Practical Graph Mining with R

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Adjacency List
Adjacency Matrix
advanced graph mining techniques
anomaly detection
Bibliographic Coupling
Category=UNF
Class Labels
Co-citation Matrix
computational biology
data clustering
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extracting patterns from graph data
Frequent Subgraph
graph data analysis
Graph Data Mining
graph kernels
Graph Mining
graph mining task
HSS
Hub Scores
Kernel Matrix
Kernel PCA
link and cluster analysis
Link Prediction
Maximal Clique
MDL
Mst
network analysis
Non-mutagenic Chemical Compounds
North Carolina State University
predictive modelling
Proximity Measures
Pseudocode Description
Roc Space
Support Vector Machines
Undirected Graph
unsupervised learning
Weighted Graph

Product details

  • ISBN 9781439860847
  • Weight: 1180g
  • Dimensions: 156 x 234mm
  • Publication Date: 15 Jul 2013
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Discover Novel and Insightful Knowledge from Data Represented as a GraphPractical Graph Mining with R presents a "do-it-yourself" approach to extracting interesting patterns from graph data. It covers many basic and advanced techniques for the identification of anomalous or frequently recurring patterns in a graph, the discovery of groups or clusters of nodes that share common patterns of attributes and relationships, the extraction of patterns that distinguish one category of graphs from another, and the use of those patterns to predict the category of new graphs.

Hands-On Application of Graph Data Mining
Each chapter in the book focuses on a graph mining task, such as link analysis, cluster analysis, and classification. Through applications using real data sets, the book demonstrates how computational techniques can help solve real-world problems. The applications covered include network intrusion detection, tumor cell diagnostics, face recognition, predictive toxicology, mining metabolic and protein-protein interaction networks, and community detection in social networks.

Develops Intuition through Easy-to-Follow Examples and Rigorous Mathematical Foundations
Every algorithm and example is accompanied with R code. This allows readers to see how the algorithmic techniques correspond to the process of graph data analysis and to use the graph mining techniques in practice. The text also gives a rigorous, formal explanation of the underlying mathematics of each technique.

Makes Graph Mining Accessible to Various Levels of Expertise
Assuming no prior knowledge of mathematics or data mining, this self-contained book is accessible to students, researchers, and practitioners of graph data mining. It is suitable as a primary textbook for graph mining or as a supplement to a standard data mining course. It can also be used as a reference for researchers in computer, information, and computational science as well as a handy guide for data analytics practitioners.

Nagiza F. Samatova is an associate professor of computer science at North Carolina State University and a senior research scientist at Oak Ridge National Laboratory.