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Neurosymbolic Feature Extraction for Identifying Forced Labor in Supply Chains
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文章探讨了利用神经符号方法识别供应链中非法活动,对比了人工与机器从新闻中提取特征的效果,并提出了一种针对大型语言模型进行相关文章查询的问答树方法,以评估人工与机器在供应链强制劳动相关新闻分类上的差异。

arXiv:2507.07217v1 Announce Type: new Abstract: Supply chain networks are complex systems that are challenging to analyze; this problem is exacerbated when there are illicit activities involved in the supply chain, such as counterfeit parts, forced labor, or human trafficking. While machine learning (ML) can find patterns in complex systems like supply chains, traditional ML techniques require large training data sets. However, illicit supply chains are characterized by very sparse data, and the data that is available is often (purposely) corrupted or unreliable in order to hide the nature of the activities. We need to be able to automatically detect new patterns that correlate with such illegal activity over complex, even temporal data, without requiring large training data sets. We explore neurosymbolic methods for identifying instances of illicit activity in supply chains and compare the effectiveness of manual and automated feature extraction from news articles accurately describing illicit activities uncovered by authorities. We propose a question tree approach for querying a large language model (LLM) to identify and quantify the relevance of articles. This enables a systematic evaluation of the differences between human and machine classification of news articles related to forced labor in supply chains.

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供应链安全 非法活动检测 神经符号方法 新闻分析 大型语言模型
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