Stability of China's Stock Market: Measure and Forecast by Ricci Curvature on Network

Xinyu Wang, Liang Zhao, Ning Zhang, Liu Feng, Haibo Lin
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引用次数: 0

Abstract

The systemic stability of a stock market is one of the core issues in the financial field. The market can be regarded as a complex network whose nodes are stocks connected by edges that signify their correlation strength. Since the market is a strongly nonlinear system, it is difficult to measure the macroscopic stability and depict market fluctuations in time. In this article, we use a geometric measure derived from discrete Ricci curvature to capture the higher-order nonlinear architecture of financial networks. In order to confirm the effectiveness of our method, we use it to analyze the CSI 300 constituents of China’s stock market from 2005 to 2020 and the systemic stability of the market is quantified through the network’s Ricci-type curvatures. Furthermore, we use a hybrid model to analyze the curvature time series and predict the future trends of the market accurately. As far as we know, this is the first article to apply Ricci curvature to forecast the systemic stability of China’s stock market, and our results show that Ricci curvature has good explanatory power for the market stability and can be a good indicator to judge the future risk and volatility of China’s stock market.
中国股票市场的稳定性:网络上Ricci曲率的测度与预测
股票市场的系统稳定性是金融领域的核心问题之一。市场可以看作是一个复杂的网络,其节点是股票,它们之间的边表示它们的关联强度。由于市场是一个强非线性系统,很难及时测量宏观稳定性和描述市场波动。在本文中,我们使用从离散里奇曲率派生的几何度量来捕获金融网络的高阶非线性结构。为了验证该方法的有效性,我们将其用于分析2005 - 2020年中国股市沪深300成分股,并通过网络的ricci型曲率对市场的系统稳定性进行量化。此外,我们使用混合模型来分析曲率时间序列,并准确预测市场的未来趋势。据我们所知,这是第一篇运用Ricci曲率来预测中国股市系统稳定性的文章,我们的研究结果表明Ricci曲率对市场稳定性有很好的解释力,可以作为判断中国股市未来风险和波动性的一个很好的指标。
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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CiteScore
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