基于复杂网络的看涨期羊群行为与中国股市波动关系

Yong Shi, Yuanchun Zheng, Kun Guo, Xinyue Ren
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引用次数: 2

摘要

羊群效应对股市波动有很大的影响,由于最近移动互联网的普及和大数据分析技术的发展,研究人员有可能对羊群效应进行分析。本文基于帖子情绪指数的简单两两相关,提出了基于投资者和基于股票的中国股市情绪传播网络。并通过将网络指标与上证综合指数(SSCI)和铜锣国际价值指数(CIVIX)进行比较,研究羊群效应与中国股市波动的关系。通过实验结果,我们发现这些指标确实领先于中国股市。本研究首次尝试使用复杂网络对股票市场情绪进行建模,并证明投资者行为对股票市场有很大的影响。
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Relationship between Herd Behavior and Chinese Stock Market Fluctuations during a Bullish Period Based on Complex Networks
Herding has a great impact on stock market fluctuations, and it is possible for researchers to analyze the herding effect due to the recent popularity of mobile Internet and the development of big data analysis technology. In this paper, we propose both investor-based and stock-based sentiment propagation networks of Chinese stock markets based on the simple pairwise correlation of posts’ sentiment indexes. And the relationship between the herding effect and Chinese stock market fluctuations is studied by comparing the network indicators with the Shanghai Securities Composite Index (SSCI) and the Causeway International Value Index (CIVIX). Through the experimental results, we find that the indicators are indeed ahead of the Chinese stock market. This study is the first attempt to model stock market sentiment by using a complex network, and it proves that investor behavior has a great effect on the stock market.
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