Continuum-armed Bandit Optimization with Batch Pairwise Comparison Oracles
Continuum-armed Bandit Optimization with Batch Pairwise Comparison Oracles
This paper studies a bandit optimization problem where the goal is to maximize a function $f(x)$ over $T$ periods for some unknown strongly concave function $f$. We consider a new pairwise comparison oracle, where the decision-maker chooses a pair of actions $(x, x')$ for a consecutive number of periods and then obtains an estimate of $f(x)-f(x')$. We show that such a pairwise comparison oracle finds important applications to joint pricing and inventory replenishment problems and network revenue management. The challenge in this bandit optimization is twofold. First, the decision-maker not only needs to determine a pair of actions $(x, x')$ but also a stopping time $n$ (i.e., the number of queries based on $(x, x')$). Second, motivated by our inventory application, the estimate of the difference $f(x)-f(x')$ is biased, which is different from existing oracles in stochastic optimization literature. To address these challenges, we first introduce a discretization technique and local polynomial approximation to relate this problem to linear bandits. Then we developed a tournament successive elimination technique to localize the discretized cell and run an interactive batched version of LinUCB algorithm on cells. We establish regret bounds that are optimal up to poly-logarithmic factors. Furthermore, we apply our proposed algorithm and analytical framework to the two operations management problems and obtain results that improve state-of-the-art results in the existing literature.
Xiangyu Chang、Xi Chen、Yining Wang、Zhiyi Zeng
计算技术、计算机技术
Xiangyu Chang,Xi Chen,Yining Wang,Zhiyi Zeng.Continuum-armed Bandit Optimization with Batch Pairwise Comparison Oracles[EB/OL].(2025-05-28)[2025-07-16].https://arxiv.org/abs/2505.22361.点此复制
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