威胁在空中:无线网络应用的机器学习

Luca Pajola, Luca Pasa, M. Conti
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引用次数: 8

摘要

随着无线应用的普及,每天都会产生大量的数据。由于它的弹性,机器学习正在成为这个领域的基础,许多应用程序都是利用它和它提供的几种技术开发的。然而,机器学习在不同的问题上受到影响,使用它的人通常没有意识到可能的威胁。通常,攻击者试图利用这些漏洞来获取利益;正因为如此,对抗性机器学习正在科学界得到广泛的研究。在本文中,我们展示了最先进的对抗技术和可能的对策,目的是警告人们注意与机器学习相关的合理论点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Threat is in the Air: Machine Learning for Wireless Network Applications
With the spread of wireless application, huge amount of data is generated every day. Thanks to its elasticity, machine learning is becoming a fundamental brick in this field, and many of applications are developed with the use of it and the several techniques that it offers. However, machine learning suffers on different problems and people that use it often are not aware of the possible threats. Often, an adversary tries to exploit these vulnerabilities in order to obtain benefits; because of this, adversarial machine learning is becoming wide studied in the scientific community. In this paper, we show state-of-the-art adversarial techniques and possible countermeasures, with the aim of warning people regarding sensible argument related to the machine learning.
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