Identifying new earnings management components: a machine learning approach
Document Type
Article
Publication Date
8-6-2024
Publication Title
Accounting Research Journal
Abstract
Purpose: This study aims to apply machine learning (ML) to identify new financial elements managers might use for earnings management (EM), assessing their impact on the Standard Jones Model and modified Jones model for EM detection and examining managerial motives for using these components. Design/methodology/approach: Using eXtreme gradient boosting on 23,310 the US firm-year observations from 2012 to2021, the study pinpoints nine financial variables potentially used for earnings manipulation, not covered by traditional accruals models. Findings: Cost of goods sold and earnings before interest, taxes, depreciation and amortization are identified as the most significant for EM, with relative importances of 40.2% and 11.5%, respectively. Research limitations/implications: The study’s scope, limited to a specific data set and timeframe, and the exclusion of some financial variables may impact the findings’ broader applicability. Practical implications: The results are crucial for researchers, practitioners, regulators and investors, offering strategies for detecting and addressing EM. Social implications: Insights from the study advocate for greater financial transparency and integrity in businesses. Originality/value: By incorporating ML in EM detection and spotlighting overlooked financial variables, the research brings fresh perspectives and opens new avenues for further exploration in the field.
Volume Number
37
Issue Number
4
First Page
418
Last Page
435
DOI
10.1108/ARJ-10-2023-0304
Recommended Citation
Almasarwah, Adel; Aram, Khalid Y.; and Alhaj-Yaseen, Yaseen S., "Identifying new earnings management components: a machine learning approach" (2024). Faculty and Staff Works. 1003.
https://kb.gcsu.edu/fac-staff/1003