使用机器学习的盈余管理估计和预测:对未来研究的处理方法和综合的系统回顾

Faozi A. Almaqtari, Najib H. S. Farhan, Monir Yahya Salmony, Waleed M. Al‐ahdal, Nandita Mishra
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引用次数: 0

摘要

本研究强调盈余管理优化约束盈余管理事件和财务舞弊的可能性。我们的研究调查了现有的关于盈余管理和欺诈检测的知识和文献。它的目的是系统地回顾以前的研究中使用的方法和技术,以确定盈余管理和欺诈检测。研究结果表明,以往的盈余管理优化研究主要集中在几种技术上,没有一种技术能够为盈余管理提供理想的优化。此外,研究结果表明,盈余管理的决定因素是复杂的,这取决于企业实体的类型和规模,从而使优化的可能性复杂化。目前的研究为盈余管理和财务舞弊的预测和优化提供了有益的见解。本研究对政策制定者、股票市场、审计师、投资者、分析师和专业人士具有重要的启示意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Earning management estimation and prediction using machine learning: A systematic review of processing methods and synthesis for future research
The present study highlights earning management optimization possibilities to constrain the events of earning management and financial fraud. Our study investigates the existing stock of knowledge and strand literature available on earning management and fraud detection. It aims to review systematically the methods and techniques used by prior research to determine earning management and fraud detection. The results indicate that prior research in earning management optimization is diverged among several techniques and none of these techniques has provided an ideal optimization for earning management. Further, the results reveal that earning management determinants are complex based on the type and size of business entities which complicate the optimization possibilities. The current research brings useful insights for predicting and optimization of earnings management and financial fraud. The present study has significant implications for policymakers, stock markets, auditors, investors, analysts, and professionals.
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