Automatic fuzzy ontology generation for semantic Web

@article{Quan2006AutomaticFO,
  title={Automatic fuzzy ontology generation for semantic Web},
  author={Thanh Tho Quan and Siu Cheung Hui and Alvis Cheuk M. Fong and Tru Hoang Cao},
  journal={IEEE Transactions on Knowledge and Data Engineering},
  year={2006},
  volume={18},
  pages={842-856}
}
  • T. Quan, S. C. Hui, T. Cao
  • Published 1 June 2006
  • Computer Science
  • IEEE Transactions on Knowledge and Data Engineering
Ontology is an effective conceptualism commonly used for the semantic Web. [] Key Method 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. Finally, a fuzzy-based technique for integrating other attributes of database to the ontology is proposed
Fuzzy Ontology Model for Knowledge Management
TLDR
Application of the fuzzy ontology to transportation knowledge modeling shows that this research facilitates the knowledge share and reuse for fuzzy systems on the semantic web.
Fuzzy Ontology Models Based on Fuzzy Linguistic Variable for Knowledge Management and Information Retrieval
TLDR
The application shows that these models can overcome the localization of other fuzzy ontology models, and this research facilitates the fuzzy knowledge sharing and semantic retrieval on the Semantic Web.
Fuzzy semantic web ontology learning from fuzzy UML model
TLDR
Since a fuzzy OWL DL ontology is equivalent to a fuzzy Description Logic f-SHOIN(D) knowledge base, how the reasoning problems of fuzzy UML models may be reasoned through reasoning mechanism of f- SHOIND is investigated, which can help to construct fuzzy ontologies more exactly.
A Fuzzy Ontology Generation Framework from Relational Schema
TLDR
This paper proposes a fuzzy ontology generation framework from relational schema which is characterized by the ability of representing n-ary relation and identification constraint on concepts and can be mapped to fuzzy description logic and fuzzy OWL.
Linguistic Variable Ontology and Its Application to Fuzzy Semantic Retrieval
TLDR
The application shows that the extended query can return all results which satisfy research requirement at semantic level without upgrading current main search algorithm, and this research facilitates the semantic retrieval through fuzzy concepts on the Semantic Web.
Fuzzy Knowledge Representation for Fuzzy Systems Based on Fuzzy Ontology on the Semantic Web
TLDR
Taking the fuzzy control system of industrial washing machine for example, the fuzzy system with ontology and RDF is built, which shows that this research enables distributed fuzzy applications on the Semantic Web.
Fuzzy ontology models using intuitionistic fuzzy set for knowledge sharing on the semantic web
TLDR
A series of fuzzy ontology models that consists of fuzzy domain ontology, using intuitionistic fuzzy set, and fuzzy linguistic variable ontologies, considering semantic relationships between fuzzy concepts, including set relation, order relation and equivalence relation are proposed.
A Fuzzy Integrated Ontology Model to Manage Uncertainty in Semantic Web: The FIOM
TLDR
This work proposes Fuzzy Integrated Ontology Model (FIOM) which aims to integrate fuzzy logic in design structure of ontology, so that it can handle vague and imprecise information.
Automatic Fuzzy Semantic Web Ontology Learning from Fuzzy Object-Oriented Database Model
TLDR
A formal approach and an automated tool for constructing fuzzy ontologies from fuzzy Object-Oriented database (FOOD) models are proposed and implemented and it is shown that the approach is feasible and the automated learning tool is efficient.
Fuzzy-Ontology-Enrichment-based Framework for Semantic Search
TLDR
A framework for semantic search based on ontology enrichment and fuzziness (FuzzOntoEnrichIR), which aims to integrate the domain ontology enriched and the fuzzy ontology building in the IR process.
...
1
2
3
4
5
...

References

SHOWING 1-10 OF 64 REFERENCES
Ontology Discovery for the Semantic Web Using Hierarchical Clustering
TLDR
This paper proposes that certain techniques employed in data mining tasks can be adopted to automatically discover and generate ontologies, and focuses on the conceptual clustering algorithm, COBWEB, and shows that it can be used to generate class hierarchies expressible in RDF Schema.
Ontology Learning for the Semantic Web
TLDR
The authors present an ontology learning framework that extends typical ontology engineering environments by using semiautomatic ontology construction tools and encompasses ontology import, extraction, pruning, refinement and evaluation.
FCA-MERGE: Bottom-Up Merging of Ontologies
TLDR
Techniques from natural language processing and formal concept analysis are applied to derive a lattice of concepts as a structural result of FCA-MERGE for merging ontologies following a bottom-up approach which offers a structural description of the merging process.
Discovery of ontologies from knowledge bases
TLDR
This paper considers large classification knowledge bases used for the interpretation of medical chemical pathology results and built using Ripple-Down Rules (RDR) and finds interesting ontologies from systems built without the ontology being explicit.
A fuzzy ontology-based abstract search engine and its user studies
  • D. H. Widyantoro, J. Yen
  • Computer Science
    10th IEEE International Conference on Fuzzy Systems. (Cat. No.01CH37297)
  • 2001
TLDR
A preliminary user study reveals that query refinement is one of the most important features of the PASS system, a Web-based, domain-specific search engine for searching abstracts of research papers.
Design and Creation of Ontologies for Environmental Information Retrieval1
TLDR
This work proposes an approach for designing an ontology for information retrieval based on: (a) the schemas of the databases; and (b) a collection of queries that are of interest to the users.
Ontology construction for information selection
  • L. Khan, Feng Luo
  • Computer Science
    14th IEEE International Conference on Tools with Artificial Intelligence, 2002. (ICTAI 2002). Proceedings.
  • 2002
TLDR
A new mechanism that can generate ontology automatically is proposed in order to make the approach scalable and it is observed that the modified SOTA outperforms hierarchical agglomerative clustering (HAC) and an automatic concept selection algorithm from WordNet called linguistic ontology is proposed.
Semantic Commitment for Designing Ontologies: A Proposal
TLDR
This article proposes to use a methodology introducing a clear semantic commitment to normalize the meaning of the concepts of ontologies, and implemented this methodology in an editor, DOE, complementary to other existing tools, and used it to develop several ontologies.
Ontologies and Knowledge Bases. Towards a Terminological Clarification
TLDR
It is argued for the need of clear terminological choices regarding the technical use of terms like "ontology", "conceptualization" and "ontological commitment" in the current debate in AI, and the possible confusion between an ontology intended as a particular conceptual framework at the knowledge level and a concrete artifact at the symbol level.
Creation and Merging of Ontology Top-Levels
We provide a new method for systematically structuring the top-down level of ontologies. It is based on an interactive, top-down knowledge acquisition process, which assures that the knowledge
...
1
2
3
4
5
...