FINANCIAL FRAUD DETECTION AND MACHINE LEARNING ALGORITHM (UNSUPERVISED LEARNING): SYSTEMATIC LITERATURE REVIEW

Nadia Husnaningtyas, Totok Dewayanto
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Abstract

This research aims to assess the usage of unsupervised learning in detecting financial fraud across various financial industries by identifying cognitive constructs, benefits, economic optimization, and challenges associated with fraud detection necessitating innovative approaches for effective detection. This study conducts Systematic Literature Review following PRISMA protocol for article selection of 27 journal articles published between 2010 and 2023, sourced from Scopus database. The analysis discloses that unsupervised learning has been implemented across diverse financial sectors, including online payments, insurance, and prominently in banking, especially for identifying anomalies in credit card transactions. K-Means is the most popular method used in unsupervised learning. Nevertheless, there are ongoing challenges that require solutions to ensure the efficacy of machine learning implementation, encompassing issues like class imbalance and the complexity of fraudulent activities. In theoretical terms, this research provides an understanding of cognitive concepts, benefits and applications, challenges, and practical recommendations in the use of unsupervised learning for financial fraud detection. This is useful for practical implementation, benefiting industry practitioners in selecting appropriate models with datasets that have the potential to enhance detection system accuracy and reduce financial losses due to fraud.
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金融欺诈检测和机器学习算法(无监督学习):系统文献综述
本研究旨在通过识别与欺诈检测相关的认知结构、益处、经济优化和挑战,评估无监督学习在各金融行业金融欺诈检测中的应用,从而找到有效检测所需的创新方法。本研究按照 PRISMA 协议进行了系统文献综述,从 Scopus 数据库中选取了 2010 年至 2023 年间发表的 27 篇期刊论文。分析显示,无监督学习已在不同的金融领域得到应用,包括在线支付、保险和银行业,尤其是在识别信用卡交易异常方面。K-Means 是无监督学习中最常用的方法。然而,要确保机器学习实施的有效性,还需要解决一些持续存在的挑战,其中包括类不平衡和欺诈活动的复杂性等问题。从理论上讲,本研究提供了对认知概念、优势和应用、挑战的理解,以及在金融欺诈检测中使用无监督学习的实用建议。这对实际应用很有帮助,有利于行业从业人员选择合适的模型和数据集,从而有可能提高检测系统的准确性,减少欺诈造成的经济损失。
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来源期刊
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0.00%
发文量
6
审稿时长
48 weeks
期刊最新文献
FINANCIAL FRAUD DETECTION AND MACHINE LEARNING ALGORITHM (UNSUPERVISED LEARNING): SYSTEMATIC LITERATURE REVIEW AUDIT COMMITTEE EFFECTIVENESS AS FRAUD PREVENTION MECHANISMS KETIDAKPASTIAN LINGKUNGAN DAN MANAJEMEN LABA DENGAN KEMAMPUAN MANAJERIAL SEBAGAI VARIABEL MODERASI MACHINE LEARNING FOR E-COMMERCE FRAUD DETECTION THE MODERATING ROLE OF ESG DISCLOSURE ON FIRM STRATEGY AND STOCK PRICE CRASH RISK
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