Structured Linear Contextual Bandits: A Sharp and Geometric Smoothed Analysis (2002.11332v1)
Abstract: Bandit learning algorithms typically involve the balance of exploration and exploitation. However, in many practical applications, worst-case scenarios needing systematic exploration are seldom encountered. In this work, we consider a smoothed setting for structured linear contextual bandits where the adversarial contexts are perturbed by Gaussian noise and the unknown parameter $\theta*$ has structure, e.g., sparsity, group sparsity, low rank, etc. We propose simple greedy algorithms for both the single- and multi-parameter (i.e., different parameter for each context) settings and provide a unified regret analysis for $\theta*$ with any assumed structure. The regret bounds are expressed in terms of geometric quantities such as Gaussian widths associated with the structure of $\theta*$. We also obtain sharper regret bounds compared to earlier work for the unstructured $\theta*$ setting as a consequence of our improved analysis. We show there is implicit exploration in the smoothed setting where a simple greedy algorithm works.
- Vidyashankar Sivakumar (5 papers)
- Zhiwei Steven Wu (143 papers)
- Arindam Banerjee (84 papers)