Information Directed Sampling for Sparse Linear Bandits
Machine Learning
2021-06-01 v1 Machine Learning
Statistics Theory
Statistics Theory
Abstract
Stochastic sparse linear bandits offer a practical model for high-dimensional online decision-making problems and have a rich information-regret structure. In this work we explore the use of information-directed sampling (IDS), which naturally balances the information-regret trade-off. We develop a class of information-theoretic Bayesian regret bounds that nearly match existing lower bounds on a variety of problem instances, demonstrating the adaptivity of IDS. To efficiently implement sparse IDS, we propose an empirical Bayesian approach for sparse posterior sampling using a spike-and-slab Gaussian-Laplace prior. Numerical results demonstrate significant regret reductions by sparse IDS relative to several baselines.
Cite
@article{arxiv.2105.14267,
title = {Information Directed Sampling for Sparse Linear Bandits},
author = {Botao Hao and Tor Lattimore and Wei Deng},
journal= {arXiv preprint arXiv:2105.14267},
year = {2021}
}