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  1. Predicting distresses using deep learning of text segments in annual reports
    Erschienen: 15 November 2018
    Verlag:  Danmarks Nationalbank, Copenhagen

    Corporate distress models typically only employ the numerical financial variables in the firms' annual reports. We develop a model that employs the unstructured textual data in the reports as well, namely the auditors' reports and managements'... mehr

    ZBW - Leibniz-Informationszentrum Wirtschaft, Standort Kiel
    DS 135 (130)
    keine Fernleihe

     

    Corporate distress models typically only employ the numerical financial variables in the firms' annual reports. We develop a model that employs the unstructured textual data in the reports as well, namely the auditors' reports and managements' statements. Our model consists of a convolutional recurrent neural network which, when concatenated with the numerical financial variables, learns a descriptive representation of the text that is suited for corporate distress prediction. We find that the unstructured data provides a statistically significant enhancement of the distress prediction performance, in particular for large firms where accurate predictions are of the utmost importance. Furthermore, we find that auditors' reports are more informative than managements' statements and that a joint model including both managements' statements and auditors' reports displays no enhancement relative to a model including only auditors' reports. Our model demonstrates a direct improvement over existing state-of-the-art models.

     

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    Quelle: Verbundkataloge
    Sprache: Englisch
    Medientyp: Buch (Monographie)
    Format: Online
    Weitere Identifier:
    hdl: 10419/202870
    Schriftenreihe: Working paper / Danmarks Nationalbank ; no. 130
    Umfang: 1 Online-Ressource (circa 25 Seiten), Illustrationen