SoCS 2011
Predicting Solution Cost with Conditional Probabilities
Abstract
Classical heuristic search algorithms find the solution cost of a problem while finding the path from the start state to a goal state. However, there are applications in which finding the path is not needed. In this paper we propose an algorithm that accurately and efficiently predicts the solution cost of a problem without finding the actual solution. We show empirically that our predictor makes more accurate predictions when compared to the bootstrapped heuristic, which is known to be a very accurate inadmissible heuristic. In addition, we show how our prediction algorithm can be used to enhance heuristic search algorithms. Namely, we use our predictor to calculate a bound for a bounded best-first search algorithm and to tune the w-value of Weighted IDA*. In both cases major search speedups were observed.
Authors
Keywords
Context
- Venue
- International Symposium on Combinatorial Search
- Archive span
- 2010-2024
- Indexed papers
- 598
- Paper id
- 48788303536690654