The Time Complexity of A* with Approximate Heuristics on Multiple-Solution Search Spaces

Loading...
Thumbnail Image
Can’t use the file because of accessibility barriers? Contact us with the title of the item, permanent link, and specifics of your accommodation need.

Date

2012

Journal Title

Journal ISSN

Volume Title

Publisher

AI Access Foundation
Association for the Advancement of Artificial Intelligence

Abstract

We study the behavior of the A* search algorithm when coupled with a heuristic h satisfying (1 - ∈1) h* ≤ h ≤ (1 + ∈2)h*, where ∈1, ∈2 2 [0; 1) are small constants and h* denotes the optimal cost to a solution. We prove a rigorous, general upper bound on the time complexity of A* search on trees that depends on both the accuracy of the heuristic and the distribution of solutions. Our upper bound is essentially tight in the worst case; in fact, we show nearly matching lower bounds that are attained even by non-adversarially chosen solution sets induced by a simple stochastic model. A consequence of our rigorous results is that the effective branching factor of the search will be reduced as long as ∈1 + ∈2 < 1 and the number of near-optimal solutions in the search tree is not too large. We go on to provide an upper bound for A* search on graphs and in this context establish a bound on running time determined by the spectrum of the graph. We then experimentally explore to what extent our rigorous upper bounds predict the behavior of A* in some natural, combinatorially-rich search spaces. We begin by applying A* to solve the knapsack problem with near-accurate admissible heuristics constructed from an efficient approximation algorithm for this problem. We additionally apply our analysis of A* search for the partial Latin square problem, where we can provide quite exact analytic bounds on the number of near-optimal solutions. These results demonstrate a dramatic reduction in effective branching factor of A* when coupled with near-accurate heuristics in search spaces with suitably sparse solution sets.

Description

Keywords

Citation

Journal

DOI

Link(s) to data and video for this item

Relation

Rights

Type

Article