1. Analyst Reports and Stock Performance: Evidence from the Chinese Market
- Author
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Liu, Rui, Liang, Jiayou, Chen, Haolong, and Hu, Yujia
- Subjects
Computer Science - Computation and Language ,Quantitative Finance - Computational Finance - Abstract
This article applies natural language processing (NLP) to extract and quantify textual information to predict stock performance. Using an extensive dataset of Chinese analyst reports and employing a customized BERT deep learning model for Chinese text, this study categorizes the sentiment of the reports as positive, neutral, or negative. The findings underscore the predictive capacity of this sentiment indicator for stock volatility, excess returns, and trading volume. Specifically, analyst reports with strong positive sentiment will increase excess return and intraday volatility, and vice versa, reports with strong negative sentiment also increase volatility and trading volume, but decrease future excess return. The magnitude of this effect is greater for positive sentiment reports than for negative sentiment reports. This article contributes to the empirical literature on sentiment analysis and the response of the stock market to news in the Chinese stock market.
- Published
- 2024