Open access peer-reviewed chapter

Learning Optimal Web Service Selections in Dynamic Environments when Many Quality-of-Service Criteria Matter

By Stéphane Dehousse, Stéphane Faulkner, Caroline Herssens, Ivan J. Jureta and Marcos Saerens

Published: January 1st 2009

DOI: 10.5772/6555

Downloaded: 3229

© 2009 The Author(s). Licensee IntechOpen. This chapter is distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike-3.0 License, which permits use, distribution and reproduction for non-commercial purposes, provided the original is properly cited and derivative works building on this content are distributed under the same license.

How to cite and reference

Link to this chapter Copy to clipboard

Cite this chapter Copy to clipboard

Stéphane Dehousse, Stéphane Faulkner, Caroline Herssens, Ivan J. Jureta and Marcos Saerens (January 1st 2009). Learning Optimal Web Service Selections in Dynamic Environments when Many Quality-of-Service Criteria Matter, Machine Learning Abdelhamid Mellouk and Abdennacer Chebira, IntechOpen, DOI: 10.5772/6555. Available from:

Embed this chapter on your site Copy to clipboard

<iframe src="http://www.intechopen.com/embed/machine_learning/learning_optimal_web_service_selections_in_dynamic_environments_when_many_quality-of-service_criteri" />

Embed this code snippet in the HTML of your website to show this chapter

chapter statistics

3229total chapter downloads

More statistics for editors and authors

Login to your personal dashboard for more detailed statistics on your publications.

Access personal reporting

Related Content

This Book

Next chapter

Model Selection for Ranking SVM Using Regularization Path

By Karina Zapien, Gilles Gasso, Thomas G&#228;rtner and St&#233;phane Canu

Related Book

First chapter

Wireless Networks Inductive Routing Based on Reinforcement Learning Paradigms

By Abdelhamid Mellouk

We are IntechOpen, the world's leading publisher of Open Access books. Built by scientists, for scientists. Our readership spans scientists, professors, researchers, librarians, and students, as well as business professionals. We share our knowledge and peer-reveiwed research papers with libraries, scientific and engineering societies, and also work with corporate R&D departments and government entities.

+3,550 Open Access Books

+57,400 Citations in Web of Science

+108,500 IntechOpen Authors and Academic Editors

+560,000 Unique visitors per month

More about us