Authors
Borja Calvo, Josu Ceberio, Jose A Lozano
Publication date
2018/7/6
Conference
Proceedings of the Genetic and Evolutionary Computation Conference Companion
Pages
324-325
Publisher
ACM
Description
The statistical assessment of the empirical comparison of algorithms is an essential step in heuristic optimization. Classically, researchers have relied on the use of statistical tests. However, recently, concerns about their use have arisen and, in many fields, other (Bayesian) alternatives are being considered. For a proper analysis, different aspects should be considered. In this work we focus on the question: what is the probability of a given algorithm being the best? To tackle this question, we propose a Bayesian analysis based on the Plackett-Luce model over rankings that allows several algorithms to be considered at the same time.
Total citations
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Scholar articles
B Calvo, J Ceberio, JA Lozano - Proceedings of the genetic and evolutionary …, 2018