NEO 2016 NEO 2016

NEO 2016

Results of the Numerical and Evolutionary Optimization Workshop NEO 2016 and the NEO Cities 2016 Workshop held on September 20-24, 2016 in Tlalnepantla, Mexico

Yazmin Maldonado und andere
    • 87,99 €
    • 87,99 €

Beschreibung des Verlags

This volume comprises a selection of works presented at the Numerical and Evolutionary Optimization (NEO 2016) workshop held in September 2016 in Tlalnepantla, Mexico. The development of powerful search and optimization techniques is of great importance in today’s world and requires researchers and practitioners to tackle a growing number of challenging real-world problems. In particular, there are two well-established and widely known fields that are commonly applied in this area: (i) traditional numerical optimization techniques and (ii) comparatively recent bio-inspired heuristics. Both paradigms have their unique strengths and weaknesses, allowing them to solve some challenging problems while still failing in others.

The goal of the NEO workshop series is to bring together experts from these and related fields to discuss, compare and merge their complementary perspectives in order to develop fast and reliable hybrid methods that maximize the strengths and minimize the weaknesses of the underlying paradigms. In doing so, NEO promotes the development of new techniques that are applicable to a broader class of problems. Moreover, NEO fosters the understanding and adequate treatment of real-world problems particularly in emerging fields that affect all of us, such as healthcare, smart cities, big data, among many others. The extended papers presented in the book contribute to achieving this goal.   

GENRE
Computer und Internet
ERSCHIENEN
2017
12. September
SPRACHE
EN
Englisch
UMFANG
295
Seiten
VERLAG
Springer International Publishing
GRÖSSE
7,8
 MB

Mehr ähnliche Bücher

Mehr Bücher von Yazmin Maldonado, Leonardo Trujillo, Oliver Schütze, Annalisa Riccardi & Massimiliano Vasile

Numerical and Evolutionary Optimization – NEO 2017 Numerical and Evolutionary Optimization – NEO 2017
2018
NEO 2015 NEO 2015
2016