Arrow Research search
Back to SoCS

SoCS 2019

Revisiting Suboptimal Search

Conference Paper Long Papers Algorithms and Complexity · Artificial Intelligence · Automated Planning and Scheduling

Abstract

Suboptimal search algorithms can often solve much larger problems than optimal search algorithms, and thus have broad practical use. This paper returns to early algorithms like WA*, A*_e and Optimistic search. It studies the commonalities between these approaches in order to build a new bounded-suboptimal algorithm. Combined with recent research on avoiding node re-expansions in bounded-optimal search, a new solution quality bound is developed, which often provides proof of the solution bound much earlier during the search. Put together, these ideas provide a new state-of-the-art in bounded-optimal search.

Authors

Keywords

No keywords are indexed for this paper.

Context

Venue
International Symposium on Combinatorial Search
Archive span
2010-2024
Indexed papers
598
Paper id
202743844005117462