Prohibited Item Detection on Heterogeneous Risk Graphs

Yugang Ji, C. Shi, Xiao Wang
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引用次数: 7

Abstract

Prohibited item detection, which aims to detect illegal items hidden on e-commerce platforms, plays a significant role in evading risks and preventing crimes for online shopping. While traditional solutions usually focus on mining evidence from independent items, they cannot effectively utilize the rich structural relevance among different items. A naive idea is to directly deploy existing supervised graph neural networks to learn node representations for item classification. However, the very few manually labeled items with various risk patterns introduce two essential challenges: (1) How to enhance the representations of enormous unlabeled items? (2) How to enrich the supervised information in this few-labeled but multiple-pattern business scenario? In this paper, we construct item logs as a Heterogeneous Risk Graph (HRG), and propose the novel Heterogeneous Self-supervised Prohibited item Detection model (HSPD) to overcome these challenges. HSPD first designs the heterogeneous self-supervised learning model, which treats multiple semantics as the supervision to enhance item representations. Then, it presents the directed pairwise labeling to learn the distance from candidates to their most relevant prohibited seeds, which tackles the binary-labeled multi-patterned risks. Finally, HSPD integrates with self-training mechanisms to iteratively expand confident pseudo labels for enriching supervision. The extensive offline and online experimental results on three real-world HRGs demonstrate that HSPD consistently outperforms the state-of-the-art alternatives.
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异构风险图上的违禁物品检测
违禁物品检测,旨在发现隐藏在电子商务平台上的非法物品,在规避风险和预防网上购物犯罪方面发挥着重要作用。传统的解决方案通常侧重于从独立的项目中挖掘证据,不能有效地利用不同项目之间丰富的结构相关性。一个朴素的想法是直接部署现有的监督图神经网络来学习节点表示用于项目分类。然而,具有各种风险模式的极少数人工标记项目引入了两个基本挑战:(1)如何增强大量未标记项目的表示?(2)在这个标签少但模式多的业务场景中,如何丰富监督信息?本文将项目日志构建为异构风险图(HRG),并提出了新的异构自监督违禁项目检测模型(HSPD)来克服这些挑战。HSPD首先设计了异构自监督学习模型,该模型将多个语义作为监督来增强项目表征。然后,提出了有向两两标记,学习候选对象到最相关违禁种子的距离,解决了二元标记的多模式风险;最后,HSPD与自我训练机制相结合,迭代扩展自信伪标签,丰富监管内容。在三个真实的hrg上进行的大量离线和在线实验结果表明,HSPD始终优于最先进的替代方案。
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