Financial forensics has an important role in the field of finance to detect and investigate the occurrence of finance related crimes like money laundering. However, as with other forms of criminal activities, the forensics analysis of such activities is a complex undertaking with attempts by the adversaries to constantly upgrade their ability to evade detection. Also, the extent of the volume and complexity of financial activities or transactions further complicates the task of performing financial forensics. Machine Learning or Artificial Intelligence algorithms could be used to deal with such complexities. However, the challenge of limitedly available labeled datasets especially with fraudulent activities limits the means to develop efficient algorithms. Additionally, the complexity of defining precise search patterns of evasive fraudulent transactions further complicates this challenge. In this paper, we developed a novel deep set classifier algorithm based on meta learning and applied it to deal with the complexity deriving patterns of interest with sample of limitedly labelled transactions to detect fraudulent cryptocurrency money laundering transactions. We a unique approach to train our model with progressive provision of samples and the test result exceeds leading research algorithms.
翻译:金融法证在金融领域侦查和调查洗钱等金融相关犯罪的发生方面具有重要作用,然而,与其他形式的犯罪活动一样,对此类活动的法医分析是一项复杂的工作,对手试图不断提高逃避侦查的能力;此外,金融活动或交易的数量和复杂程度使金融法证工作的任务更加复杂; 机器学习或人工智能算法可用于处理此类复杂问题; 然而,现有有标签的数据集有限,特别是欺诈活动,限制了发展高效算法的手段; 此外,确定逃避欺诈交易的确切搜索模式的复杂性使这一挑战更加复杂; 本文中,我们根据元学发展了一套新的深层次分类算法,并运用这一算法处理与有限标签的交易样本产生的复杂利益模式,以侦查欺诈的隐秘货币洗钱交易; 我们采用独特的方法,对模型进行培训,逐步提供样品,测试结果超过主要研究算法。