English

Learning Sparse Representations in Reinforcement Learning with Sparse Coding

Artificial Intelligence 2017-07-27 v1 Machine Learning Machine Learning

Abstract

A variety of representation learning approaches have been investigated for reinforcement learning; much less attention, however, has been given to investigating the utility of sparse coding. Outside of reinforcement learning, sparse coding representations have been widely used, with non-convex objectives that result in discriminative representations. In this work, we develop a supervised sparse coding objective for policy evaluation. Despite the non-convexity of this objective, we prove that all local minima are global minima, making the approach amenable to simple optimization strategies. We empirically show that it is key to use a supervised objective, rather than the more straightforward unsupervised sparse coding approach. We compare the learned representations to a canonical fixed sparse representation, called tile-coding, demonstrating that the sparse coding representation outperforms a wide variety of tilecoding representations.

Keywords

Cite

@article{arxiv.1707.08316,
  title  = {Learning Sparse Representations in Reinforcement Learning with Sparse Coding},
  author = {Lei Le and Raksha Kumaraswamy and Martha White},
  journal= {arXiv preprint arXiv:1707.08316},
  year   = {2017}
}

Comments

6(+1) pages, 2 figures, International Joint Conference on Artificial Intelligence 2017