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Periods, Daily Average Returns and Standard Deviations of rts

Periods, Daily Average Returns and Standard Deviations of rts

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The goal of the this paper is to investigate the shock spillover characteristics of the Russian stock market during different rounds of sanctions imposed as a reaction to Russia’s alleged role in the Ukrainian crisis. We consider six stock markets, represented by their respective stock indices, namely the US (DJIA), the UK (FTSE), the euro area (Eu...

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... goal of the sanctions was to impose costs on the Russian economy. For our purposes, this leads to the partitioning of the time period under consideration shown in Table 1. 50 It should be emphasized that this partitioning is a priori in the sense that network properties (reported and analyzed in Sections 5, 6 and 7) are not used in defining sub-periods. ...
Context 2
... focus in this study is on the years 2014 and 2015. Table 1 gives daily average returns and standard deviations of rts in each period. The series of daily simple returns in percent are plotted in Figure 2. It appears that the series are "somehow connected", and the goal of the present paper is to make the connectedness dynamics during the time of sanctions explicit. ...

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... İncelenen konular; hisse senedi, döviz piyasalarının bağlanmışlığından (Diebold ve Yılmaz 2015), ülkelerin reel ve finans kesimleri arasındaki bağlanmışlığa kadar çok çeşitlidir (Uluceviz ve Yılmaz, 2020;2021). Bu çalışmada; avro/USD doları 3 döviz çiftinin yanı sıra gelişmekte olan Avrupa (Orta, Doğu ve Güneydoğu Avrupa) ülkelerinden Avrupa Birliği (AB) üyesi olan Polonya, Çekya, Macaristan, Romanya, Bulgaristan ile AB üyesi olmayan Türkiye ve Rusya'nın para birimleri ile USD arasında oluşturulan döviz çiftlerinin (USD temel para birimi olacak şekilde) oynaklık bağlanmışlığı ve şok yayma kapasitelerini gösteren yayılma değerleri (Schmidbauer v.d., 2013;2016; 2006-2024 yılları arasında günlük frekansta incelenmiştir. 4 İktisat yazınında yalnızca Orta ve Doğu Avrupa ülke para birimleri ile Diebold-Yılmaz yöntemi kullanılan az sayıda benzer çalışma (örneğin Kocenda ve Moravcova, 2019;Albrecht ve Kocenda, 2023;Bubak v.d., 2011) bulunmakla birlikte mevcut çalışmadaki sayıda ülke veya para biriminin seçildiği ve yayılma değerlerinin incelendiği bir çalışmaya rastlanmamıştır. Analiz sonucunda; oluşturulan ağda avro (EUR) en güçlü bağlanmışlık yayıcısı olarak öne çıkmıştır. ...
... Bu bölüm, Diebold-Yılmaz Bağlanmışlık Endeksi yönteminin ve uzantılarının bu çalışmada kullanıldığı biçimiyle kısa bir özetini sunmaktadır (Diebold ve Yılmaz, 2009;2012;2014). Ayrıca, yöntemin geliştirildiği alanlardan birinin çalışmadaki uygulamasına dair kısa bir özet de içermektedir (Schmidbauer vd., 2013;2016;. ...
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Bu çalışma, Avro ve gelişmekte olan yedi Doğu, Orta ve Güneydoğu Avrupa ülkesi para birimleri arasındaki oynaklık bağlanmışlığını Diebold-Yılmaz bağlanmışlık endeksi çerçevesinde incelemektedir. 2006-2024 arasında günlük veri kullanılarak yapılan analiz sonucunda avronun diğer yedi para birimine doğru güçlü bir bağlanmışlık kaynağı olduğu bulunmuştur. Gelişen ekonomileri ile paralel olarak Polonya zlotisi ve Çek korunası avroyu takip eden diğer önemli bağlanmışlık kaynaklarındandır. Türkiye ve Rusya, Avrupa Birliği üyesi olmasalar da, büyük yerel şoklardan etkilendikleri dönemlerde Türk lirası ve Rus rublesi kanalıyla bağlanmışlık kaynakları olarak davranır. Macar forinti, Romen leyi ve Bulgar levası görece düşük bağlanmışlık etkilerine sahiptir. İncelenen para birimlerinin şok yayma kapasiteleri de benzer sıralamayı izler. Çek korunası, görece güçlü bir şok yayıcısı olmasının yanı sıra şok yayma değerleri en düşük standart sapma değerine sahip para birimidir.
... This paper focuses on BIST as the primary subject of investigation, analyzing the volatility connectedness among a chosen set of its subindicesspecifically, banks, industrials, and services-utilizing a standard DYCI approach and its extensions as detailed in Schmidbauer et al. (2013Schmidbauer et al. ( , 2016Schmidbauer et al. ( , 2017. Our threevariable model is parsimonious enough, and in line with earlier literature, important subindices are selected so that possible indirect spillover effects between multiple subindices are excluded by design. ...
... As an extension, we analyse propagation values as computed in Schmidbauer et al. (2013Schmidbauer et al. ( , 2016Schmidbauer et al. ( , 2017. Propagation values serve as metrics for assessing the significance of nodes in a network as shock propagators, essentially quantifying the eigenvector centrality of network nodes (For additional perspectives on centrality measures within the network literature, refer to, for instance, Newman, 2010.) ...
... In this section, we provide a brief introduction to DYCI methodology, which was developed in Diebold and Yılmaz (2009, 2012, 2014, and its extension by Schmidbauer et al. (2013Schmidbauer et al. ( , 2016Schmidbauer et al. ( , 2017. To save space, we present only the equations pertinent to our empirical analysis (for a more comprehensive understanding, interested readers are encouraged to consult the referenced papers). ...
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This study examines the volatility connectedness among banks, industrials, and services subindices of Borsa Istanbul using the Diebold-Yılmaz connectedness index methodology. The findings indicate that the banks index typically acts as a net receiver of connectedness from industrials and services indices. If the banks index is considered a proxy for the financial side of the Turkish economy while the other two represent the real side, this result aligns with earlier observations on the connectedness between the real and financial sides of economies. Specifically, it suggests that when a proxy for the real side incorporates financial variables, the real side tends to be a net source of connectedness most of the time. As shock propagators, industrials play a dominant role, and the banks index often moves in the opposite direction to the other two sectors. Key Words: Real and Financial Sectors, Financial Connectedness, Volatility, Borsa Istanbul. JEL Classification: C32, E44, G10.
... The global economic crisis is the leading cause of the rise in oil prices, another main economic problem. [21] explained the different equity markets and found the interconnectedness of the US, UK, and EU markets that played a critical role in strengthening their respective currencies and exchange rates, distinguishing them from other economies. These three markets' interconnectedness and coordination have fostered their strong financial positions. ...
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The growing trend of interdependence between the international stock markets indicated the amalgamation of risk across borders that plays a significant role in portfolio diversification by selecting different assets from the financial markets and is also helpful for making extensive economic policy for the economies. By applying different methodologies, this study undertakes the volatility analysis of the emerging and OECD economies and analyzes the co-movement pattern between them. Moreover, with that motive, using the wavelet approach, we provide strong evidence of the short and long-run risk transfer over different time domains from Malaysia to its trading partners. Our findings show that during the Asian financial crisis (1997–98), Malaysia had short- and long-term relationships with China, Germany, Japan, Singapore, the UK, and Indonesia due to both high and low-frequency domains. Meanwhile, after the Global financial crisis (2008–09), it is being observed that Malaysia has long-term and short-term synchronization with emerging (China, India, Indonesia), OECD (Germany, France, USA, UK, Japan, Singapore) stock markets but Pakistan has the low level of co-movement with Malaysian stock market during the global financial crisis (2008–09). Moreover, it is being seen that Malaysia has short-term at both high and low-frequency co-movement with all the emerging and OECD economies except Japan, Singapore, and Indonesia during the COVID-19 period (2020–21). Japan, Singapore, and Indonesia have long-term synchronization relationships with the Malaysian stock market at high and low frequencies during COVID-19. While in a leading-lagging relationship, Malaysia’s stock market risk has both leading and lagging behavior with its trading partners’ stock market risk in the selected period; this behavior changes based on the different trade and investment flow factors. Moreover, DCC-GARCH findings shows that Malaysian market has both short term and long-term synchronization with trading partners except USA. Conspicuously, the integration pattern seems that the cooperation development between stock markets matters rather than the regional proximity in driving the cointegration. The study findings have significant implications for investors, governments, and policymakers around the globe.
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... Researchers have used various approaches to assess the impact of sanctions on Russian financial markets. Comparison of changes in and between financial variables in different periods before and after sanctions were imposed (Schmıdbauer et al. 2016;Tyll et al. 2018), use of a general index including all types of sanctions with different weights (Dreger et al. 2015;Kholodilin and Netšunajev 2019), and the incorporation of separate dummy variables for each sanction while researching the impact of a limited number of sanctions (Stone 2017). The application of the EGARCH model, the use of high-frequency daily data and the incorporation of economic, financial, and corporate sanctions as separate dummy variables in return and variance equations enable us to aptly assess the sanctions' impact on the returns and volatility of essential variables of Russian financial markets. ...
... Dreger et al. (2015), based on cointegrated vector autoregressive (VAR) models and daily data for the period from 1 January 2014 to 31 March 2015, claim that the depreciation of the ruble may be related to the decline of oil prices, while the sanctions affected only the conditional volatility of the exchange rate. Schmıdbauer et al. (2016), using a VAR model in daily returns for six representative stock markets (of the US, the UK, the EU, Japan, China, and Russia) from 3 March 1998 to 6 July 2015, argue that the sanctions reduced the importance of the Russian stock market as a propagator of return shocks but increased its significance as a propagator of volatility shocks in international financial markets. Applying a generalized autoregressive conditional heteroscedasticity (GARCH) model to data for the period between 1 January 2014 and 31 October 2014, Stone (2017) demonstrates that the flow of information on sanctions is associated with a decrease in the returns and an increase in the variance of Russian securities. ...
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... To enhance our understanding of Q2, using connectedness tables obtained from the real-financial networks we set up to answer Q1, we compute propagation values as in Schmidbauer et al. (2013); Schmidbauer et al. (2016); Schmidbauer et al. (2017). The approach we follow is simply to compute a certain network centrality measure, a normed left eigenvector, of the network matrices we estimated to answer Q1. ...
... The network structure of the spillover matrix with respect to the propagation of shocks lends itself to a broader perspective, as elaborated in Schmidbauer et al. (2013); Schmidbauer et al. (2016); Schmidbauer et al. (2017). Let C again denote the spillover matrix for month t. ...
... Page 13 of 20 Fig. 7 Net connectedness from the real sector to each financial market more volatility into the network owing to a prospective financial market intervention? As we have outlined in Section 1 and elsewhere, DYCI methodology permits tracing the network consequences of a shock that hit either the real or the financial side of the economy at time t and settle at t + h, see, e.g., Schmidbauer et al. (2016) and Section 2.1. Namely, it focuses on one-time spillovers through utilization of raw connectedness tables. ...
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... Researchers have used various approaches to assess the impact of sanctions on Russian financial markets. Comparison of changes in and between financial variables in different periods before and after sanctions were imposed (Schmıdbauer et al. 2016;Tyll et al. 2018), use of a general index including all types of sanctions with different weights (Dreger et al. 2015;Kholodilin and Netšunajev 2019), and the incorporation of separate dummy variables for each sanction while researching the impact of a limited number of sanctions (Stone 2017). The application of the EGARCH model, the use of high-frequency daily data and the incorporation of economic, financial, and corporate sanctions as separate dummy variables in return and variance equations enable us to aptly assess the sanctions' impact on the returns and volatility of essential variables of Russian financial markets. ...
... Dreger et al. (2015), based on cointegrated vector autoregressive (VAR) models and daily data for the period from 1 January 2014 to 31 March 2015, claim that the depreciation of the ruble may be related to the decline of oil prices, while the sanctions affected only the conditional volatility of the exchange rate. Schmıdbauer et al. (2016), using a VAR model in daily returns for six representative stock markets (of the US, the UK, the EU, Japan, China, and Russia) from 3 March 1998 to 6 July 2015, argue that the sanctions reduced the importance of the Russian stock market as a propagator of return shocks but increased its significance as a propagator of volatility shocks in international financial markets. Applying a generalized autoregressive conditional heteroscedasticity (GARCH) model to data for the period between 1 January 2014 and 31 October 2014, Stone (2017) demonstrates that the flow of information on sanctions is associated with a decrease in the returns and an increase in the variance of Russian securities. ...
Conference Paper
Full-text available
Russia’s international comportment and geostrategic moves, particularly the invasion of Ukraine and the annexation of Crimea in 2014, caused a substantial change in its international economic and political relations. In response to Russia’s invasion, the United States of America, the European Union, and their allies imposed a series of sanctions. In this study, by applying an exponential generalized autoregressive conditional heteroscedasticity model to daily logarithmic returns of the ruble exchange rate and the closing price index of the Russian Trading System, we analyze how the returns and volatility of the exchange rate and the stock price index responded to the sanctions and oil price changes. The estimation results show that the sanctions have a significant positive short-term impact on exchange rate returns. Economic sanctions have a significant negative long-term impact on the returns and variance of the exchange rate and a significant positive long-term impact on the returns of the stock price index. Financial sanctions have a positive/negative long-term impact on the returns of the exchange rate/stock price index and a positive long-term impact on the variance of the exchange rate and the stock price index. Corporate sanctions have a positive long-term impact on exchange rate returns.
... It was caused by large-scale Western sanctions against Russia in relation to the Ukraine Crisis in July 2014 and by a fall in oil prices. These external events rendered the Russian stock market and rouble more volatile and consequently less predictable (Obizhaeva, 2016;Schmidbauer, Rösch, Uluceviz, & Erkol, 2016). This recent intense difficulty for the Russian economy poses questions regarding the role of the internal drivers of economic prosperity during 2001-2014, with a particular focus on the contribution of human capital to such prosperity and the importance of skills development for Russian employees. ...
Thesis
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The acquisition and maintenance of human capital are considered key drivers of productivity and economic growth. However, recent literature shows that in the case of Russia, this relationship is not obvious, which raises a question concerning the nature of human capital accumulation, despite the significant expansion of tertiary education in this country. The existing literature, much of it relying on a theory of market imperfections, tends to explain low incidences of training by the lack of employer incentives to invest in the human capital of their employees. This dissertation adds to this view confirming the negative role of ‘bad’ jobs and social origins in obstructing employees from skills development in BRIC-like countries. Skills training in Russia is constrained by stratifying occupational forces comprising jobs with low requirements to skills development, which conserves the working population in generic labour. This reveals the phenomenon of skills polarisation ‘at the bottom’ in a late-industrial country, thus, contributing to the growing critique of the knowledge society theory. For those few workers who occupy ‘good’ jobs, skills training is strongly linked to personal-specific traits, such as qualifications and computer and language skills; and this is common in both Russia and India. However, in contrast to Russia, India is still forming their knowledge society. This is confirmed by the statistically significant impact of socio-demographic origins (e.g. age, household size, marital status, and religion) on the incidence of training, which reveals a crucial role of ascription in human capital acquisition in contemporary India. The present thesis contributes to the growing literature on structural prerequisites for successful advancement and the contradictory development of the BRIC countries. http://repository.essex.ac.uk/21789
... Based on such models, it can be shown that, on a given day, not all markets in a network are equally important with respect to network volatility creation via return shocks, or equivalently, with respect to information transmission: a shock in a ''central'' market may spark massive repercussions throughout the network, while a shock in an isolated market may go almost unnoticed. This concept is used in Schmidbauer et al. [31] to investigate the impact of sanctions during the Ukrainian crisis on the Russian stock market. In the present study, our focus is not on the assessment of singular events, but rather on investigating periodic patterns of importance in a network of stock markets: Are there cycles in the relative importance of a stock market as news (or shock) propagator? ...
... The present study is thus an effort to investigate frequency aspects with respect to information transmission, focusing on a network consisting of three western stock markets, each represented by a stock index: DJIA (US), FTSE 100 (UK) and Euro Stoxx 50 (proxy for the euro area). To that end, departing from the Diebold-Yilmaz [32][33][34] connectedness framework, and extensions detailed in Schmidbauer et al. [31,35], we undertake the following steps: ...
... • Compute propagation values, which measure the relative importance of an asset market as a news propagator within a network of asset markets (see Schmidbauer et al. [31]). Each market is represented by a stock index, and markets are connected together via a vector autoregressive model, as suggested by Diebold and Yilmaz [32][33][34]. ...
Article
Cycles in the behavior of stock markets have been widely documented. There is an increasing body of literature on whether stock markets anticipate business cycles or its turning points. Several recent studies assert that financial integration impacts positively on business cycle comovements of economies. We consider three western equity markets, represented by their respective stock indices: DJIA (USA), FTSE 100 (UK), and Euro Stoxx 50 (euro area). Connecting these three markets together via vector autoregressive processes in index returns, we construct “propagation values” to measure and trace, on a daily basis, the relative importance of a market as a volatility creator within the network, where volatility is due to a return shock in a market. A cross-wavelet analysis reveals the joint frequency structure of pairs of the propagation value series, in particular whether or not two series tend to move in the same direction at a given frequency. Our main findings are: (i) From 2001 onwards, the daily propagation values of markets have been fluctuating much less than before, and high frequencies have become less pronounced; (ii) the European markets are in phase at business cycle frequency, while the US market is not in phase with either European market; (iii) in 2008, the euro area has taken over the leading role. This approach not only provides new insight into the time-dependent interplay of equity markets, but it can also replicate certain findings of traditional business cycle research, and it has the advantage of using only readily available stock market data.