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On the Interplay Between Sparsity and Training in Deep Reinforcement Learning

2025-01-28Unverified0· sign in to hype

Fatima Davelouis, John D. Martin, Michael Bowling

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Abstract

We study the benefits of different sparse architectures for deep reinforcement learning. In particular, we focus on image-based domains where spatially-biased and fully-connected architectures are common. Using these and several other architectures of equal capacity, we show that sparse structure has a significant effect on learning performance. We also observe that choosing the best sparse architecture for a given domain depends on whether the hidden layer weights are fixed or learned.

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