Home    Service    Karriere    Newsletter    Das Unternehmen    Produktsuche    E-Books   Shopping cart    English
Bücher | Mathematik | Lieferbare Titel | Machine Learning in Bioinformatics
 

Sachbuch

Für Dummies

Verdammt clever

Sybex

Little Black Books

ProPhysik

ChemistryViews

MaterialsViews

wileyPLUS

WileyOnline Library

Ernst & Sohn

mehr >>
Zhang, Yanqing / Rajapakse, Jagath C.
Machine Learning in Bioinformatics
Wiley Series in Bioinformatics

1. Auflage Dezember 2008
105,- Euro
2008. 456 Seiten, Hardcover
ISBN 978-0-470-11662-3 - John Wiley & Sons

Preis inkl. Mehrwertsteuer zzgl. Versandkosten.




Probekapitel

Jetzt kaufen

PrintPDF
E-Books sind auch über alle bekannten E-Book Shops erhältlich.


Kurzbeschreibung
Machine learning techniques such as Markov models, support vector machines, neural networks, graphical models, etc., have been successful in analyzing life science data because of their capabilities of handling randomness and uncertainties of data and noise and in generalization. This book compiles recent approaches in machine learning, showing promise in addressing different complex bioinformatics applications from prominent researchers in the field.

Aus dem Inhalt
Foreword.

Preface.

Contributors.

1 Feature Selection for Genomic and Proteomic Data Mining (Sun-Yuan Kung and Man-Wai Mak).

2 Comparing and Visualizing Gene Selection and Classification Methods for Microarray Data (Rajiv S. Menjoge and Roy E. Welsch).

3 Adaptive Kernel Classifiers Via Matrix Decomposition Updating for Biological Data Analysis (Hyunsoo Kim and Haesun Park).

4 Bootstrapping Consistency Method for Optimal Gene Selection from Microarray Gene Expression Data for Classification Problems (Shaoning Pang, Ilkka Havukkala, Yingjie Hu, and Nikola Kasabov).

5 Fuzzy Gene Mining: A Fuzzy-Based Framework for Cancer Microarray Data Analysis (Zhenyu Wang and Vasile Palade).

6 Feature Selection for Ensemble Learning and Its Application (Guo-Zheng Li and Jack Y. Yang).

7 Sequence-Based Prediction of Residue-Level Properties in Proteins (Shandar Ahmad, Yemlembam Hemjit Singh, Marcos J. Araúzo-Bravo, and Akinori Sarai).

8 Consensus Approaches to Protein Structure Prediction (Dongbo Bu, ShuaiCheng Li, Xin Gao, Libo Yu, Jinbo Xu, and Ming Li).

9 Kernel Methods in Protein Structure Prediction (Jayavardhana Gubbi, Alistair Shilton, and Marimuthu Palaniswami).

10 Evolutionary Granular Kernel Trees for Protein Subcellular Location Prediction (Bo Jin and Yan-Qing Zhang).

11 Probabilistic Models for Long-Range Features in Biosequences (Li Liao).

12 Neighborhood Profile Search for Motif Refinement (Chandan K. Reddy, Yao-Chung Weng, and Hsiao-Dong Chiang).

13 Markov/Neural Model for Eukaryotic Promoter Recognition (Jagath C. Rajapakse and Sy Loi Ho).

14 Eukaryotic Promoter Detection Based on Word and Sequence Feature Selection and Combination (Xudong Xie, Shuanhu Wu, and Hong Yan).

15 Feature Characterization and Testing of Bidirectional Promoters in the Human Genome--Significance and Applications in Human Genome Research (Mary Q. Yang, David C. King, and Laura L. Elnitski).

16 Supervised Learning Methods for MicroRNA Studies (Byoung-Tak Zhang and Jin-Wu Nam).

17 Machine Learning for Computational Haplotype Analysis (Phil H. Lee and Hagit Shatkay).

18 Machine Learning Applications in SNP-Disease Association Study (Pritam Chanda, Aidong Zhang, and Murali Ramanathan).

19 Nanopore Cheminformatics-Based Studies of Individual Molecular Interactions (Stephen Winters-Hilt).

20 An Information Fusion Framework for Biomedical Informatics (Srivatsava R. Ganta, Anand Narasimhamurthy, Jyotsna Kasturi, and Raj Acharya).

Index.

 





 

        

Seite empfehlen          RSS-Feeds         Druckversion         Sitemap

©2013 Wiley-VCH Verlag GmbH & Co. KGaA - Betreiber
http://www.wiley-vch.de - mailto: info@wiley-vch.de
Datenschutz