Scalable Optimization via Probabilistic Modeling | From Algorithms to Applications | ISBN 9783642071164

Scalable Optimization via Probabilistic Modeling

From Algorithms to Applications

herausgegeben von Martin Pelikan, Kumara Sastry und Erick Cantú-Paz
Mitwirkende
Herausgegeben vonMartin Pelikan
Herausgegeben vonKumara Sastry
Herausgegeben vonErick Cantú-Paz
Buchcover Scalable Optimization via Probabilistic Modeling  | EAN 9783642071164 | ISBN 3-642-07116-3 | ISBN 978-3-642-07116-4

Scalable Optimization via Probabilistic Modeling

From Algorithms to Applications

herausgegeben von Martin Pelikan, Kumara Sastry und Erick Cantú-Paz
Mitwirkende
Herausgegeben vonMartin Pelikan
Herausgegeben vonKumara Sastry
Herausgegeben vonErick Cantú-Paz
I’m not usually a fan of edited volumes. Too often they are an incoherent hodgepodge of remnants, renegades, or rejects foisted upon an unsuspecting reading public under a misleading or fraudulent title. The volume Scalable Optimization via Probabilistic Modeling: From Algorithms to Applications is a worthy addition to your library because it succeeds on exactly those dimensions where so many edited volumes fail. For example, take the title, Scalable Optimization via Probabilistic M- eling: From Algorithms to Applications. You need not worry that you’re going to pick up this book and ? nd stray articles about anything else. This book focuseslikealaserbeamononeofthehottesttopicsinevolutionary compu- tion over the last decade or so: estimation of distribution algorithms (EDAs). EDAs borrow evolutionary computation’s population orientation and sel- tionism and throw out the genetics to give us a hybrid of substantial power, elegance, and extensibility. The article sequencing in most edited volumes is hard to understand, but from the get go the editors of this volume have assembled a set of articles sequenced in a logical fashion. The book moves from design to e? ciency enhancement and then concludes with relevant applications. The emphasis on e? ciency enhancement is particularly important, because the data-mining perspectiveimplicitinEDAsopensuptheworldofoptimizationtonewme- ods of data-guided adaptation that can further speed solutions through the construction and utilization of e? ective surrogates, hybrids, and parallel and temporal decompositions.