Safety-Guaranteed, Accelerated Learning in MDPs with Local Side Information.

Pranay Thangeda, Melkior Ornik
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引用次数: 2

Abstract

In environments with uncertain dynamics, synthesis of optimal control policies mandates exploration. The applicability of classical learning algorithms to real-world problems is often limited by the number of time steps required for learning the environment model. Given some local side information about the differences in transition probabilities of the states, potentially obtained from the agent's onboard sensors, we generalize the idea of indirect sampling for accelerated learning to propose an algorithm that balances between exploration and exploitation. We formalize this idea by introducing the notion of the value of information in the context of a Markov decision process with unknown transition probabilities, as a measure of the expected improvement in the agent's current estimate of transition probabilities by taking a particular action. By exploiting available local side information and maximizing the estimated value of learned information at each time step, we accelerate the learning process and subsequent synthesis of the optimal control policy. Further, we define the notion of agent safety, a vital consideration for physical systems, in the context of our problem. Under certain assumptions, we provide guarantees on the safety of an agent exploring with our algorithm that exploits local side information. We illustrate agent safety and the improvement in learning speed using numerical experiments in the setting of a Mars rover, with data from onboard sensors acting as the local side information.

安全保证,加速学习在mdp与本地侧信息。
在动态不确定的环境中,最优控制策略的综合需要探索。经典学习算法对现实世界问题的适用性通常受到学习环境模型所需的时间步长的限制。给定一些关于状态转移概率差异的局部信息,这些信息可能来自智能体的机载传感器,我们推广了用于加速学习的间接抽样的思想,提出了一种平衡探索和开发之间的算法。我们通过在具有未知转移概率的马尔可夫决策过程中引入信息价值的概念来形式化这一思想,作为agent通过采取特定行动对当前转移概率估计的预期改进的度量。通过利用可用的局部侧信息和最大化每个时间步学习信息的估计值,我们加速了学习过程和随后的最优控制策略的综合。此外,我们在问题的上下文中定义了代理安全的概念,这是物理系统的重要考虑因素。在一定的假设下,我们利用我们的算法来保证代理探索的安全性。我们使用火星探测器设置的数值实验来说明智能体的安全性和学习速度的提高,其中来自机载传感器的数据作为局部信息。
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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CiteScore
2.40
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