所属栏目:资本市场/市场有效性/2025/2025年第01期

Spatiotemporal Correlation in Stock Liquidity Through Corporate Networks from Information Disclosure Texts
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发布日期:2024年10月11日 上次修订日期:2024年10月11日

摘要

The healthy operation of the stock market relies on sound liquidity. We utilize the semantic information from disclosure texts of listed companies on the China Science and Technology Innovation Board (STAR Market) to construct a daily corporate network. Through empirical tests and performance analyses of machine learning models, we elucidate the relationship between the similarity of company disclosure text contents and the temporal and spatial correlations of stock liquidity. Our liquidity indicators encompass trading costs, market depth, trading speed, and price impact, recognized across four dimensions. Furthermore, we reveal that the information loss caused by employing Minimum Spanning Tree (MST) topology significantly affects the explanatory power of network topology indicators for stock liquidity, with a more pronounced impact observed at the document level. Subsequently, by establishing a neural network model to predict next-day liquidity indicators, we demonstrate the temporal relationship of stock liquidity. We model a liquidity predicting task and train a daily liquidity prediction model incorporating Graph Convolutional Network (GCN) modules to solve it. Compared to models with the same parameter structure containing only fully connected layers, the GCN prediction model, which leverages company network structure information, exhibits stronger performance and faster convergence. We provide new insights for research on company disclosure and capital market liquidity.
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Shi Chen; Yinong Liu Spatiotemporal Correlation in Stock Liquidity Through Corporate Networks from Information Disclosure Texts (2024年10月11日) https://www.cfrn.com.cn/dzqk/detail/15951.html

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