2022
DOI: 10.48550/arxiv.2201.02874
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Assessing Policy, Loss and Planning Combinations in Reinforcement Learning using a New Modular Architecture

Abstract: The model-based reinforcement learning paradigm, which uses planning algorithms and neural network models, has recently achieved unprecedented results in diverse applications, leading to what is now known as deep reinforcement learning. These agents are quite complex and involve multiple components, factors that can create challenges for research. In this work, we propose a new modular software architecture suited for these types of agents, and a set of building blocks that can be easily reused and assembled t… Show more

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