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Supervised learning models to predict firm performance with annual reports: An empirical study
Author(s) -
Qiu Xin Ying,
Srinivasan Padmini,
Hu Yong
Publication year - 2014
Publication title -
journal of the association for information science and technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.903
H-Index - 145
eISSN - 2330-1643
pISSN - 2330-1635
DOI - 10.1002/asi.22983
Subject(s) - earnings , incentive , computer science , perspective (graphical) , data science , stock (firearms) , biomedicine , knowledge management , machine learning , artificial intelligence , accounting , business , economics , engineering , mechanical engineering , biology , genetics , microeconomics
Text mining and machine learning methodologies have been applied toward knowledge discovery in several domains, such as biomedicine and business. Interestingly, in the business domain, the text mining and machine learning community has minimally explored company annual reports with their mandatory disclosures. In this study, we explore the question “How can annual reports be used to predict change in company performance from one year to the next?” from a text mining perspective. Our article contributes a systematic study of the potential of company mandatory disclosures using a computational viewpoint in the following aspects: (a) We characterize our research problem along distinct dimensions to gain a reasonably comprehensive understanding of the capacity of supervised learning methods in predicting change in company performance using annual reports, and (b) our findings from unbiased systematic experiments provide further evidence about the economic incentives faced by analysts in their stock recommendations and speculations on analysts having access to more information in producing earnings forecast.

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