A Non-Parametric Learning Approach to Identify Online Human Trafficking
2016 IEEE Conference on Intelligence and Security Informatics (ISI)(2016)
摘要
Human trafficking is among the most challenging law enforcement problems which demands persistent fight against from all over the globe. In this study, we leverage readily available data from the website "Backpage"-- used for classified advertisement-- to discern potential patterns of human trafficking activities which manifest online and identify most likely trafficking related advertisements. Due to the lack of ground truth, we rely on two human analysts --one human trafficking victim survivor and one from law enforcement, for hand-labeling the small portion of the crawled data. We then present a semi-supervised learning approach that is trained on the available labeled and unlabeled data and evaluated on unseen data with further verification of experts.
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关键词
nonparametric learning approach,online human trafficking identification,law enforcement problems,Backpage,human trafficking activities,human trafficking victim survivor,hand-labeling,crawled data,semisupervised learning approach,unseen data,unlabeled data
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