>The field of machine learning is progressing at a faster pace than ever before. Many organizations leverage machine learning tools to extract useful info'/> A survey of game theoretic approach for adversarial machine learning
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A survey of game theoretic approach for adversarial machine learning

机译:对抗机器学习游戏理论方法调查

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>The field of machine learning is progressing at a faster pace than ever before. Many organizations leverage machine learning tools to extract useful information from a massive amount of data. In particular, machine learning finds its application in cybersecurity that begins to enter the age of automation. However, machine learning applications in cybersecurity face unique challenges other domains rarely do—attacks from active adversaries. Problems in areas such as intrusion detection, banking fraud detection, spam filtering, and malware detection have to face ?challenges of adversarial attacks that modify data so that malicious instances would evade detection by the learning systems. The adversarial learning problem naturally resembles a game between the learning system and the adversary. In such a game, both players would attempt to play their best strategies against each other while maximizing their own payoffs. To solve the game, each player would search for an optimal strategy against the opponent based on the prediction of the opponent's strategy choice. The problem becomes even more complicated in settings where the learning system may have to deal with many adversaries of unknown types. Applying game‐theoretic approach, robust learning techniques have been developed to specifically address adversarial attacks and the preliminary results are promising. In this review, we summarize these results. > This article is categorized under: Technologies Machine Learning Fundamental Concepts of Data and Knowledge Key Design Issues in Data Mining
机译: >机器学习领域比以往任何时候都更快地进步。许多组织利用机器学习工具从大量数据中提取有用的信息。特别是,机器学习在开始进入自动化年龄的网络安全中找到其应用。然而,网络安全的机器学习应用面临着独特的挑战,其他域很少从活跃的对手攻击。入侵检测,银行欺诈检测,垃圾邮件过滤和恶意软件检测等领域的问题必须面对?修改数据的对抗攻击的挑战,使恶意实例避免了学习系统的检测。对抗学习问题自然地类似于学习系统与对手之间的游戏。在这样的游戏中,两名球员都会试图在最大化自己的收益的同时互相反对互相发挥最佳策略。为了解决游戏,每个玩家都基于对对手的战略选择的预测来搜索对对手的最佳策略。在学习系统可能必须处理未知类型的许多对手的环境中,问题变得更加复杂。应用游戏理论方法,已经开发出强大的学习技巧,以具体地解决对抗性攻击,初步结果是有前途的。在本次审查中,我们总结了这些结果。 > 本文分类为: 技术&机器学习 数据和知识的基本概念和数据挖掘中的关键设计问题

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