Furletti B., Turini F.
Influence rules Ontology Artificial Intelligence Theoretical Computer Science Knowledge Discovery Computer Vision and Pattern Recognition
Ontologies allow us to represent knowledge and data in implicit and explicit ways. Implicit knowledge can be derived by means of several deductive logic-based processes. This paper introduces a new way for extracting implicit knowledge from ontologies by means of a sort of link analysis of the T-box of the ontology integrated with a data mining step on the A-box. The implicit extracted knowledge has the form of In uence Rules" i.e. rules structured as: if the property p1 of concept c1 has value v1, then the property p2 of concept c2 has value v2 with probability . The technique is completely general and applicable to whatever domain. The In uence Rules can be used to integrate existing knowledge or for supporting any other data mining process. A case study about an ontology describing intrusion detection is used to illustrate the result of the method.
Source: Intelligent data analysis 16 (2012): 513–534. doi:10.3233/IDA-2012-0536
Publisher: Elsevier Science, Inc.,, New York, NY , Stati Uniti d'America
@article{oai:it.cnr:prodotti:219061, title = {Knowledge discovery in ontologies}, author = {Furletti B. and Turini F.}, publisher = {Elsevier Science, Inc.,, New York, NY , Stati Uniti d'America}, doi = {10.3233/ida-2012-0536}, journal = {Intelligent data analysis}, volume = {16}, pages = {513–534}, year = {2012} }