weighted
15NorwayOSE Benchmark43ThailandSET
16PortugalPSI 2044TurkeyBIST-100
17SingaporeSTI Index45CroatiaCROBEX
18SpainIBEX 3546KazakhstanKASE
19SwedenOMXS 3047KenyaKenya NSE 20
20SwitzerlandSMI48MauritiusSemdex
21The United KingdomFTSE 10049MoroccoMoroccan All Share
22The United StatesDOW3050NigeriaNSE 30
23ArgentinaS&P Merval51RomaniaBET
24BrazilBovespa52SerbiaBelex 15
25ChileS&P CLX IPSA53SloveniaBlue Chip SBITOP
26ChinaShanghai Composite54TunisiaTunindex
27ColombiaCOLAP55VietnamHNX 30
28CzechiaPX
Note: The first 22 countries from serial 1–22 are developed countries; the next 22 from serial 23–44 are emerging countries, and the next 11 from serial 45–55 are frontier countries, in accordance with Morgan Stanley Capital International (MSCI) classification.

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Figure 1. (a) Changes in the MST community structure with the escalation of the Russia–Ukraine war from period I to period XII (al). Each MST represents the network’s community structure as the Russia–Ukraine war escalated chronologically, as per Table 1. (b) Changes in the MST community structure with the escalation of the Russia–Ukraine War from period XIII to period XXII (mv). Each MST represents the network’s community structure as the Russia–Ukraine war escalated chronologically, as per Table 1, along with a list of countries and their alpha-3 codes per ISO 3166.
Figure 1. (a) Changes in the MST community structure with the escalation of the Russia–Ukraine war from period I to period XII (al). Each MST represents the network’s community structure as the Russia–Ukraine war escalated chronologically, as per Table 1. (b) Changes in the MST community structure with the escalation of the Russia–Ukraine War from period XIII to period XXII (mv). Each MST represents the network’s community structure as the Russia–Ukraine war escalated chronologically, as per Table 1, along with a list of countries and their alpha-3 codes per ISO 3166.
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Figure 2. Change in nodes’ degrees for each country with the escalation of Russia–Ukraine war from 23 December 2021 to 23 September 2023.
Figure 2. Change in nodes’ degrees for each country with the escalation of Russia–Ukraine war from 23 December 2021 to 23 September 2023.
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Figure 3. Changes in betweenness centrality for each country with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
Figure 3. Changes in betweenness centrality for each country with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
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Figure 4. Change in closeness centrality for each country with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
Figure 4. Change in closeness centrality for each country with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
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Figure 5. Reference network for observing changes in financial markets’ MST network with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
Figure 5. Reference network for observing changes in financial markets’ MST network with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
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Figure 6. (a) Changes in financial markets’ MST network with the escalation of the Russia–Ukraine war from period I to period XII (al). (b) Changes in financial markets’ MST network with the escalation of the Russia–Ukraine war from period XIII to period XXII (mv).
Figure 6. (a) Changes in financial markets’ MST network with the escalation of the Russia–Ukraine war from period I to period XII (al). (b) Changes in financial markets’ MST network with the escalation of the Russia–Ukraine war from period XIII to period XXII (mv).
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Table 1. Discrete periods and corresponding dates.
Table 1. Discrete periods and corresponding dates.
S No.DateSubsample Period
a23 December 2021From 6 August 2021 to 23 December 2021
b23 January 2022From 1 September 2021 to 23 January 2022
c23 February 2022From 1 October 2021 to 23 February 2022
d23 March 2022From 29 October 2021 to 23 March 2022
e23 April 2022From 26 November 2021 to 23 April 2022
f23 May 2022From 23 December 2021 to 23 May 2022
g23 June 2022From 28 January 2022, to 23 June 2022
h23 July 2022From 1 March 2022 to 23 July 2022
i23 August 2022From 30 March 2022 to 23 August 2022
j23 September 2022From 6 May 2022 to 23 September 2022
k23 October 2022From 2 June 2022 to 23 October 2022
l23 November 2022From 5 July 2022 to 23 November 2022
m23 December 2022From 4 August 2022 to 23 December 2022
n23 January 2023From 1 September 2022 to 23 January 2023
o23 February 2023From 4 October 2022 to 23 February 2023
p23 March 2023From 2 November 2022 to 23 March 2023
q23 April 2023From 29 November 2022 to 23 April 2023
r23 May 2023From 29 December 2022 to 23 May 2023
s23 June 2023From 1 February 2023 to 23 June 2023
t23 July 2023From 28 February 2022 to 23 July 2023
u23 August 2023From 31 March 2023 to 23 August 2023
v23 September 2023From 5 May 2023 to 23 September 2023
Table 2. List of positive correlations with other countries.
Table 2. List of positive correlations with other countries.
S #CountryDiscrete Period Numbers
abcdefghijklmnopqrstuv
1Australia50515155395350545453525352534950515153524652
2Austria51514648354948515251535051534752545253535051
3Belgium52494944395053515050535052524851535251535051
4Canada48514946345249535453535451525051515050534953
5Denmark48431948354549515048485052524247474848494641
6Finland50454944364850515252535251524750535253524952
7France50453250404953515252525351514851535153524749
8Germany49504248374853514953525150504850525252514755
9Hong Kong48414649373045514346273449484842474951514951
10Ireland50464947344754515153545252524850525151504753
11Italy49525050524953545252525150504651525153535054
12Japan46474954524449515153545352534848505253514649
13The Netherlands47515151495250525149515148505049525053535051
14New Zealand47412747415247525151555453534749505147534750
15Norway50513748344850525351525252524446495053534748
16Portugal50494752475151534849515152535050525253524850
17Singapore49504753384954515351545352494846525052524952
18Spain51484948365053514950535252535051545253534749
19Sweden48464748395051525053514850514748525352534952
20Switzerland48442249445051535049515251514850525051514749
21The United Kingdom48505053515351525148525252525054525253534748
22The United States50515253525148525251515151514948515251534953
23Argentina51374529334849504945515053534752515452522829
24Brazil48494337324548525350515247441717495052494849
25Chile47464949464950515151545353523843424849515053
26China41401636303046523741454749524646494950494846
27Colombia22343945284346515052515248514750515150514952
28Czechia43464749354752514850494948504447515149535043
29Greece49484845334551525050515152524047484850525147
30Hungary29414541364227524248494947514847484950512447
31India50514850515051515252545251504446525152554648
32Indonesia48405036414649515141514849492835323949504533
33Malaysia50474850364346525454535453534948505152534946
34Mexico49515149344952525249515151514844475051514845
35Pakistan38294545354626454041484847433843383710143338
36Peru47424847334849535351494647484649504851534951
37Philippines48435135373949525253535454534748495045444446
38Poland51514751515153525349514749504850525152524955
39Russia48474553534647294042515155524844404243434741
40South Africa44464848325149535153534749504850525153534952
41South Korea46504747353949525352545150534745495051514950
42Taiwan42475152425050525154545253504947474752525150
43Thailand52484954515250525352535153514648485149514851
44Turkey20351241374453524635525251474238333547453734
45Croatia46474450404249535051535153531843485252523828
46Kazakhstan46284838425032514845534229371025475046494438
47Kenya27213943253544454850535045454249504952513740
48Mauritius4849385053395251282940171592114342036461330
49Morocco4136444233415253495054494825916121330414442
50Nigeria37174419249189522233446463845151540371242
51Romania52504943334636505149535252504538434850534936
52Serbia2530383527253724353542281944193730235103249
53Slovenia50484552425052525351515250514241474951505049
54Tunisia1938384233461372513191916165139434247471337
55Vietnam14272225313540515251544741392532434646461749
Table 3. Change in networks’ topological properties with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
Table 3. Change in networks’ topological properties with the escalation of the Russia–Ukraine war from 23 December 2021 to 23 September 2023.
NetworkBetweenness CentralityCloseness Centrality
(a)0.0830.195
(b)0.0860.187
(c)0.1270.135
(d)0.1080.155
(e)0.1230.137
(f)0.1170.142
(g)0.1120.149
(h)0.0960.170
(i)0.0970.170
(j)0.0890.183
(k)0.0860.188
(l)0.0960.171
(m)0.1050.158
(n)0.0890.183
(o)0.1020.165
(p)0.1030.161
(q)0.1230.138
(r)0.0860.189
(s)0.0980.169
(t)0.0950.173
(u)0.0990.167
(v)0.1130.149
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Zaheer, K.; Aslam, F.; Mohmand, Y.T.; Ferreira, P. On the Dynamic Changes in the Global Stock Markets’ Network during the Russia–Ukraine War. Economies 2024, 12, 41. https://doi.org/10.3390/economies12020041

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Zaheer K, Aslam F, Mohmand YT, Ferreira P. On the Dynamic Changes in the Global Stock Markets’ Network during the Russia–Ukraine War. Economies. 2024; 12(2):41. https://doi.org/10.3390/economies12020041

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Zaheer, Kashif, Faheem Aslam, Yasir Tariq Mohmand, and Paulo Ferreira. 2024. "On the Dynamic Changes in the Global Stock Markets’ Network during the Russia–Ukraine War" Economies 12, no. 2: 41. https://doi.org/10.3390/economies12020041

APA Style

Zaheer, K., Aslam, F., Mohmand, Y. T., & Ferreira, P. (2024). On the Dynamic Changes in the Global Stock Markets’ Network during the Russia–Ukraine War. Economies, 12(2), 41. https://doi.org/10.3390/economies12020041

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