Title
Inferring Semantic Relations by User Feedback.
Abstract
In the last ten years, ontology-based recommender systems have been shown to be effective tools for predicting user preferences and suggesting items. There are however some issues associated with the ontologies adopted by these approaches, such as: 1) their crafting is not a cheap process, being time consuming and calling for specialist expertise; 2) they may not represent accurately the viewpoint of the targeted user community; 3) they tend to provide rather static models, which fail to keep track of evolving user perspectives. To address these issues, we propose Klink UM, an approach for extracting emergent semantics from user feedbacks, with the aim of tailoring the ontology to the users and improving the recommendations accuracy. Klink UM uses statistical and machine learning techniques for finding hierarchical and similarity relationships between keywords associated with rated items and can be used for: 1) building a conceptual taxonomy from scratch, 2) enriching and correcting an existing ontology, 3) providing a numerical estimate of the intensity of semantic relationships according to the users. The evaluation shows that Klink UM performs well with respect to handcrafted ontologies and can significantly increase the accuracy of suggestions in content-based recommender systems.
Year
Venue
Keywords
2014
Lecture Notes in Artificial Intelligence
Ontology,User Modelling,Recommender Systems,Ontology-based User Modelling,Data Mining,Ontology Learning,Community-based Ontologies
Field
DocType
Volume
Recommender system,Ontology (information science),Data mining,Ontology,World Wide Web,Computer science,Knowledge management,Ontology learning,Semantics
Conference
8876
ISSN
Citations 
PageRank 
0302-9743
1
0.40
References 
Authors
21
2
Name
Order
Citations
PageRank
Francesco Osborne120633.72
Enrico Motta24216391.29