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Reduce, Reuse, Recycle: Categories for Compositional Reinforcement Learning

Authors :
Bakirtzis, Georgios
Savvas, Michail
Zhao, Ruihan
Chinchali, Sandeep
Topcu, Ufuk
Publication Year :
2024

Abstract

In reinforcement learning, conducting task composition by forming cohesive, executable sequences from multiple tasks remains challenging. However, the ability to (de)compose tasks is a linchpin in developing robotic systems capable of learning complex behaviors. Yet, compositional reinforcement learning is beset with difficulties, including the high dimensionality of the problem space, scarcity of rewards, and absence of system robustness after task composition. To surmount these challenges, we view task composition through the prism of category theory -- a mathematical discipline exploring structures and their compositional relationships. The categorical properties of Markov decision processes untangle complex tasks into manageable sub-tasks, allowing for strategical reduction of dimensionality, facilitating more tractable reward structures, and bolstering system robustness. Experimental results support the categorical theory of reinforcement learning by enabling skill reduction, reuse, and recycling when learning complex robotic arm tasks.<br />Comment: ECAI 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.13376
Document Type :
Working Paper