STCLLGNov 10, 2023

Multi-Label Topic Model for Financial Textual Data

arXiv:2311.07598v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This provides a tool for financial analysts to better understand market impacts of textual disclosures, though it is incremental as it extends topic modeling to multi-label financial data.

The paper tackles the problem of analyzing financial texts by developing a multi-label topic model, achieving over 85% macro F1 score on a dataset of German ad-hoc announcements, and applies it to show that stock market reactions vary by topic and depend on co-occurring topics.

This paper presents a multi-label topic model for financial texts like ad-hoc announcements, 8-K filings, finance related news or annual reports. I train the model on a new financial multi-label database consisting of 3,044 German ad-hoc announcements that are labeled manually using 20 predefined, economically motivated topics. The best model achieves a macro F1 score of more than 85%. Translating the data results in an English version of the model with similar performance. As application of the model, I investigate differences in stock market reactions across topics. I find evidence for strong positive or negative market reactions for some topics, like announcements of new Large Scale Projects or Bankruptcy Filings, while I do not observe significant price effects for some other topics. Furthermore, in contrast to previous studies, the multi-label structure of the model allows to analyze the effects of co-occurring topics on stock market reactions. For many cases, the reaction to a specific topic depends heavily on the co-occurrence with other topics. For example, if allocated capital from a Seasoned Equity Offering (SEO) is used for restructuring a company in the course of a Bankruptcy Proceeding, the market reacts positively on average. However, if that capital is used for covering unexpected, additional costs from the development of new drugs, the SEO implies negative reactions on average.

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