• Title of article

    Predicting Going Concern of Companies Using the Tone of Auditor Reporting

  • Author/Authors

    Abbaskhani ، Hamid Department of accounting - Islamic Azad University, Bonab Branch , Pakmaram ، Asgar Department of Accounting - Islamic Azad University, Bonab Branch , Rezaei ، Nader Department of Accounting - Islamic Azad University, Bonab Branch , Bahri Sales ، Jamal Department of Accounting - Islamic Azad University, Urmia Branch

  • From page
    181
  • To page
    194
  • Abstract
    Despite the growing need for research on the going concern and bankruptcy of companies, most of the conducted studies have used the approach of quantitative data for predicting the going concern and bankruptcy of companies; on the other hand, it is possible to manage these quantitative data by company managers. As a result, there appears to be a need to examine alternative methods for predicting going concern and bankruptcy based on qualitative data from the auditor’s report. The purpose of this research is to determine the ability to predict the going concern of the companies using quantitative and qualitative data. The study period was from 2011 to 2021, with a sample of 54 companies admitted to the Tehran Stock Exchange. The results of the first hypothesis test show that the coefficient of determination of text-mining approach model prediction with the presence of a life cycle variable is greater than the determination coefficient of text-mining approach model prediction with the presence of a company size variable. The test of the second hypothesis shows that the difference in the increasing explanatory power of the first model compared to the second model in the companies accepted in the stock exchange is significant.
  • Keywords
    Financial Forecasting , Going Concern , Tone Analysis , Auditor Reporting
  • Journal title
    Journal of Mathematics and Modeling in Finance
  • Journal title
    Journal of Mathematics and Modeling in Finance
  • Record number

    2741814