基于融合交易网络表示的新型逃税检测框架

Yingchao Wu, Bo Dong, Q. Zheng, Rongzhe Wei, Zhiwen Wang, Xuanya Li
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引用次数: 3

摘要

逃税通常是指纳税人为减少纳税义务而进行虚假申报;这种行为导致税收损失,损害税收公平原则。偷税漏税侦查是减少税收损失的重要手段。目前,高效的审计方法主要是传统的面向数据挖掘的审计方法,这些方法已经不能很好地适应日益复杂的纳税人之间的交易关系。在这一需求的推动下,最近的研究通过建立交易网络并应用图形模式匹配算法进行逃税识别。但是,这种方法依赖于专家经验来提取偷税漏税图模式,费时费力。更重要的是,没有考虑纳税人的基本属性,没有很好地保留纳税人在交易网络中的双重身份。为了解决这一问题,我们提出了一种新的基于融合交易网络表示的偷税漏税检测框架(泰德- tnr),该框架将交易网络拓扑信息和纳税人基本属性共同嵌入到低维向量空间中,并考虑纳税人在交易网络中的双重身份。最后,我们对现实世界的税收数据进行了实验测试,与最先进的模型相比,揭示了我们的方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Tax Evasion Detection Framework via Fused Transaction Network Representation
Tax evasion usually refers to the false declaration of taxpayers to reduce their tax obligations; this type of behavior leads to the loss of taxes and damage to the fair principle of taxation. Tax evasion detection plays a crucial role in reducing tax revenue loss. Currently, efficient auditing methods mainly include traditional data-mining-oriented methods, which cannot be well adapted to the increasingly complicated transaction relationships between taxpayers. Driven by this requirement, recent studies have been conducted by establishing a transaction network and applying the graphical pattern matching algorithm for tax evasion identification. However, such methods rely on expert experience to extract the tax evasion chart pattern, which is time-consuming and labor-intensive. More importantly, taxpayers' basic attributes are not considered and the dual identity of the taxpayer in the transaction network is not well retained. To address this issue, we have proposed a novel tax evasion detection framework via fused transaction network representation (TED-TNR), to detecting tax evasion based on fused transaction network representation, which jointly embeds transaction network topological information and basic taxpayer attributes into low-dimensional vector space, and considers the dual identity of the taxpayer in the transaction network. Finally, we conducted experimental tests on real-world tax data, revealing the superiority of our method, compared with state-of-the-art models.
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