On the prediction of stock price crash risk using textual sentiment of management statement
Xiao Yao,
Dongxiao Wu,
Zhiyong Li
et al.
Abstract:PurposeSince stock return and volatility matters to investors, this study proposes to incorporate the textual sentiment of annual reports in stock price crash risk prediction.Design/methodology/approachSpecific sentences gathered from management discussions and their subsequent analyses are tokenized and transformed into numeric vectors using textual mining techniques, and then the Naïve Bayes method is applied to score the sentiment, which is used as an input variable for crash risk prediction. The results ar… Show more
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