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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 |
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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. |