English

Online Sparse Reinforcement Learning

Machine Learning 2021-02-11 v4 Statistics Theory Machine Learning Statistics Theory

Abstract

We investigate the hardness of online reinforcement learning in fixed horizon, sparse linear Markov decision process (MDP), with a special focus on the high-dimensional regime where the ambient dimension is larger than the number of episodes. Our contribution is two-fold. First, we provide a lower bound showing that linear regret is generally unavoidable in this case, even if there exists a policy that collects well-conditioned data. The lower bound construction uses an MDP with a fixed number of states while the number of actions scales with the ambient dimension. Note that when the horizon is fixed to one, the case of linear stochastic bandits, the linear regret can be avoided. Second, we show that if the learner has oracle access to a policy that collects well-conditioned data then a variant of Lasso fitted Q-iteration enjoys a nearly dimension-free regret of O~(s2/3N2/3)\tilde{O}( s^{2/3} N^{2/3}) where NN is the number of episodes and ss is the sparsity level. This shows that in the large-action setting, the difficulty of learning can be attributed to the difficulty of finding a good exploratory policy.

Keywords

Cite

@article{arxiv.2011.04018,
  title  = {Online Sparse Reinforcement Learning},
  author = {Botao Hao and Tor Lattimore and Csaba Szepesvári and Mengdi Wang},
  journal= {arXiv preprint arXiv:2011.04018},
  year   = {2021}
}

Comments

Accepted at AISTATS 2021