Fast decision tree learning solves hard coding-theoretic problems
Abstract
We connect the problem of properly PAC learning decision trees to the parameterized Nearest Codeword Problem (-NCP). Despite significant effort by the respective communities, algorithmic progress on both problems has been stuck: the fastest known algorithm for the former runs in quasipolynomial time (Ehrenfeucht and Haussler 1989) and the best known approximation ratio for the latter is (Berman and Karpinsky 2002; Alon, Panigrahy, and Yekhanin 2009). Research on both problems has thus far proceeded independently with no known connections. We show that improvement of Ehrenfeucht and Haussler's algorithm will yield -approximation algorithms for -NCP, an exponential improvement of the current state of the art. This can be interpreted either as a new avenue for designing algorithms for -NCP, or as one for establishing the optimality of Ehrenfeucht and Haussler's algorithm. Furthermore, our reduction along with existing inapproximability results for -NCP already rule out polynomial-time algorithms for properly learning decision trees. A notable aspect of our hardness results is that they hold even in the setting of learning whereas prior ones were limited to the setting of strong learning.
Cite
@article{arxiv.2409.13096,
title = {Fast decision tree learning solves hard coding-theoretic problems},
author = {Caleb Koch and Carmen Strassle and Li-Yang Tan},
journal= {arXiv preprint arXiv:2409.13096},
year = {2024}
}
Comments
31 pages, FOCS 2024