Title :
Fuzzy clustering-based approach to derive hierarchical structures from folksonomies
Author :
Zahia, Marouf ; Mohamed, Benslimane Sidi
Author_Institution :
EEDIS Lab., Djillali Liabes Univ. of Sidi Bel Abbes, Sidi Bel Abbes, Algeria
Abstract :
Collaborative tagging systems have recently emerged as a powerful way to label and organize large collections of data. The informal social classification structure in these systems, also known as folksonomy, provides a convenient way to annotate resources by allowing users to use any keyword or tag that they find relevant. Although folksonomies and the respective tags often lack a context-independent and intersubjective definition of meaning, the assumption that the evolving structure of these digital records contains implicit evidences for the underlying semantics has been proven by successful approaches of making the emergent semantics explicit. In this paper we propose an approach for extracting ontological structures from folksonomies that exploits the power of fuzzy clustering using new similarity and generality measure. The fuzzy clustering process discovers ambiguous tags and disambiguates them all at once, and the new similarity measure gives more accurate results as it calculates co-occurrences based on distinct users and not only in the number of co-occurrences of two distinct words. The generated ontology can be used to enhance various tasks in the tagging systems, such as tag disambiguation, result visualization, and ontology evolution. Our experimental results on real world data sets show that our method can effectively learn the ontology structure from the folksonomies.
Keywords :
fuzzy set theory; ontologies (artificial intelligence); pattern classification; pattern clustering; ambiguous tags; collaborative tagging systems; folksonomies; fuzzy clustering process; fuzzy clustering-based approach; generated ontology; hierarchical structures; informal social classification structure; ontological structures; ontology evolution; tag disambiguation; Clustering algorithms; Context; Frequency measurement; Ontologies; Semantics; Tagging; Vectors; Collaborative tagging; folksonomies; fuzzy clustering; ontologies;
Conference_Titel :
Computer Systems and Applications (AICCSA), 2013 ACS International Conference on
Conference_Location :
Ifrane
DOI :
10.1109/AICCSA.2013.6616455