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Inferring Bad Entities Through the Panama Papers Network

机译:通过巴拿马文件网络推断不良实体

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The Panama Papers represent a large set of relationships between people, companies, and organizations that had affairs with the Panamanian offshore law firm Mossack Fonseca, often due to money laundering. In this paper, we address for the first time the problem of searching the Panama Papers for people and companies that may be involved in illegal acts. We use a collection of international blacklists of sanctioned people and organizations as ground truth for bad entities. We propose a new ranking algorithm, named Suspiciousness Rank Back and Forth (SRBF), that leverages this ground truth to assign a degree of suspiciousness to each entity in the Panama Papers. We experimentally show that our algorithm achieves an AUROC of 0.85 and an Area Under the Recall Curve of 0.87 and outperforms existing techniques.
机译:巴拿马文件代表了经常由于洗钱而与巴拿马离岸律师事务所Mossack Fonseca发生事务的个人,公司和组织之间的大量关系。在本文中,我们首次解决了在巴拿马文件中搜索可能涉及非法行为的人员和公司的问题。我们使用一系列受制裁人员和组织的国际黑名单作为不良实体的依据。我们提出了一种新的排名算法,称为可疑排名后退(SRBF),该算法利用这一基本事实为巴拿马论文中的每个实体分配可疑程度。实验表明,该算法的AUROC为0.85,召回曲线下的面积为0.87,优于现有技术。

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