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减少不平衡数据集中的手动标注负担:用于检测非法按摩店评论的主动学习

Reducing Manual Labeling Effort in Imbalanced Data Sets: Active Learning for Detecting Illicit Massage Business Reviews

Operations Research · 2026
被引 0
人大 AFT50UTD24ABS 4*

中文导读

研究提出一种基于强化学习的主动学习框架,通过智能选择最有信息量的评论进行专家标注,在数据有限且不平衡的情况下高效检测Yelp上的非法按摩店评论,减轻人工标注负担。

Abstract

Smarter Labeling to Detect Hidden Human Trafficking Risks Human trafficking investigators face the immense challenge of sifting through vast amounts of online data to uncover illicit activities. In their article, Reducing Manual Labeling Effort in Imbalanced Data Sets: Active Learning for Detecting Illicit Massage Business Reviews, Tobey, Mayorga, Bosisto, and Özaltın present a novel framework that uses reinforcement learning–based active learning to reduce the burden of manual data labeling, improving detection of illicit massage business reviews on Yelp. By strategically selecting the most informative reviews for expert annotation, the approach achieves strong performance despite limited and imbalanced data sets, easing the emotional and time costs of reviewing disturbing content. The study demonstrates that their method outperforms benchmark active learning strategies, remains effective even with large query batches, and generalizes across regions. Beyond combating human trafficking, the framework offers a scalable solution for other domains with scarce, sensitive, or costly-to-label data.

主动学习机器学习人口贩卖检测不平衡数据