Kernel-based Data Fusion for Machine Learning [recurso electrónico] : Methods and Applications in Bioinformatics and Text Mining / by Shi Yu, Léon-Charles Tranchevent, Bart Moor, Yves Moreau.

Por: Yu, Shi [author.]Colaborador(es): Tranchevent, Léon-Charles [author.] | Moor, Bart [author.] | Moreau, Yves [author.] | SpringerLink (Online service)Tipo de material: TextoTextoSeries Studies in Computational Intelligence ; 345Editor: Berlin, Heidelberg : Springer Berlin Heidelberg, 2011Descripción: XIV, 214 p. online resourceTipo de contenido: text Tipo de medio: computer Tipo de portador: online resourceISBN: 9783642194061Tema(s): Engineering | Artificial intelligence | Bioinformatics | Engineering | Computational Intelligence | Artificial Intelligence (incl. Robotics) | Computational Biology/BioinformaticsFormatos físicos adicionales: Printed edition:: Sin títuloClasificación CDD: 006.3 Clasificación LoC:Q342Recursos en línea: Libro electrónicoTexto
Contenidos:
Introduction -- Rayleigh quotient-type problems in machine learning -- Ln-norm Multiple Kernel Learning and Least Squares Support VectorMachines -- Optimized data fusion for kernel k-means Clustering -- Multi-view text mining for disease gene prioritization and clustering -- Optimized data fusion for k-means Laplacian Clustering -- Weighted Multiple Kernel Canonical Correlation -- Cross-species candidate gene prioritization with MerKator -- Conclusion.
En: Springer eBooksResumen: Data fusion problems arise frequently in many different fields.  This book provides a specific introduction to data fusion problems using support vector machines. In the first part, this book begins with a brief survey of additive models and Rayleigh quotient objectives in machine learning, and then introduces kernel fusion as the additive expansion of support vector machines in the dual problem.  The second part presents several novel kernel fusion algorithms and some real applications in supervised and unsupervised learning. The last part of the book substantiates the value of the proposed theories and algorithms in MerKator, an open software to identify disease relevant genes based on the integration of heterogeneous genomic data sources in multiple species. The topics presented in this book are meant for researchers or students who use support vector machines. Several topics addressed in the book may also be interesting to computational biologists who want to tackle data fusion challenges in real applications. The background required of the reader is a good knowledge of data mining, machine learning and linear algebra.  
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Existencias
Tipo de ítem Biblioteca actual Colección Signatura Copia número Estado Fecha de vencimiento Código de barras
Libro Electrónico Biblioteca Electrónica
Colección de Libros Electrónicos Q342 (Browse shelf(Abre debajo)) 1 No para préstamo 375837-2001

Introduction -- Rayleigh quotient-type problems in machine learning -- Ln-norm Multiple Kernel Learning and Least Squares Support VectorMachines -- Optimized data fusion for kernel k-means Clustering -- Multi-view text mining for disease gene prioritization and clustering -- Optimized data fusion for k-means Laplacian Clustering -- Weighted Multiple Kernel Canonical Correlation -- Cross-species candidate gene prioritization with MerKator -- Conclusion.

Data fusion problems arise frequently in many different fields.  This book provides a specific introduction to data fusion problems using support vector machines. In the first part, this book begins with a brief survey of additive models and Rayleigh quotient objectives in machine learning, and then introduces kernel fusion as the additive expansion of support vector machines in the dual problem.  The second part presents several novel kernel fusion algorithms and some real applications in supervised and unsupervised learning. The last part of the book substantiates the value of the proposed theories and algorithms in MerKator, an open software to identify disease relevant genes based on the integration of heterogeneous genomic data sources in multiple species. The topics presented in this book are meant for researchers or students who use support vector machines. Several topics addressed in the book may also be interesting to computational biologists who want to tackle data fusion challenges in real applications. The background required of the reader is a good knowledge of data mining, machine learning and linear algebra.  

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