Is It Worth the Effort? Considerations on Text Mining in AI-Based Corporate Failure Prediction

Author:

Nießner Tobias1ORCID,Nießner Stefan1,Schumann Matthias1

Affiliation:

1. Faculty of Business and Economics, University of Goettingen, 37073 Goettingen, Germany

Abstract

How can useful information extracted from unstructured data be used to contribute to a better prediction of corporate failure or bankruptcy? In this research, we examine a data set of 2,163,147 financial statements of German companies that are triple classified, i.e., solvent, financially distressed, and bankrupt. By classifying text features in terms of granularity and linguistic level of analysis, we show results for the potentials and limitations of approaches developed in this way. This study gives a first approach to evaluate and classify the likelihood of success of text mining approaches for extracting features that enhance the training database of AI-based solutions and improve corporate failure prediction models developed in this way. Our results are an indication that the adaptation of additional information sources for the financial evaluation of companies is indeed worthwhile, but approaches adapted to the context should be used instead of unspecific general text mining approaches.

Funder

Open Access Publication Funds of the Göttingen University

Publisher

MDPI AG

Subject

Information Systems

Reference35 articles.

1. Corporate bankruptcy prediction: A high dimensional analysis;Jones;Rev. Account. Stud.,2017

2. Combining data and text mining techniques for analyzing financial reports;Kloptchenko;Intell. Syst. Account. Financ. Manag.,2004

3. Text mining for market prediction: A systematic review;Nassirtoussi;Expert Syst. Appl.,2014

4. Evaluating sentiment in financial news articles;Schumaker;Decis. Support Syst.,2012

5. Mining Textual Contents of Financial Reports;Kloptchenko;Int. J. Digit. Account. Res.,2004

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