UAI 1997
Algorithm Portfolio Design: Theory vs. Practice
Abstract
Stochastic algorithms are among the best for solving computationally hard search and reasoning problems. The runtime of such procedures is characterized by a random variable. Different algorithms give rise to different probability distributions. One can take advantage of such differences by combining several algorithms into a portfolio, and running them in parallel or interleaving them on a single processor. We provide a detailed evaluation of the portfolio approach on distributions of hard combinatorial search problems. We show under what conditions the protfolio approach can have a dramatic computational advantage over the best traditional methods.
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Context
- Venue
- Conference on Uncertainty in Artificial Intelligence
- Archive span
- 1985-2025
- Indexed papers
- 3717
- Paper id
- 519683231588987077