大数据时代的车险欺诈检测——系统全面的文献综述

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2022-04-08 DOI:10.1108/jfrc-11-2021-0102
Botond Benedek, Cristina Ciumaș, Bálint Zsolt Nagy
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引用次数: 4

摘要

目的本文旨在调查过去31年(1990-2021)的汽车保险欺诈检测文献,并提出一项研究议程,以应对人工智能和机器学习给汽车保险欺诈识别带来的挑战和机遇。设计/方法论/方法论内容分析方法论用于分析来自31种期刊的46篇同行评审学术论文和8篇会议论文集,以确定其研究主题,并根据内容特征检测汽车保险欺诈检测文献的趋势和变化。发现这项研究发现,汽车保险欺诈检测正在经历一场变革,传统的基于统计的检测方法被基于数据挖掘和人工智能的方法所取代。在这项研究中,还注意到成本敏感和混合方法是未来进一步研究的途径。实际意义本文的研究结果不仅突出了基于数据挖掘和人工智能的汽车保险欺诈检测的兴起和好处,还突出了该领域可观察到的不足,如缺乏成本敏感的方法或缺乏可靠的数据集。原创性/价值本文深入了解了人工智能和数据挖掘如何挑战传统的汽车保险欺诈检测模型,并解决了开发新的成本敏感欺诈检测方法以识别新的真实世界数据集的需求。
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Automobile insurance fraud detection in the age of big data – a systematic and comprehensive literature review
Purpose The purpose of this paper is to survey the automobile insurance fraud detection literature in the past 31 years (1990–2021) and present a research agenda that addresses the challenges and opportunities artificial intelligence and machine learning bring to car insurance fraud detection. Design/methodology/approach Content analysis methodology is used to analyze 46 peer-reviewed academic papers from 31 journals plus eight conference proceedings to identify their research themes and detect trends and changes in the automobile insurance fraud detection literature according to content characteristics. Findings This study found that automobile insurance fraud detection is going through a transformation, where traditional statistics-based detection methods are replaced by data mining- and artificial intelligence-based approaches. In this study, it was also noticed that cost-sensitive and hybrid approaches are the up-and-coming avenues for further research. Practical implications This paper’s findings not only highlight the rise and benefits of data mining- and artificial intelligence-based automobile insurance fraud detection but also highlight the deficiencies observable in this field such as the lack of cost-sensitive approaches or the absence of reliable data sets. Originality/value This paper offers greater insight into how artificial intelligence and data mining challenges traditional automobile insurance fraud detection models and addresses the need to develop new cost-sensitive fraud detection methods that identify new real-world data sets.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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