模型提取攻击的分类研究

Didem Genç, Mustafa Özuysal, E. Tomur
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引用次数: 1

摘要

模型提取攻击的目的是克隆部署在云中的机器学习目标模型,仅通过以黑盒方式查询目标。一旦获得克隆,就有可能在本地模型的帮助下发动进一步的攻击。在本调查中,我们分析了现有的方法,并根据影响攻击效率和性能的几个重要方面对该领域进行了分类概述。我们展示了早期的作品和最近探索的方向。最后,我们根据机器学习方法的最新发展分析了未来的发展方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Taxonomic Survey of Model Extraction Attacks
A model extraction attack aims to clone a machine learning target model deployed in the cloud solely by querying the target in a black-box manner. Once a clone is obtained it is possible to launch further attacks with the aid of the local model. In this survey, we analyze existing approaches and present a taxonomic overview of this field based on several important aspects that affect attack efficiency and performance. We present both early works and recently explored directions. We conclude with an analysis of future directions based on recent developments in machine learning methodology.
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