Statistical and Machine Learning Approaches for Network Analysis provides an accessible framework for structurally analyzing graphs by bringing together known and novel approaches on graph classes and graph measures for classification. By providing different approaches based on experimental data, th
Statistical and Machine Learning Approaches for Network Analysis
β Scribed by Matthias Dehmer (ed.), Subhash C. Basak (ed.)
- Publisher
- Wiley
- Year
- 2012
- Tongue
- English
- Leaves
- 332
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Explore the multidisciplinary nature of complex networks through machine learning techniques
Statistical and Machine Learning Approaches for Network Analysis provides an accessible framework for structurally analyzing graphs by bringing together known and novel approaches on graph classes and graph measures for classification. By providing different approaches based on experimental data, the book uniquely sets itself apart from the current literature by exploring the application of machine learning techniques to various types of complex networks.
Comprised of chapters written by internationally renowned researchers in the field of interdisciplinary network theory, the book presents current and classical methods to analyze networks statistically. Methods from machine learning, data mining, and information theory are strongly emphasized throughout. Real data sets are used to showcase the discussed methods and topics, which include:
- A survey of computational approaches to reconstruct and partition biological networks
- An introduction to complex networks?measures, statistical properties, and models
- Modeling for evolving biological networks
- The structure of an evolving random bipartite graph
- Density-based enumeration in structured data
- Hyponym extraction employing a weighted graph kernel
Statistical and Machine Learning Approaches for Network Analysis is an excellent supplemental text for graduate-level, cross-disciplinary courses in applied discrete mathematics, bioinformatics, pattern recognition, and computer science. The book is also a valuable reference for researchers and practitioners in the fields of applied discrete mathematics, machine learning, data mining, and biostatistics.
Content:
Chapter 1 A Survey of Computational Approaches to Reconstruct and Partition Biological Networks (pages 1β43): Lipi Acharya, Thair Judeh and Dongxiao Zhu
Chapter 2 Introduction to Complex Networks: Measures, Statistical Properties, and Models (pages 45β75): Kazuhiro Takemoto and Chikoo Oosawa
Chapter 3 Modeling for Evolving Biological Networks (pages 77β108): Kazuhiro Takemoto and Chikoo Oosawa
Chapter 4 Modularity Configurations in Biological Networks with Embedded Dynamics (pages 109β129): Enrico Capobianco, Antonella Travaglione and Elisabetta Marras
Chapter 5 Influence of Statistical Estimators on the Large?Scale Causal Inference of Regulatory Networks (pages 131β152): Ricardo de Matos Simoes and Frank Emmert?Streib
Chapter 6 Weighted Spectral Distribution: A Metric for Structural Analysis of Networks (pages 153β189): Damien Fay, Hamed Haddadi, Andrew W. Moore, Richard Mortier, Andrew G. Thomason and Steve Uhlig
Chapter 7 The Structure of an Evolving Random Bipartite Graph (pages 191β215): Reinhard Kutzelnigg
Chapter 8 Graph Kernels (pages 217β243): Matthias Rupp
Chapter 9 Network?Based Information Synergy Analysis for Alzheimer Disease (pages 245β259): Xuewei Wang, Hirosha Geekiyanage and Christina Chan
Chapter 10 Density?Based Set Enumeration in Structured Data (pages 261β301): Elisabeth Georgii and Koji Tsuda
Chapter 11 Hyponym Extraction Employing a Weighted Graph Kernel (pages 303β325): Tim vor der Bruck
β¦ Subjects
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