cs.AI updates on arXiv.org 07月15日 12:24
Representation learning with a transformer by contrastive learning for money laundering detection
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本文提出一种利用变压器神经网络检测洗钱的新方法,通过对比学习无标签学习时间序列表示,生成洗钱评分,实现控制误报率,实验表明该方法在检测非欺诈者和欺诈者方面具有优势。

arXiv:2507.08835v1 Announce Type: cross Abstract: The present work tackles the money laundering detection problem. A new procedure is introduced which exploits structured time series of both qualitative and quantitative data by means of a transformer neural network. The first step of this procedure aims at learning representations of time series through contrastive learning (without any labels). The second step leverages these representations to generate a money laundering scoring of all observations. A two-thresholds approach is then introduced, which ensures a controlled false-positive rate by means of the Benjamini-Hochberg (BH) procedure. Experiments confirm that the transformer is able to produce general representations that succeed in exploiting money laundering patterns with minimal supervision from domain experts. It also illustrates the higher ability of the new procedure for detecting nonfraudsters as well as fraudsters, while keeping the false positive rate under control. This greatly contrasts with rule-based procedures or the ones based on LSTM architectures.

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洗钱检测 变压器神经网络 对比学习
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