TY - GEN
T1 - Introspection-based Explainable Reinforcement Learning in Episodic and Non-episodic Scenarios
AU - Schroeter, Niclas
AU - Cruz, Francisco
AU - Wermter, Stefan
N1 - Publisher Copyright:
© 2022 Australasian Robotics and Automation Association. All rights reserved.
PY - 2022
Y1 - 2022
N2 - With the increasing presence of robotic systems and human-robot environments in today's society, understanding the reasoning behind actions taken by a robot is becoming more important. To increase this understanding, users are provided with explanations as to why a specific action was taken. Among other effects, these explanations improve the trust of users in their robotic partners. One option for creating these explanations is an introspection-based approach which can be used in conjunction with reinforcement learning agents to provide probabilities of success. These can in turn be used to reason about the actions taken by the agent in a human-understandable fashion. In this work, this introspection-based approach is developed and evaluated further on the basis of an episodic and a non-episodic robotics simulation task. Furthermore, an additional normalization step to the Q-values is proposed, which enables the usage of the introspection-based approach on negative and comparatively small Qvalues. Results obtained show the viability of introspection for episodic robotics tasks and, additionally, that the introspection-based approach can be used to generate explanations for the actions taken in a non-episodic robotics environment as well.
AB - With the increasing presence of robotic systems and human-robot environments in today's society, understanding the reasoning behind actions taken by a robot is becoming more important. To increase this understanding, users are provided with explanations as to why a specific action was taken. Among other effects, these explanations improve the trust of users in their robotic partners. One option for creating these explanations is an introspection-based approach which can be used in conjunction with reinforcement learning agents to provide probabilities of success. These can in turn be used to reason about the actions taken by the agent in a human-understandable fashion. In this work, this introspection-based approach is developed and evaluated further on the basis of an episodic and a non-episodic robotics simulation task. Furthermore, an additional normalization step to the Q-values is proposed, which enables the usage of the introspection-based approach on negative and comparatively small Qvalues. Results obtained show the viability of introspection for episodic robotics tasks and, additionally, that the introspection-based approach can be used to generate explanations for the actions taken in a non-episodic robotics environment as well.
UR - https://www.scopus.com/pages/publications/85149286580
M3 - Conference contribution
AN - SCOPUS:85149286580
T3 - Australasian Conference on Robotics and Automation, ACRA
BT - 2022 Australasian Conference on Robotics and Automation, ACRA 2022
PB - Australasian Robotics and Automation Association
T2 - 2022 Australasian Conference on Robotics and Automation, ACRA 2022
Y2 - 6 December 2022 through 8 December 2022
ER -