机器学习系统不同发展阶段的安全威胁研究

A. D. Lahe, Guddi Singh
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摘要

近年来,机器学习被广泛应用于各种系统中,如医疗保健、图像处理、计算机视觉、分类等。机器学习算法已经表明,它可以解决接近人类或超越人类的复杂问题。但最近的研究表明,机器学习算法和模型容易受到各种攻击,从而危及系统的安全性。这些攻击很难被检测到,因为它们可以隐藏在机器学习管道的各个阶段的数据中而不被检测到。本调查旨在分析针对机器学习的各种安全攻击,并根据攻击在机器学习管道中的位置对其进行分类。本文将关注机器学习安全的各个方面,从训练阶段到测试阶段,而不是专注于一种类型的安全攻击。本文讨论了机器学习管道、攻击者的目标、攻击者的知识、对特定应用程序的攻击。本文还提出了机器学习安全攻击的未来研究范围。在这篇调查论文中,我们得出结论,机器学习管道本身容易受到不同的攻击,因此需要建立一个安全可靠的机器学习管道。我们的调查针对ML Pipeline阶段对这些安全攻击进行了详细分类。
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A Survey on Security Threats to Machine Learning Systems at Different Stages of its Pipeline
In recent years, Machine learning is being used in various systems in wide variety of applications like Healthcare, Image processing, Computer Vision, Classifications, etc. Machine learning algorithms have shown that it can solve complex problem-solving capabilities close to humans or beyond humans as well. But recent studies show that Machine Learning Algorithms and models are vulnerable to various attacks which compromise security the systems. These attacks are hard to detect because they can hide in data at various stages of machine learning pipeline without being detected. This survey aims to analyse various security attacks on machine learning and categorize them depending on position of attacks in machine learning pipeline. This paper will focus on all aspects of machine learning security at various stages from training phase to testing phase instead of focusing on one type of security attack. Machine Learning pipeline, Attacker’s goals, Attacker’s knowledge, attacks on specified applications are considered in this paper. This paper also presented future scope of research of security attacks in machine learning. In this Survey paper, we concluded that Machine Learning Pipeline itself is vulnerable to different attacks so there is need to build a secure and robust Machine Learning Pipeline. Our survey has categorized these security attacks in details with respect to ML Pipeline stages.
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