Authors
Pascal Kerschke, Holger H Hoos, Frank Neumann, Heike Trautmann
Publication date
2019/3
Journal
Evolutionary computation
Volume
27
Issue
1
Pages
3-45
Publisher
MITP
Description
It has long been observed that for practically any computational problem that has been intensely studied, different instances are best solved using different algorithms. This is particularly pronounced for computationally hard problems, where in most cases, no single algorithm defines the state of the art; instead, there is a set of algorithms with complementary strengths. This performance complementarity can be exploited in various ways, one of which is based on the idea of selecting, from a set of given algorithms, for each problem instance to be solved the one expected to perform best. The task of automatically selecting an algorithm from a given set is known as the per-instance algorithm selection problem and has been intensely studied over the past 15 years, leading to major improvements in the state of the art in solving a growing number of discrete combinatorial problems, including propositional satisfiability and …
Total citations
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Scholar articles
P Kerschke, HH Hoos, F Neumann, H Trautmann - Evolutionary computation, 2019