Linear Bandits with Limited Adaptivity and Learning Distributional Optimal Design
Linear Bandits with Limited Adaptivity and Learning Distributional Optimal Design
Motivated by practical needs such as large-scale learning, we study the impact of adaptivity constraints to linear contextual bandits, a central problem in online active learning. We consider two popular limited adaptivity models in literature: batch learning and rare policy switches. We show that, when the context vectors are adversarially chosen in $d$-dimensional linear contextual bandits, the learner needs $O(d \log d \log T)$ policy switches to achieve the minimax-optimal regret, and this is optimal up to $\mathrm{poly}(\log d, \log \log T)$ factors; for stochastic context vectors, even in the more restricted batch learning model, only $O(\log \log T)$ batches are needed to achieve the optimal regret. Together with the known results in literature, our results present a complete picture about the adaptivity constraints in linear contextual bandits. Along the way, we propose the distributional optimal design, a natural extension of the optimal experiment design, and provide a both statistically and computationally efficient learning algorithm for the problem, which may be of independent interest.
Yuan Zhou、Yufei Ruan、Jiaqi Yang
计算技术、计算机技术
Yuan Zhou,Yufei Ruan,Jiaqi Yang.Linear Bandits with Limited Adaptivity and Learning Distributional Optimal Design[EB/OL].(2020-07-03)[2025-08-17].https://arxiv.org/abs/2007.01980.点此复制
评论