2024
DOI: 10.1145/3640312
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Security and Privacy Issues in Deep Reinforcement Learning: Threats and Countermeasures

Kanghua Mo,
Peigen Ye,
Xiaojun Ren
et al.

Abstract: Deep Reinforcement Learning (DRL) is an essential subfield of Artificial Intelligence (AI), where agents interact with environments to learn policies for solving complex tasks. In recent years, DRL has achieved remarkable breakthroughs in various tasks, including video games, robotic control, quantitative trading, and autonomous driving. Despite its accomplishments, security and privacy-related issues still prevent us from deploying trustworthy DRL applications. For example, by manipulating the environment, an… Show more

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