Modelling Enterprise Risk Management Ecosystems Using Text Analytics
Journal article
Authors/Editors
Strategic Research Themes
Publication Details
Author list: Patipan SAE-LIM
Publisher: Sciendo
Publication year: 2024
Volume number: 16
Start page: 391
End page: 406
Number of pages: 16
ISSN: 2080-7279
eISSN: 2300-5661
URL: https://sciendo.com/article/10.2478/fman-2024-0024
Languages: English-United States (EN-US)
Abstract
In recent years, a paradigm shift in risk management has altered in a holistic way, which we call Enterprise Risk Management (ERM). ERM solves the limitations of Traditional Risk Management (TRM). Although firms perceive several benefits of ERM, the successful implementation of ERM rests upon institutional and contingency factors. The ERM approach then seeks to integrate the core system and processes of the firm rather than acting through silo perspective. With this in mind, this research applies text mining techniques to analyze bibliometric data from SCOPUS to propose the suitable ERM ecosystem. This longitudinal study uses 725 reliable documents across 26 years. The descriptive analysis relating to the journal, citation, author, and article performance is displayed. Text co-occurrence analysis of author keywords represented by network mapping shows five ecosystems that significantly integrate with ERM: (1) three lines of defense (3LOD), (2) corporate governance, (3) ERM framework, (4) firm culture, and (5) value creation. Ultimately, the hidden insight from the bibliometric data shows the correlation between ERM and modern firm direction such as sustainability.
Keywords
Bibliometric analysis, Corporate governance, COSO, Enterprise Risk Management, Text Analytics, Three Lines of Defense