Fraud Prevention in the Leasing Industry Using the Kohonen Self-Organising Maps

IF 1.5 Q3 MANAGEMENT
M. P. Bach, Nikola Vlahovic, Jasmina Pivar
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引用次数: 7

Abstract

Abstract Background and Purpose: Data mining techniques are intensely used in various industries for the purpose of fraud prevention and detection. Research that focuses on the leasing industry is scarce, although frauds in the field of leasing occur rather often. First, we identify clusters of business clients in one leasing company by using the method of self-organising maps based on leasing contract attributes. Second, we compare clusters based on the presence of fraudulent clients, in order to develop fraudsters’ profiles. Methodology: For detecting characteristics of fraudulent clients, we use a client database containing leasing contract attributes of one Croatian leasing company. In order to develop profiles of fraudulent clients, we utilise a clustering procedure with the Kohonen Self-Organizing Maps supported by Viscovery SOMine software. Results: Five clusters were identified and labelled according to the modal values of attributes describing the leasing object and the industry in which the client operates: (i) New cars / Trade; (ii) Used trucks or tugboats / Other services; (iii) New machinery / Construction; (iv) New motors / Trade; and (v) New machinery and tractors / Agriculture. Conclusion: Self-organising maps have proved to be a useful methodology for developing profiles of fraudulent clients in leasing companies. Companies can use our results and make additional efforts in monitoring clients from the identified industries, buying specific leasing objects. In addition, companies can apply our methodology to their own databases, in order to develop fraudster profiles for their specific purposes, and implement fraud alert mechanisms in their client database.
使用Kohonen自组织地图预防租赁行业的欺诈行为
背景与目的:数据挖掘技术被广泛应用于各个行业,以防止和检测欺诈。尽管租赁领域的欺诈行为经常发生,但针对租赁业的研究却很少。首先,我们使用基于租赁合同属性的自组织映射方法来识别一家租赁公司的业务客户集群。其次,我们根据欺诈性客户的存在来比较集群,以开发欺诈者的概况。方法:为了检测欺诈客户的特征,我们使用包含一家克罗地亚租赁公司租赁合同属性的客户数据库。为了建立欺诈性客户的档案,我们使用了一个聚类程序,该程序使用了由Viscovery SOMine软件支持的Kohonen自组织地图。结果:根据描述租赁对象和客户所在行业的属性的模态值,识别并标记了五个集群:(i)新车/贸易;二手卡车或拖船/其他服务;新机器/建筑;新发动机/贸易;新机械和拖拉机/农业。结论:自组织地图已被证明是一种有用的方法,用于开发租赁公司欺诈客户的资料。公司可以使用我们的结果,并在监控来自已识别行业的客户、购买特定租赁对象方面做出额外的努力。此外,公司可以将我们的方法应用到他们自己的数据库中,以便为他们的特定目的开发欺诈者档案,并在他们的客户数据库中实施欺诈警报机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Organizacija
Organizacija MANAGEMENT-
CiteScore
3.50
自引率
15.80%
发文量
15
审稿时长
16 weeks
期刊介绍: Organizacija (Journal of Management, Information Systems and Human Resources) is an interdisciplinary peer reviewed journal that seeks both theoretical and practical papers devoted to managerial aspects of the subject matter indicated in the title. In particular the journal focuses on papers which cover state-of art developments in the subject area of the journal, its implementation and use in the organizational practice. Organizacija is covered by numerous Abstracting & Indexing services, including SCOPUS.
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