Title
Folksonomy query suggestion via users' search intent prediction
Abstract
Recently, social bookmarking systems have received surging an increasing attention in both academic and industrial communities. The main thrust of these Web 2.0 systems is their easy use that relies on simple intuitive process, allowing their users to label diverse resources with freely chosen keywords aka tags. The obtained collection are known under the nickname Folksonomy. As these systems grow larger, however, the users address the need of enhanced search facilities. Today, full-text search is supported, but the results are usually simply listed decreasingly by their upload date. Challenging research issue is therefore the development of suitable prediction framework to support users in effectively retrieving the resources matching their real search intents. The primary focus of this paper is to propose a new users' search intent prediction approach for query tag suggestion. Specifically, we adopted Hidden Markov Models and triadic concept analysis to predict users' search intents in a folksonomy. Carried out experiments emphasize the relevance of our proposal and open many issues.
Year
DOI
Venue
2011
10.1007/978-3-642-24764-4_34
FQAS
Keywords
Field
DocType
hidden markov models,real search intent,diverse resource,search intent,enhanced search facility,folksonomy query suggestion,search intent prediction approach,easy use,suitable prediction framework,full-text search,challenging research issue
Data mining,World Wide Web,Information retrieval,Computer science,Upload,Folksonomy,Search intent,Hidden Markov model,Formal concept analysis,AKA,Bookmarking
Conference
Volume
ISSN
Citations 
7022
0302-9743
0
PageRank 
References 
Authors
0.34
13
3
Name
Order
Citations
PageRank
Chiraz Trabelsi1488.32
Bilel Moulahi287.85
Sadok Ben Yahia3657124.02