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Role Recognition of Illegal Online Gambling Participants Using Monetary Transaction Data

机译:使用货币交易数据的非法在线赌博参与者的角色识别

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摘要

Online gambling has become a substantial global industry during the past two decades. However, it is explicitly prohibited or restricted by most countries in the world due to social problems caused by it. This results in rapid expansion of the illegal online gambling (IOG) market where players profits are under little protection. To fight against IOG, this paper addresses the IOG participant-role recognition (PRR) problem by learning a supervised classifier with monetary transaction data. We propose two sets of features, i.e., transaction statistical features and network structural features, to effectively represent participants. Based on the feature representation, we adopt an ensemble learning strategy in the training phase of a PRR classifier to reduce the impact of unbalanced data. Results of experiments performed on real-world IOG case data demonstrate the feasibility and validity of the proposed approach. The proposed approach could help investigators in a law enforcement agency find the key members of an IOG organization quickly and destroy the ecosystem efficiently.
机译:在过去的二十年中,在线赌博已成为一个重要的全球性行业。但是,由于它引起的社会问题,它被世界上大多数国家明确禁止或限制。这导致非法在线赌博(IOG)市场迅速扩大,在该市场中,玩家的利润受到了很少的保护。为了对抗IOG,本文通过学习带有货币交易数据的监督分类器来解决IOG参与者角色识别(PRR)问题。我们提出了两组功能,即交易统计功能和网络结构功能,以有效地代表参与者。基于特征表示,我们在PRR分类器的训练阶段采用整体学习策略,以减少不平衡数据的影响。在现实世界中的IOG案例数据上进行的实验结果证明了该方法的可行性和有效性。提议的方法可以帮助执法机构中的研究人员迅速找到IOG组织的关键成员,并有效地破坏生态系统。

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