深度强化学习系统的模糊化

Tiancheng Li, Xiaohui Wan, Muhammed Murat Özbek
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引用次数: 0

摘要

近年来,深度强化学习(deep reinforcement learning, DRL)技术发展迅速,其应用已经扩展到游戏、自动驾驶、金融交易、机器人控制等多个领域。随着DRL应用的扩展和丰富,DRL软件的质量保证变得越来越重要,特别是在安全关键领域。因此,为了保证DRL系统的可靠性和安全性,对DRL模型进行充分的测试是必要和迫切的。然而,由于两者的本质区别,传统的软件测试方法并不能直接应用于RL系统。为了弥补这一差距,我们在本提案中引入了一个新的DRL系统测试框架,该框架旨在生成各种可能导致DRL系统失败的测试用例。提出的测试框架是第一个用于系统测试DRL系统的模糊测试框架,我们称之为AgentFuzz。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AgentFuzz: Fuzzing for Deep Reinforcement Learning Systems
In recent years, deep reinforcement learning (DRL) technology has developed rapidly, and the application of DRL has been extended to many fields such as game gaming, au-tonomous driving, financial transactions, and robot control. As DRL applications expand and enrich, quality assurance of DRL software is increasingly important, especially in safety -critical areas. Therefore, it is necessary and urgent to adequately test DRL models to ensure the reliability and security of DRL systems. However, due to fundamental differences, traditional software testing methods cannot be directly applied to D RL systems. To bridge this gap, we introduce a new DRL system testing framework in this proposal, which aims to generate various test cases that can cause D RL systems to fail. The proposed testing framework is the first fuzzing framework for systematically testing DRL systems which we call AgentFuzz.
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