LGAISEOct 12, 2022

Explaining Online Reinforcement Learning Decisions of Self-Adaptive Systems

arXiv:2210.05931v115 citationsh-index: 48
Originality Synthesis-oriented
AI Analysis

This work addresses the need for increased trust and debugging in self-adaptive systems using Deep RL, which is crucial for developers but incremental in combining existing techniques.

The paper tackles the problem of explaining Deep Reinforcement Learning (Deep RL) decisions in self-adaptive systems, which are often black-box and hard to debug, by proposing XRL-DINE, a combined technique that enhances two existing explainable RL methods, and demonstrates its application with qualitative and quantitative results on a system exemplar.

Design time uncertainty poses an important challenge when developing a self-adaptive system. As an example, defining how the system should adapt when facing a new environment state, requires understanding the precise effect of an adaptation, which may not be known at design time. Online reinforcement learning, i.e., employing reinforcement learning (RL) at runtime, is an emerging approach to realizing self-adaptive systems in the presence of design time uncertainty. By using Online RL, the self-adaptive system can learn from actual operational data and leverage feedback only available at runtime. Recently, Deep RL is gaining interest. Deep RL represents learned knowledge as a neural network whereby it can generalize over unseen inputs, as well as handle continuous environment states and adaptation actions. A fundamental problem of Deep RL is that learned knowledge is not explicitly represented. For a human, it is practically impossible to relate the parametrization of the neural network to concrete RL decisions and thus Deep RL essentially appears as a black box. Yet, understanding the decisions made by Deep RL is key to (1) increasing trust, and (2) facilitating debugging. Such debugging is especially relevant for self-adaptive systems, because the reward function, which quantifies the feedback to the RL algorithm, must be defined by developers. The reward function must be explicitly defined by developers, thus introducing a potential for human error. To explain Deep RL for self-adaptive systems, we enhance and combine two existing explainable RL techniques from the machine learning literature. The combined technique, XRL-DINE, overcomes the respective limitations of the individual techniques. We present a proof-of-concept implementation of XRL-DINE, as well as qualitative and quantitative results of applying XRL-DINE to a self-adaptive system exemplar.

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