Explainability-based Debugging of Machine Learning for Vulnerability Discovery

Angelo Sotgiu, Maura Pintor, B. Biggio
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引用次数: 2

Abstract

Machine learning has been successfully used for increasingly complex and critical tasks, achieving high performance and efficiency that would not be possible for human operators. Unfortunately, recent studies have shown that, despite its power, this technology tends to learn spurious correlations from data, making it weak and susceptible to manipulation. Explainability techniques are often used to identify the most relevant features contributing to the decision. However, this is often done by taking examples one by one and trying to show the problem locally. To mitigate this issue, we propose in this paper a systematic method to leverage explainability techniques and build on their results to highlight problems in the model design and training. With an empirical analysis on the Devign dataset, we validate the proposed methodology with a CodeBERT model trained for vulnerability discovery, showing that, despite its impressive performances, spurious correlations consistently steer its decision.
基于可解释性的机器学习漏洞发现调试
机器学习已经成功地用于越来越复杂和关键的任务,实现了人类操作员无法实现的高性能和高效率。不幸的是,最近的研究表明,尽管这种技术很强大,但它往往会从数据中学习到虚假的相关性,这使得它很弱,容易被操纵。可解释性技术通常用于识别对决策有贡献的最相关的特征。然而,这通常是通过一个接一个地举例子,并试图在局部展示问题来完成的。为了缓解这一问题,我们在本文中提出了一种系统的方法来利用可解释性技术,并以其结果为基础来突出模型设计和训练中的问题。通过对Devign数据集的实证分析,我们使用经过漏洞发现训练的CodeBERT模型验证了所提出的方法,结果表明,尽管其性能令人印象深刻,但虚假相关性始终引导其决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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