Reinforcement Learning Approaches in Social Robotics
Neziha Akalin, Amy Loutfi

TL;DR
This survey reviews reinforcement learning methods applied to social robots, analyzing their approaches, reward mechanisms, communication methods, and real-world interaction challenges to guide future research in social robotics.
Contribution
It provides a comprehensive categorization and analysis of reinforcement learning techniques, reward designs, and communication strategies in social robotics, highlighting challenges and future directions.
Findings
Categorizes RL approaches based on methods and reward design
Discusses communication mediums used for reward formulation
Identifies challenges and less-explored areas in real-world social robotics
Abstract
This article surveys reinforcement learning approaches in social robotics. Reinforcement learning is a framework for decision-making problems in which an agent interacts through trial-and-error with its environment to discover an optimal behavior. Since interaction is a key component in both reinforcement learning and social robotics, it can be a well-suited approach for real-world interactions with physically embodied social robots. The scope of the paper is focused particularly on studies that include social physical robots and real-world human-robot interactions with users. We present a thorough analysis of reinforcement learning approaches in social robotics. In addition to a survey, we categorize existent reinforcement learning approaches based on the used method and the design of the reward mechanisms. Moreover, since communication capability is a prominent feature of social…
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