Nonmyopic Multifidelity Active Search
Abstract
Active search is a learning paradigm where we seek to identify as many members of a rare, valuable class as possible given a labeling budget. Previous work on active search has assumed access to a faithful (and expensive) oracle reporting experimental results. However, some settings offer access to cheaper surrogates such as computational simulation that may aid in the search. We propose a model of multifidelity active search, as well as a novel, computationally efficient policy for this setting that is motivated by state-of-the-art classical policies. Our policy is nonmyopic and budget aware, allowing for a dynamic tradeoff between exploration and exploitation. We evaluate the performance of our solution on real-world datasets and demonstrate significantly better performance than natural benchmarks.
Keywords
Cite
@article{arxiv.2106.06356,
title = {Nonmyopic Multifidelity Active Search},
author = {Quan Nguyen and Arghavan Modiri and Roman Garnett},
journal= {arXiv preprint arXiv:2106.06356},
year = {2021}
}
Comments
To appear in ICML 2021