Comprehending and Detecting Vulnerabilities using Adversarial Machine Learning Attacks

Charmee Mehta, Purvi Harniya, Sagar Kamat
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引用次数: 0

Abstract

In today’s world, machine learning is an emerging technology which is being used extensively in different domains. In order to offer effective solutions in the broad area of computer security with the use of machine learning (ML) models, applications which identify and protect against potential adversarial attacks are employed. In the ever-growing field of adversarial machine learning, attackers with different extents of accessibility to a machine learning model can launch a number of attacks to achieve their goals. Concurrently, ML models and algorithms are quite susceptible to various cybersecurity threats. In this paper, an in-depth survey has been carried out on the impact of cybersecurity in machine learning and the adversarial attacks which can be encountered in a ML based system.
使用对抗性机器学习攻击理解和检测漏洞
在当今世界,机器学习是一门新兴的技术,被广泛应用于不同的领域。为了利用机器学习(ML)模型在广泛的计算机安全领域提供有效的解决方案,采用了识别和防止潜在对抗性攻击的应用程序。在不断发展的对抗性机器学习领域中,对机器学习模型具有不同程度可访问性的攻击者可以发起许多攻击以实现其目标。同时,机器学习模型和算法很容易受到各种网络安全威胁。在本文中,对网络安全在机器学习中的影响以及在基于ML的系统中可能遇到的对抗性攻击进行了深入调查。
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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