Learning and Testing Variable Partitions
Abstract
Let be a multivariate function from a product set to an Abelian group . A -partition of with cost is a partition of the set of variables into non-empty subsets such that is -close to for some with respect to a given error metric. We study algorithms for agnostically learning partitions and testing -partitionability over various groups and error metrics given query access to . In particular we show that Given a function that has a -partition of cost , a partition of cost can be learned in time for any . In contrast, for and learning a partition of cost is NP-hard. When is real-valued and the error metric is the 2-norm, a 2-partition of cost can be learned in time . When is -valued and the error metric is Hamming weight, -partitionability is testable with one-sided error and non-adaptive queries. We also show that even two-sided testers require queries when . This work was motivated by reinforcement learning control tasks in which the set of control variables can be partitioned. The partitioning reduces the task into multiple lower-dimensional ones that are relatively easier to learn. Our second algorithm empirically increases the scores attained over previous heuristic partitioning methods applied in this context.
Cite
@article{arxiv.2003.12990,
title = {Learning and Testing Variable Partitions},
author = {Andrej Bogdanov and Baoxiang Wang},
journal= {arXiv preprint arXiv:2003.12990},
year = {2020}
}
Comments
Innovations in Theoretical Computer Science (ITCS) 2020