Active Learning for Contextual Search with Binary Feedbacks
Abstract
In this paper, we study the learning problem in contextual search, which is motivated by applications such as first-price auction, personalized medicine experiments, and feature-based pricing experiments. In particular, for a sequence of arriving context vectors, with each context associated with an underlying value, the decision-maker either makes a query at a certain point or skips the context. The decision-maker will only observe the binary feedback on the relationship between the query point and the value associated with the context. We study a PAC learning setting, where the goal is to learn the underlying mean value function in context with a minimum number of queries. To address this challenge, we propose a tri-section search approach combined with a margin-based active learning method. We show that the algorithm only needs to make queries to achieve an -estimation accuracy. This sample complexity significantly reduces the required sample complexity in the passive setting, at least .
Keywords
Cite
@article{arxiv.2110.01072,
title = {Active Learning for Contextual Search with Binary Feedbacks},
author = {Xi Chen and Quanquan Liu and Yining Wang},
journal= {arXiv preprint arXiv:2110.01072},
year = {2022}
}