揭示cullen委员会的情绪:通过深度学习技术探索反洗钱合规和监管

Mark E. Lokanan
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引用次数: 0

摘要

本文探讨了加拿大反洗钱(AML)法规和合规性在打击洗钱和恐怖主义融资(ML/TF)中的作用。“反洗钱”法规为金融机构识别、预防和报告可疑活动建立了指导方针。然而,由于与实施和遵守“反洗钱”法规相关的挑战,“反洗钱”合规和监管之间经常出现紧张关系。本文旨在调查参与“反洗钱”合规和监管的个人对加拿大金融部门“反洗钱”措施有效性的看法。本文使用卷积神经网络(CNN)、长短期记忆递归神经网络(RNN+LSTM)等先进的深度学习(DL)方法,以及GloVe和BERT等预训练模型,来探索AML合规和监管背景下的情绪。研究结果表明,深度学习模型擅长从与“反洗钱”合规和监管相关的证词中准确分类情绪。然而,在准确捕捉负面情绪方面存在挑战,这反映了表达对监管标准的批评的复杂性和细微差别。该研究强调了理解合规理性决策与监管内在冲突之间相互作用的重要性。本文还强调了深度学习模型如何潜在地增强“反洗钱”企业中的情感分析,使分析师能够根据财务情报制定决策和政策。然而,深度学习模型并不总是容易理解的。在分析不同AML数据集时,需要进一步研究提高深度学习模型的可理解性和可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling sentiments of the cullen commission: Exploring AML compliance and regulation through deep learning techniques
This paper examines the role of anti-money laundering (AML) regulations and compliance in combating money laundering and terrorist financing (ML/TF) in Canada. AML regulations establish guidelines for financial institutions to identify, prevent, and report suspicious activities. However, tensions often arise between AML compliance and regulation due to the challenges associated with implementing and adhering to AML regulations. This paper aims to investigate the sentiments expressed by individuals involved in AML compliance and regulation regarding the effectiveness of AML measures in the Canadian financial sector. The paper uses advanced deep learning (DL) methods like convolutional neural networks (CNN), recurrent neural networks with long short-term memory (RNN+LSTM), and pre-trained models like GloVe and BERT to explore emotions in the context of AML compliance and regulation. The findings indicate that DL models excel at accurately classifying sentiments from testimonies related to AML compliance and regulation. However, there are challenges in accurately capturing negative sentiments, which reflect the complexities and nuances associated with expressing criticisms about regulatory standards. The study emphasizes the importance of understanding the interplay between rational decision-making in compliance and the inherent conflicts with regulation. This article also highlights how DL models can potentially enhance sentiment analysis in the AML enterprise, enabling analysts to make decisions and policies based on financial intelligence. Nevertheless, DL models are not always easy to comprehend. Further research is needed to enhance the understandability and scalability of DL models when analyzing different AML datasets.
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