Ontology Learning Process Using Fuzzy Formal Concept Analysis

Journal Title: INTERNATIONAL JOURNAL OF ENGINEERING TRENDS AND TECHNOLOGY - Year 2013, Vol 4, Issue 2

Abstract

 Currently reliable and appropriate information is difficult to find on the Internet. Bayesian networks were used earlier for probabilistic reasoning of unknown values and for determining knowledge representation. Various probabilistic approaches were used to represent uncertainty information. Typically, fuzzy ontology is generated from a predefined concept hierarchy. However, to construct a concept hierarchy for a certain domain manually can be a difficult and tedious task. To tackle this problem, this paper proposes the FOGA (Fuzzy Ontology Generation Framework) for automatic generation of fuzzy ontology on uncertainty information. The FOGA framework comprises the following components: Fuzzy Formal Concept Analysis, Concept Hierarchy Generation, and Fuzzy Ontology Generation. We also discuss approximating reasoning for incremental enrichment of the ontology with new upcoming data. This project describes some evaluation of information retrieval system designed to support fuzzy ontology based search refinement. The objective is to implement generation and learning of knowledge representation using fuzzy logic and ontology for reasoning. Fuzzy logic can be incorporated to ontology to represent uncertainty information. Finally automatic fuzzy ontology generation is proposed for knowledge domains like semantic web

Authors and Affiliations

J. JELSTEEN, 2 D. EVANGELIN, 3 J. ALICE PUSHPARANI, 4 J. NELSON SAMUEL JEBASTIN

Keywords

Related Articles

 Comparision Of Materials For Two-Wheeler Connecting Rod Using Ansys

 Connecting rod is a major link inside of a internal combustion engine. Its primary function is to transmit the push and pull from the piston pin to the crank pin thus converting the reciprocating motion of piston...

 An Empirical Study on Privacy Preserving Data Mining

 In modern years, advances in hardware expertise have lead to an increase in the competence to store and record personal data about consumers and individuals. This has lead to concerns that the personal data may be...

Supervised Machine (SVM) Learning for Credit Card Fraud Detection

The growth of e commerce increases the money transaction via electronic network which is designed for hassle free fast & easy money transaction. The facility involves greater risk of misuse for fraud one of them is c...

 Detection of Explosives Using Wireless Sensor Networks

 Automatic detection of explosives using wireless sensor networks monitors and tracks the IEDs that are placed by terrorists at public environments.The area under study is monitored in real time,collect data by th...

 A Review: Shadow Detection And Shadow Removal from Images.

 Shadows appear in remote sensing images due to elevated objects. Shadows cause hindrance to correct feature extraction of image features like buildings ,towers etc. in urban areas it may also cause false color...

Download PDF file
  • EP ID EP141010
  • DOI -
  • Views 127
  • Downloads 0

How To Cite

J. JELSTEEN, 2 D. EVANGELIN, 3 J. ALICE PUSHPARANI, 4 J. NELSON SAMUEL JEBASTIN (2013).  Ontology Learning Process Using Fuzzy Formal Concept Analysis. INTERNATIONAL JOURNAL OF ENGINEERING TRENDS AND TECHNOLOGY, 4(2), 148-152. https://europub.co.uk/articles/-A-141010