Making words work: Using financial text as a predictor of financial events

  • Authors:
  • Mark Cecchini;Haldun Aytug;Gary J. Koehler;Praveen Pathak

  • Affiliations:
  • School of Accounting, Darla Moore School of Business, University of South Carolina, United States;Department of Information Systems and Operations Management, Warrington College of Business, University of Florida, United States;Department of Information Systems and Operations Management, Warrington College of Business, University of Florida, United States;Department of Information Systems and Operations Management, Warrington College of Business, University of Florida, United States

  • Venue:
  • Decision Support Systems
  • Year:
  • 2010

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Abstract

We develop a methodology for automatically analyzing text to aid in discriminating firms that encounter catastrophic financial events. The dictionaries we create from Management Discussion and Analysis Sections (MD&A) of 10-Ks discriminate fraudulent from non-fraudulent firms 75% of the time and bankrupt from nonbankrupt firms 80% of the time. Our results compare favorably with quantitative prediction methods. We further test for complementarities by merging quantitative data with text data. We achieve our best prediction results for both bankruptcy (83.87%) and fraud (81.97%) with the combined data, showing that that the text of the MD&A complements the quantitative financial information.