Premium
A Graph Mining Approach to Identify Financial Reporting Patterns: An Empirical Examination of Industry Classifications
Author(s) -
Yang Steve Y.,
Liu FangChun,
Zhu Xiaodi,
Yen David C.
Publication year - 2019
Publication title -
decision sciences
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.238
H-Index - 108
eISSN - 1540-5915
pISSN - 0011-7315
DOI - 10.1111/deci.12345
Subject(s) - computer science , premise , cluster analysis , similarity (geometry) , graph , variance (accounting) , business rule , data mining , business , accounting , business process , machine learning , artificial intelligence , marketing , theoretical computer science , philosophy , linguistics , image (mathematics) , work in process
This study proposes a quantitative method using the eXtensible Business Reporting Language financial accounting taxonomies to identify firms' common business characteristics and demonstrates that this graph mining approach can effectively identify industry boundaries. The premise of this method is based on the previous findings that financial accounts and the structural semantic information represented in financial statements reveal firms' general business operations and common characteristics if they have similar business models. Specifically, we introduce a graph similarity metric combined with spectral clustering algorithm to quantify the similarity of financial disclosures. Through industry classification comparison with the traditional classification schemes, the Standard Industrial Classification and the North American Industry Classification System, we show that the proposed method consistently clusters firms into their respective industries based on financial disclosures with significantly lower variance in a time‐varying fashion. This novel graph mining method provides an automated way for decision makers to identify common business operations as well as detecting potential financial fraud and uncovering accounting information misrepresentation.