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Learning Relational Rules Rewards

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Seminar✓ Recording AvailableNeuroscience

Learning Relational Rules from Rewards

Guillermo Puebla

Dr

University of Bristol

Schedule
Wednesday, October 12, 2022

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Wednesday, October 12, 2022

11:00 AM America/Chicago

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Host: Analogical Minds

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Analogical Minds

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Abstract

Humans perceive the world in terms of objects and relations between them. In fact, for any given pair of objects, there is a myriad of relations that apply to them. How does the cognitive system learn which relations are useful to characterize the task at hand? And how can it use these representations to build a relational policy to interact effectively with the environment? In this paper we propose that this problem can be understood through the lens of a sub-field of symbolic machine learning called relational reinforcement learning (RRL). To demonstrate the potential of our approach, we build a simple model of relational policy learning based on a function approximator developed in RRL. We trained and tested our model in three Atari games that required to consider an increasingly number of potential relations: Breakout, Pong and Demon Attack. In each game, our model was able to select adequate relational representations and build a relational policy incrementally. We discuss the relationship between our model with models of relational and analogical reasoning, as well as its limitations and future directions of research.

Topics

Demon Attackatari gamesbreakoutcognitionfunction approximatorpongrelational policyrelational reinforcement learningrelational representations

About the Speaker

Guillermo Puebla

Dr

University of Bristol

Contact & Resources

Personal Website

guillermopuebla.github.io

@GuillermoPuebl6

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twitter.com/GuillermoPuebl6

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