应用机器学习研究会计文献中的欺诈行为

IF 1.1 Q3 BUSINESS, FINANCE
Sana Ramzan, M. Lokanan
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引用次数: 0

摘要

目的 本研究旨在采用系统文献综述研究方法(SLRRM),客观地归纳有关财务报表舞弊(FSF)的大量会计文献。本文根据纳入和排除标准对大量 FSF 文献进行了分析。这些标准根据澳大利亚商学院院长委员会(ABDC)期刊排名,筛选出存在于会计欺诈领域且发表在同行评审的高质量期刊上的文章。最后,通过分析文章摘要进行反向搜索,进一步将搜索范围缩小到 88 篇同行评审文章。在对这 88 篇文章进行研究后,结果表明,目前用于预测和检测 FSF 的文献正在从传统的统计方法转向计算方法,特别是机器学习 (ML)。文献的这种演变受到了微观和宏观变量对 FSF 的影响,以及审计程序不足以发现欺诈红旗的影响。研究结果还得出结论,A*同行评审期刊接受的文章在其结果中完整地展示了计算技术的性能指标。设计/方法/途径本文记录了围绕当前会计和审计实践在预防和检测财务报表舞弊方面的不足而展开的一系列叙述。本研究的主要目的是客观地归纳有关财务报表舞弊的大量会计文献。更具体地说,本研究将进行系统的文献综述(SLR),以考察财务报表舞弊研究的演变,以及会计和金融文献中出现的用于检测舞弊的新计算技术。研究结果本研究的故事情节说明了文献是如何从传统的舞弊检测机制演变到人工智能(AI)和机器学习(ML)等计算技术的。研究结果还得出结论,A* 同行评审期刊接受的文章在其结果中完整地展示了计算技术的性能指标。因此,本文有助于研究人员深入了解为何有关欺诈的 ML 文章无法进入顶级会计期刊,以及哪些计算技术是预测和检测 FSF 的最佳算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application of machine learning to study fraud in the accounting literature
PurposeThis study aims to objectively synthesize the volume of accounting literature on financial statement fraud (FSF) using a systematic literature review research method (SLRRM). This paper analyzes the vast FSF literature based on inclusion and exclusion criteria. These criteria filter articles that are present in the accounting fraud domain and are published in peer-reviewed quality journals based on Australian Business Deans Council (ABDC) journal ranking. Lastly, a reverse search, analyzing the articles' abstracts, further narrows the search to 88 peer-reviewed articles. After examining these 88 articles, the results imply that the current literature is shifting from traditional statistical approaches towards computational methods, specifically machine learning (ML), for predicting and detecting FSF. This evolution of the literature is influenced by the impact of micro and macro variables on FSF and the inadequacy of audit procedures to detect red flags of fraud. The findings also concluded that A* peer-reviewed journals accepted articles that showed a complete picture of performance measures of computational techniques in their results. Therefore, this paper contributes to the literature by providing insights to researchers about why ML articles on fraud do not make it to top accounting journals and which computational techniques are the best algorithms for predicting and detecting FSF.Design/methodology/approachThis paper chronicles the cluster of narratives surrounding the inadequacy of current accounting and auditing practices in preventing and detecting Financial Statement Fraud. The primary objective of this study is to objectively synthesize the volume of accounting literature on financial statement fraud. More specifically, this study will conduct a systematic literature review (SLR) to examine the evolution of financial statement fraud research and the emergence of new computational techniques to detect fraud in the accounting and finance literature.FindingsThe storyline of this study illustrates how the literature has evolved from conventional fraud detection mechanisms to computational techniques such as artificial intelligence (AI) and machine learning (ML). The findings also concluded that A* peer-reviewed journals accepted articles that showed a complete picture of performance measures of computational techniques in their results. Therefore, this paper contributes to the literature by providing insights to researchers about why ML articles on fraud do not make it to top accounting journals and which computational techniques are the best algorithms for predicting and detecting FSF.Originality/valueThis paper contributes to the literature by providing insights to researchers about why the evolution of accounting fraud literature from traditional statistical methods to machine learning algorithms in fraud detection and prediction.
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来源期刊
CiteScore
6.50
自引率
0.00%
发文量
6
期刊介绍: The objective of the Journal is to publish papers that make a fundamental and substantial contribution to the understanding of accounting phenomena. To this end, the Journal intends to publish papers that (1) synthesize an area of research in a concise and rigorous manner to assist academics and others to gain knowledge and appreciation of diverse research areas or (2) present high quality, multi-method, original research on a broad range of topics relevant to accounting, auditing and taxation. Topical coverage is broad and inclusive covering virtually all aspects of accounting. Consistent with the historical mission of the Journal, it is expected that the lead article of each issue will be a synthesis article on an important research topic. Other manuscripts to be included in a given issue will be a mix of synthesis and original research papers. In addition to traditional research topics and methods, we actively solicit manuscripts of the including, but not limited to, the following: • meta-analyses • field studies • critiques of papers published in other journals • emerging developments in accounting theory • commentaries on current issues • innovative experimental research with strong grounding in cognitive, social or anthropological sciences • creative archival analyses using non-standard methodologies or data sources with strong grounding in various social sciences • book reviews • "idea" papers that don''t fit into other established categories.
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