Analyzing public sentiments on the Cullen Commission inquiry into money laundering: harnessing deep learning in the AI of Things Era

M. Lokanan
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Abstract

This study employs deep learning methodologies to conduct sentiment analysis of tweets related to the Cullen Commission’s inquiry into money laundering in British Columbia. The investigation utilizes CNN, RNN + LSTM, GloVe, and BERT algorithms to analyze sentiment and predict sentiment classes in public reactions when the Commission was announced and after the final report’s release. Results reveal that the emotional class “joy” predominated initially, reflecting a positive response to the inquiry, while “sadness” and “anger” dominated after the report, indicating public dissatisfaction with the findings. The algorithms consistently predicted negative, neutral, and positive sentiments, with BERT showing exceptional precision, recall, and F1-scores. However, GloVe displayed weaker and less consistent performance. Criticisms of the Commission’s efforts relate to its inability to expose the full extent of money laundering, potentially influenced by biased testimonies and a narrow investigation scope. The public’s sentiments highlight the awareness raised by the Commission and underscore the importance of its recommendations in combating money laundering. Future research should consider broader stakeholder perspectives and objective assessments of the findings.
分析公众对库伦委员会洗钱调查的看法:在物联网时代利用深度学习
本研究采用深度学习方法,对库伦委员会调查不列颠哥伦比亚省洗钱活动的相关推文进行情感分析。调查利用 CNN、RNN + LSTM、GloVe 和 BERT 算法分析情感,并预测委员会宣布成立时和最终报告发布后公众反应中的情感类别。结果显示,情感类别 "喜悦 "最初占主导地位,反映了公众对调查的积极反应,而 "悲伤 "和 "愤怒 "在报告发布后占主导地位,表明公众对调查结果的不满。这些算法一致预测了负面、中性和正面情绪,其中 BERT 在精确度、召回率和 F1 分数方面表现优异。然而,GloVe 的表现较弱,且不太稳定。对委员会工作的批评涉及其无法全面揭露洗钱活动,这可能受到有偏见的证词和狭窄的调查范围的影响。公众的看法突出了委员会提高了人们的认识,并强调了其建议在打击洗钱方面的重要性。今后的研究应考虑更广泛的利益攸关方观点和对调查结果的客观评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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