Relational Data Clustering Models, Algorithms, and Applications
Auteurs : Long Bo, Zhang Zhongfei, Yu Philip S.
A culmination of the authors? years of extensive research on this topic, Relational Data Clustering: Models, Algorithms, and Applications addresses the fundamentals and applications of relational data clustering. It describes theoretic models and algorithms and, through examples, shows how to apply these models and algorithms to solve real-world problems.
After defining the field, the book introduces different types of model formulations for relational data clustering, presents various algorithms for the corresponding models, and demonstrates applications of the models and algorithms through extensive experimental results. The authors cover six topics of relational data clustering:
- Clustering on bi-type heterogeneous relational data
- Multi-type heterogeneous relational data
- Homogeneous relational data clustering
- Clustering on the most general case of relational data
- Individual relational clustering framework
- Recent research on evolutionary clustering
This book focuses on both practical algorithm derivation and theoretical framework construction for relational data clustering. It provides a complete, self-contained introduction to advances in the field.
Introduction. Models. Algorithms. Applications. Summary. References. Index.
Bo Long is a scientist at Yahoo! Labs in Sunnyvale, California.
Zhongfei Zhang is an associate professor in the computer science department at the State University of New York in Binghamton.
Philip S. Yu is a professor in the computer science department and the Wexler Chair in Information Technology at the University of Illinois in Chicago.
Date de parution : 09-2019
15.6x23.4 cm
Date de parution : 05-2010
Ouvrage de 196 p.
15.6x23.4 cm
Thèmes de Relational Data Clustering :
Mots-clés :
Data Set; Cluster Structures; Auxiliary Function; Updating Rule; Document Clusters; Relational Data Clustering; Semi-supervised Clustering; Bipartite Graph; Graph Partitioning; Evolutionary Clustering; Unsupervised Learning; MMRC; Word Clusters; Heterogeneous Relational; IGP; Nonnegative Matrix Factorization; Hidden Nodes; Tripartite Graph; Transition Probability Matrix; DP; Table Tab; Global Community Structures; Instance Nodes; TREC; Spectral Embeddings