cs.AI updates on arXiv.org 10月08日 12:15
PAC框架保障决策树忠实度研究
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本文探讨使用PAC框架确保从AI模型中提取的决策树忠实度,通过实验揭示BERT语言模型中的职业性别偏见。

arXiv:2412.10513v2 Announce Type: replace Abstract: Decision trees are a popular machine learning method, known for their inherent explainability. In Explainable AI, decision trees can be used as surrogate models for complex black box AI models or as approximations of parts of such models. A key challenge of this approach is determining how accurately the extracted decision tree represents the original model and to what extent it can be trusted as an approximation of their behavior. In this work, we investigate the use of the Probably Approximately Correct (PAC) framework to provide a theoretical guarantee of fidelity for decision trees extracted from AI models. Based on theoretical results from the PAC framework, we adapt a decision tree algorithm to ensure a PAC guarantee under certain conditions. We focus on binary classification and conduct experiments where we extract decision trees from BERT-based language models with PAC guarantees. Our results indicate occupational gender bias in these models.

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PAC框架 决策树 AI模型 性别偏见 BERT
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