This volume presents a collection of papers dealing with various aspects of clustering in biological networks and other related problems in computational biology. It consists of two parts, with the first part containing surveys of selected topics and the second part presenting original research contributions. This book will be a valuable source of material to faculty, students, and researchers in mathematical programming, data analysis and data mining, as well as people working in bioinformatics, computer science, engineering, and applied mathematics. In addition, the book can be used as a supplement to any course in data mining or computational/systems biology.
Sprache
Verlagsort
Zielgruppe
Für höhere Schule und Studium
Für Beruf und Forschung
Advanced undergraduate and graduate students in engineering, computer science, mathematics, and biology; researchers and practitioners in biological studies and data mining; nonexperts interested in investigating biological systems.
Maße
Höhe: 235 mm
Breite: 157 mm
Dicke: 23 mm
Gewicht
ISBN-13
978-981-277-165-0 (9789812771650)
Copyright in bibliographic data and cover images is held by Nielsen Book Services Limited or by the publishers or by their respective licensors: all rights reserved.
Schweitzer Klassifikation
A Novel Clustering Approach: Global Optimum Search with Enhanced Positioning (Tan & Floudas); Mathematical Programming Methods for Comparison Problems in Biocomputing (Oliveira); Classification vs. Clustering: Analyzing Gene Functionality (Perlich); A Projected Clustering Algorithm and Its Biological Application (Deng & Wu); Clique Relaxation Models of Clusters in Biological Networks (Butenko et al.); Analysis of Interaction Networks from Clusters of Co-expressed Genes: A Case Study on Inflammation (Androulakis et al.); Diversity Graphs (Blain et al.); Fixed-Parameter Algorithms for Graph-Modeled Data Clustering (Huffner et al.); Relating Subjective and Objective Pharmacovigilance Association Measures (Pearson); A Novel Similarity-based Modularity Function for Graph Partitioning (Feng et al.); Graph Algorithms for Integrated Biological Analysis, with Applications to Type 1 Diabetes Data (Eblen et al.); Graph Modeling for Clustering and Motif Findings in Biological Data (Zaslavsky & Sighn); Clustering Approach for Predicting Functions of Unknown mRNA Molecules from Their Dissipative Structures Observed in Glucose-Derepressed Saccharomyces cerevisiae (Sung et al.).