Explainable Deep Reinforcement Learning Using Introspection in a Non-episodic Task
Ayala, Angel, Cruz, Francisco, Fernandes, Bruno, Dazeley, Richard
–arXiv.org Artificial Intelligence
Explainable reinforcement learning allows artificial agents to explain their behavior in a human-like manner aiming at non-expert end-users. An efficient alternative of creating explanations is to use an introspection-based method that transforms Q-values into probabilities of success used as the base to explain the agent's decision-making process. This approach has been effectively used in episodic and discrete scenarios, however, to compute the probability of success in non-episodic and more complex environments has not been addressed yet. In this work, we adapt the introspection method to be used in a non-episodic task and try it in a continuous Atari game scenario solved with the Rainbow algorithm. Our initial results show that the probability of success can be computed directly from the Q-values for all possible actions.
arXiv.org Artificial Intelligence
Aug-17-2021
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