- 5 Résultats
prix le plus bas: € 149,35, prix le plus élevé: € 207,85, prix moyen: € 185,31
1
Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16)
Commander
sur Amazon.de (Intern. Bücher)
€ 207,85
Envoi: € 0,001
CommanderLien sponsorisé

Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16) - Livres de poche

2010, ISBN: 9783642067969

Springer, Taschenbuch, Auflage: Softcover reprint of hardcover 1st ed. 2006, 676 Seiten, Publiziert: 2010-11-22T00:00:01Z, Produktgruppe: Buch, Hersteller-Nr.: 254 black & white illustrat… Plus…

Frais d'envoiAuf Lager, Lieferung von Amazon. (EUR 0.00) Amazon.de
2
Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16)
Commander
sur Amazon.de (Intern. Bücher)
€ 166,70
Envoi: € 3,001
CommanderLien sponsorisé
Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16) - Livres de poche

2010, ISBN: 9783642067969

Springer, Taschenbuch, Auflage: Softcover reprint of hardcover 1st ed. 2006, 676 Seiten, Publiziert: 2010-11-22T00:00:01Z, Produktgruppe: Buch, Hersteller-Nr.: 254 black & white illustrat… Plus…

Frais d'envoiAuf Lager. Die angegebenen Versandkosten können von den tatsächlichen Kosten abweichen. (EUR 3.00) ausverkauf
3
Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16)
Commander
sur Amazon.de (Intern. Bücher)
€ 198,80
Envoi: € 3,001
CommanderLien sponsorisé
Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16) - Livres de poche

2010

ISBN: 9783642067969

Springer, Taschenbuch, Auflage: Softcover reprint of hardcover 1st ed. 2006, 676 Seiten, Publiziert: 2010-11-22T00:00:01Z, Produktgruppe: Buch, Hersteller-Nr.: 254 black & white illustrat… Plus…

Frais d'envoiDie angegebenen Versandkosten können von den tatsächlichen Kosten abweichen. (EUR 3.00)
4
Multi-Objective Machine Learning  Softcover reprint of hardcover 1st ed. 2006 - Jin, Yaochu
Commander
sur buchfreund.de
€ 149,35
Envoi: € 0,001
CommanderLien sponsorisé
Jin, Yaochu:
Multi-Objective Machine Learning Softcover reprint of hardcover 1st ed. 2006 - Livres de poche

2010, ISBN: 9783642067969

Edition reliée

Softcover reprint of hardcover 1st ed. 2006 Gepflegter, sauberer Zustand. 9902626/2 Versandkostenfreie Lieferung fuzzy systems,fuzzy system,neural network,decision tree,Support Vector Mac… Plus…

Frais d'envoiVersandkostenfrei innerhalb der BRD. (EUR 0.00) Buchpark GmbH, 14959 Trebbin
5
Multi-Objective Machine Learning - Jin, Yaochu
Commander
sur booklooker.de
€ 203,85
Envoi: € 0,001
CommanderLien sponsorisé
Jin, Yaochu:
Multi-Objective Machine Learning - Livres de poche

2010, ISBN: 9783642067969

Edition reliée

[PU: Springer Berlin], Gepflegter, sauberer Zustand. 9902626/2, DE, [SC: 0.00], gebraucht; sehr gut, gewerbliches Angebot, Softcover reprint of hardcover 1st ed. 2006, PayPal, Internation… Plus…

Frais d'envoiVersandkostenfrei, Versand nach Deutschland. (EUR 0.00) Buchpark GmbH

1Comme certaines plateformes ne transmettent pas les conditions d'expédition et que celles-ci peuvent dépendre du pays de livraison, du prix d'achat, du poids et de la taille de l'article, d'une éventuelle adhésion de la plateforme, d'une livraison directe par la plateforme ou via un prestataire tiers (Marketplace), etc. il est possible que les frais de livraison indiqués par eurolivre ne correspondent pas à ceux de la plateforme qui propose l'article.

Données bibliographiques du meilleur livre correspondant

Détails sur le livre
Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16)

Recently, increasing interest has been shown in applying the concept of Pareto-optimality to machine learning, particularly inspired by the successful developments in evolutionary multi-objective optimization. It has been shown that the multi-objective approach to machine learning is particularly successful to improve the performance of the traditional single objective machine learning methods, to generate highly diverse multiple Pareto-optimal models for constructing ensembles models and, and to achieve a desired trade-off between accuracy and interpretability of neural networks or fuzzy systems. This monograph presents a selected collection of research work on multi-objective approach to machine learning, including multi-objective feature selection, multi-objective model selection in training multi-layer perceptrons, radial-basis-function networks, support vector machines, decision trees, and intelligent systems.

Informations détaillées sur le livre - Multi-Objective Machine Learning (Studies in Computational Intelligence, Band 16)


EAN (ISBN-13): 9783642067969
ISBN (ISBN-10): 3642067964
Version reliée
Livre de poche
Date de parution: 2010
Editeur: Jin, Yaochu, Springer
676 Pages
Poids: 1,005 kg
Langue: eng/Englisch

Livre dans la base de données depuis 2012-03-01T10:06:16+01:00 (Zurich)
Page de détail modifiée en dernier sur 2024-02-12T13:09:46+01:00 (Zurich)
ISBN/EAN: 3642067964

ISBN - Autres types d'écriture:
3-642-06796-4, 978-3-642-06796-9
Autres types d'écriture et termes associés:
Auteur du livre: jin, yao
Titre du livre: machine learning, objective


Données de l'éditeur

Auteur: Yaochu Jin
Titre: Studies in Computational Intelligence; Multi-Objective Machine Learning
Editeur: Springer; Springer Berlin
660 Pages
Date de parution: 2010-11-22
Berlin; Heidelberg; DE
Imprimé / Fabriqué en
Poids: 1,021 kg
Langue: Anglais
213,99 € (DE)
219,99 € (AT)
236,00 CHF (CH)
POD
XIV, 660 p. 254 illus.

BC; Mathematical and Computational Engineering; Hardcover, Softcover / Technik/Allgemeines, Lexika; Mathematik für Ingenieure; Verstehen; Support Vector Machine; decision tree; evolution; fuzzy; fuzzy system; fuzzy systems; genetic algorithms; intelligent systems; learning; machine learning; model; multi-objective optimization; neural network; neural networks; optimization; Artificial Intelligence; Complex Systems; Statistical Physics and Dynamical Systems; Mathematical and Computational Engineering Applications; Artificial Intelligence; Complex Systems; Theoretical, Mathematical and Computational Physics; Künstliche Intelligenz; Kybernetik und Systemtheorie; Mathematische Physik; BB

Multi-Objective Clustering, Feature Extraction and Feature Selection.- Feature Selection Using Rough Sets.- Multi-Objective Clustering and Cluster Validation.- Feature Selection for Ensembles Using the Multi-Objective Optimization Approach.- Feature Extraction Using Multi-Objective Genetic Programming.- Multi-Objective Learning for Accuracy Improvement.- Regression Error Characteristic Optimisation of Non-Linear Models.- Regularization for Parameter Identification Using Multi-Objective Optimization.- Multi-Objective Algorithms for Neural Networks Learning.- Generating Support Vector Machines Using Multi-Objective Optimization and Goal Programming.- Multi-Objective Optimization of Support Vector Machines.- Multi-Objective Evolutionary Algorithm for Radial Basis Function Neural Network Design.- Minimizing Structural Risk on Decision Tree Classification.- Multi-objective Learning Classifier Systems.- Multi-Objective Learning for Interpretability Improvement.- Simultaneous Generation of Accurate and Interpretable Neural Network Classifiers.- GA-Based Pareto Optimization for Rule Extraction from Neural Networks.- Agent Based Multi-Objective Approach to Generating Interpretable Fuzzy Systems.- Multi-objective Evolutionary Algorithm for Temporal Linguistic Rule Extraction.- Multiple Objective Learning for Constructing Interpretable Takagi-Sugeno Fuzzy Model.- Multi-Objective Ensemble Generation.- Pareto-Optimal Approaches to Neuro-Ensemble Learning.- Trade-Off Between Diversity and Accuracy in Ensemble Generation.- Cooperative Coevolution of Neural Networks and Ensembles of Neural Networks.- Multi-Objective Structure Selection for RBF Networks and Its Application to Nonlinear System Identification.- Fuzzy Ensemble Design through Multi-Objective Fuzzy Rule Selection.- Applications of Multi-Objective Machine Learning.- Multi-Objective Optimisation for Receiver Operating Characteristic Analysis.- Multi-Objective Design of Neuro-Fuzzy Controllers for Robot Behavior Coordination.- Fuzzy Tuning for the Docking Maneuver Controller of an Automated Guided Vehicle.- A Multi-Objective Genetic Algorithm for Learning Linguistic Persistent Queries in Text Retrieval Environments.- Multi-Objective Neural Network Optimization for Visual Object Detection.

Autres livres qui pourraient ressembler au livre recherché:

Dernier livre similaire:
9783540330196 Multi-Objective Machine Learning (Vidar Thomee)


< pour archiver...