On the Interplay Between Sparsity and Training in Deep Reinforcement Learning

Davelouis, Fatima, Martin, John D., Bowling, Michael

arXiv.org Artificial Intelligence 

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.