Are Indian markets insulated from the impact of cryptocurrencies? Unveiling the volatility linkages through multi-index dynamic multivariate GARCH analysis

IF 0.8 Q3 ECONOMICS
Economic Notes Pub Date : 2024-09-03 DOI:10.1111/ecno.12246
Robin Thomas
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引用次数: 0

Abstract

This paper investigates the dynamic relationships between the volatility of Bitcoin and major Indian stock market indices. Employing a dynamic conditional correlation–generalized autoregressive conditional heteroskedasticity (DCC-GARCH) model, we explore how volatility shocks and information flow influence the correlations between these asset classes. Our findings reveal a key characteristic: volatility spillovers tend to be short-lived, indicated by a relatively low DCC-GARCH parameter (dcca1). This suggests that while a surge in volatility in one market might lead to a temporary increase in correlation with the other, this heightened correlation is unlikely to persist for extended periods. However, the model also highlights a high DCC-GARCH parameter (dccb1), signifying that the correlations themselves are responsive to new information. This implies that volatility linkages can adjust rapidly in response to market events or economic data releases. To enhance accessibility for a broad audience, we translate these findings into economic intuitions. We illustrate how the model can be interpreted through real-world examples, such as the impact of sudden policy changes in India or global market flash crashes. By understanding the short-lived nature of volatility spillovers and the responsiveness of correlations, investors in the Indian markets can make more informed decisions when considering the potential influence of Bitcoin's volatility while contributing to a deeper understanding of the dynamic interactions between cryptocurrency and traditional financial markets in the Indian context.

印度市场是否不受加密货币的影响?通过多指数动态多元 GARCH 分析揭示波动性联系
本文研究了比特币波动与印度主要股票市场指数之间的动态关系。利用动态条件相关-广义自回归条件异方差(DCC-GARCH)模型,我们探讨了波动冲击和信息流如何影响这些资产类别之间的相关性。我们的研究结果揭示了一个关键特征:波动溢出效应往往是短暂的,这表现在 DCC-GARCH 参数(dcca1)相对较低。这表明,虽然一个市场的波动性激增可能会导致与另一个市场的相关性暂时上升,但这种相关性的上升不太可能持续很长时间。然而,该模型也显示出较高的 DCC-GARCH 参数(dccb1),这表明相关性本身对新信息是敏感的。这意味着波动性联系会随着市场事件或经济数据的发布而迅速调整。为了让广大读者更容易理解,我们将这些发现转化为经济学直觉。我们通过现实世界中的例子,如印度政策突变或全球市场闪崩的影响,来说明如何解释模型。通过了解波动溢出效应的短暂性和相关性的响应性,印度市场的投资者在考虑比特币波动的潜在影响时可以做出更明智的决策,同时有助于加深对印度背景下加密货币与传统金融市场之间动态互动的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Economic Notes
Economic Notes ECONOMICS-
CiteScore
3.30
自引率
6.70%
发文量
11
期刊介绍: With articles that deal with the latest issues in banking, finance and monetary economics internationally, Economic Notes is an essential resource for anyone in the industry, helping you keep abreast of the latest developments in the field. Articles are written by top economists and executives working in financial institutions, firms and the public sector.
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