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新兴市场中股票价格变动的集体行为。

Collective behavior of stock price movements in an emerging market.

作者信息

Pan Raj Kumar, Sinha Sitabhra

机构信息

The Institute of Mathematical Sciences, C. I. T. Campus, Taramani, Chennai 600 113, India.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2007 Oct;76(4 Pt 2):046116. doi: 10.1103/PhysRevE.76.046116. Epub 2007 Oct 25.

DOI:10.1103/PhysRevE.76.046116
PMID:17995069
Abstract

To investigate the universality of the structure of interactions in different markets, we analyze the cross-correlation matrix C of stock price fluctuations in the National Stock Exchange (NSE) of India. We find that this emerging market exhibits strong correlations in the movement of stock prices compared to developed markets, such as the New York Stock Exchange (NYSE). This is shown to be due to the dominant influence of a common market mode on the stock prices. By comparison, interactions between related stocks, e.g., those belonging to the same business sector, are much weaker. This lack of distinct sector identity in emerging markets is explicitly shown by reconstructing the network of mutually interacting stocks. Spectral analysis of C for NSE reveals that, the few largest eigenvalues deviate from the bulk of the spectrum predicted by random matrix theory, but they are far fewer in number compared to, e.g., NYSE. We show this to be due to the relative weakness of intrasector interactions between stocks, compared to the market mode, by modeling stock price dynamics with a two-factor model. Our results suggest that the emergence of an internal structure comprising multiple groups of strongly coupled components is a signature of market development.

摘要

为了研究不同市场中相互作用结构的普遍性,我们分析了印度国家证券交易所(NSE)股票价格波动的互相关矩阵C。我们发现,与纽约证券交易所(NYSE)等发达市场相比,这个新兴市场在股票价格走势上表现出很强的相关性。这表明是一种共同市场模式对股票价格的主导影响所致。相比之下,相关股票之间的相互作用,例如属于同一商业部门的股票之间的相互作用则要弱得多。通过重建相互作用股票的网络,明确显示了新兴市场中缺乏明显的行业特征。对NSE的C进行频谱分析表明,少数几个最大特征值偏离了随机矩阵理论预测的频谱主体,但与例如NYSE相比,其数量要少得多。通过用双因素模型对股票价格动态进行建模,我们表明这是由于与市场模式相比,股票之间行业内相互作用相对较弱所致。我们的结果表明,由多组强耦合成分组成的内部结构的出现是市场发展的一个标志。

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