Subgoal Search For Complex Reasoning Tasks
Abstract
Humans excel in solving complex reasoning tasks through a mental process of moving from one idea to a related one. Inspired by this, we propose Subgoal Search (kSubS) method. Its key component is a learned subgoal generator that produces a diversity of subgoals that are both achievable and closer to the solution. Using subgoals reduces the search space and induces a high-level search graph suitable for efficient planning. In this paper, we implement kSubS using a transformer-based subgoal module coupled with the classical best-first search framework. We show that a simple approach of generating -th step ahead subgoals is surprisingly efficient on three challenging domains: two popular puzzle games, Sokoban and the Rubik's Cube, and an inequality proving benchmark INT. kSubS achieves strong results including state-of-the-art on INT within a modest computational budget.
Cite
@article{arxiv.2108.11204,
title = {Subgoal Search For Complex Reasoning Tasks},
author = {Konrad Czechowski and Tomasz Odrzygóźdź and Marek Zbysiński and Michał Zawalski and Krzysztof Olejnik and Yuhuai Wu and Łukasz Kuciński and Piotr Miłoś},
journal= {arXiv preprint arXiv:2108.11204},
year = {2024}
}
Comments
NeurIPS 2021