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AAAI 2007

Combining Multiple Heuristics Online

Conference Paper Search and Metareasoning Artificial Intelligence

Abstract

We present black-box techniques for learning how to interleave the execution of multiple heuristics in order to improve average-case performance. In our model, a user is given a set of heuristics whose only observable behavior is their running time. Each heuristic can compute a solution to any problem instance, but its running time varies across instances. The user solves each instance by interleaving runs of the heuristics according to a task-switching schedule. We present (i) exact and approximation algorithms for computing an optimal task-switching schedule offline, (ii) sample complexity bounds for learning a task-switching schedule from training data, and (iii) a no-regret strategy for selecting task-switching schedules online. We demonstrate the power of our results using data from recent solver competitions. We outline how to extend our results to the case in which the heuristics are randomized, and the user may periodically restart each heuristic with a fresh random seed.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
444635721755100135