Title :
K-SVMeans: A Hybrid Clustering Algorithm for Multi-Type Interrelated Datasets
Author :
Bolelli, Levent ; Ertekin, Seyda ; Zhou, Ding ; Giles, C. Lee
Abstract :
Identification of distinct clusters of documents in text collections has traditionally been addressed by making the assumption that the data instances can only be represented by homogeneous and uniform features. Many real-world data, on the other hand, comprise of multiple types of heterogeneous interrelated components, such as web pages and hyperlinks, online scientific publications and authors and publication venues to name a few. In this paper, we present KSVMeans, a clustering algorithm for multi-type interrelated datasets that integrates the well known K-Means clustering with the highly popular Support Vector Machines. The experimental results on authorship analysis of two real world web-based datasets show that K-SVMeans can successfully discover topical clusters of documents and achieve better clustering solutions than homogeneous data clustering.
Keywords :
Clustering algorithms; Computer science; Data engineering; Educational institutions; Information services; Supervised learning; Support vector machine classification; Support vector machines; Web pages; Web sites;
Conference_Titel :
Web Intelligence, IEEE/WIC/ACM International Conference on
Conference_Location :
Fremont, CA
Print_ISBN :
978-0-7695-3026-0