A Learning-Based Framework for Memory-Bounded Heuristic Search: First Results

Authors

  • Carlos Ulloa Universidad Andrés Bello
  • Jorge Baier Pontificia Universidad Católica de Chile
  • William Yeoh Washington University in St. Louis.
  • Vadim Bulitko University of Southern California
  • Sven Koenig University of Southern California

DOI:

https://doi.org/10.1609/socs.v10i1.18479

Abstract

Many existing boundedly-suboptimal heuristic search algorithms are variants of best-first search. Due to memory limitations, these algorithms are unable to solve problems with extremely large search spaces. In this paper, we present a framework that allows best-first search algorithms to solve problems with such large search spaces given a (reasonable) memory bound while also preserving optimality guarantees in tree-structured search spaces. In our framework, a given algorithm is run several times. In each search episode, the algorithm expands up to a user-defined number of states. After each episode, unless the goal has been found, the heuristic values of the generated states are updated using a linear-time algorithm that preserves consistency in tree-structured search spaces. In subsequent search episodes, only the heuristic values of the states generated in the previous episode need to be kept in memory. We present experimental results where we plug A*, GBFS, and wA* into our framework to solve traveling salesman problems and compare them against benchmark linear-memory algorithms like DFBnB and wDFBnB.

Downloads

Published

2021-09-01