BOOKS
BOOK SERIES
JOURNALS
PROCEEDINGS
TEACHING CASES
PAY-PER-VIEW
REFERENCE
E-RESOURCES
ABOUT IGI
BECOME AN AUTHOR/EDITOR  |   MAILING LIST  |   HOW TO ORDER  |   LIBRARY SUGGESTION | EXAMINATION REQUESTS/COURSE ADOPTION | DISTRIBUTORS
IGI Online Bookstore
Click here to PLAY Demo Click here to Start Search Search 30,000+ chapters, articles, and cases - available for download today!

IGI Global Online Symposium!



  Browse Our Bookstore
IGI Catalogs & Newsletters
Forthcoming Titles
Featured Book
By Category
Advanced Search

  Shop
My Profile
View My Cart

  Contact Us
IGI Global
Main Office
701 E. Chocolate Avenue
Hershey, PA 17033, USA
Tel: 717-533-8845 x100
Toll Free: 1-866-342-6657
Fax: 717-533-8661
    or 717-533-7115
 

Evolutionary Conceptual Clustering Based on Induced Pseudo-Metrics:
Our Price:    $30.00 US
Article #:    ITJ4749
Number of pages:    44-67 pages
Source:    International Journal on Semantic Web & Information Systems, Vol. 4, Issue 3
Author(s):    Fanizzi, Nicola; d'Amato, Claudia; Esposito, Floriana
Affiliation(s):    Universita degli studi di Bari, Italy; Universita degli studi di Bari, Italy; Universita degli studi di Bari, Italy

Order Now! This document will be delivered electronically. Terms of Delivery
 

Description
We present a method based on clustering techniques to detect possible/probable novel concepts or concept drift in a Description Logics knowledge base. The method exploits a semi-distance measure defined for individuals, that is based on a finite number of dimensions corresponding to a committee of discriminating features (concept descriptions). A maximally discriminating group of features is obtained with a randomized optimization method. In the algorithm, the possible clusterings are represented as medoids (w.r.t. the given metric) of variable length. The number of clusters is not required as a parameter, the method is able to find an optimal choice by means of evolutionary operators and a proper fitness function. An experimentation proves the feasibility of our method and its effectiveness in terms of clustering validity indices. With a supervised learning phase, each cluster can be assigned with a refined or newly constructed intensional definition expressed in the adopted language.

 
Books  |  Book Series  |  Journals  |  Proceedings  |  Teaching Cases  |  Pay-Per-View  |  Reference  |  E-Resources  |  About IGI
Become An Author/Editor  |  Mailing List  |  How To Order  |  Library Suggestion  |  Examination Requests

IGI Global - All Rights Reserved ©2001-2010