Title
Learning Relevance of Web Resources across Domains to Make Recommendations
Abstract
Most traditional recommender systems focus on the objective of improving the accuracy of recommendations in a single domain. However, preferences of users may extend over multiple domains, especially in the Web where users often have browsing preferences that span across different sites, while being unaware of relevant resources on other sites. This work tackles the problem of recommending resources from various domains by exploiting the semantic content of these resources in combination with patterns of user browsing behavior. We overcome the lack of overlaps between domains by deriving connections based on the explored semantic content of Web resources. We present an approach that applies Support Vector Machines for learning the relevance of resources and predicting which ones are the most relevant to recommend to a user, given that the user is currently viewing a certain page. In real-world datasets of semantically-enriched logs of user browsing behavior at multiple Web sites, we study the impact of structure in generating accurate recommendations and conduct experiments that demonstrate the effectiveness of our approach.
Year
DOI
Venue
2013
10.1109/ICMLA.2013.144
ICMLA (2)
Keywords
Field
DocType
support vector machines,relevant resource,multiple web site,learning relevance,certain page,explored semantic content,web resources,web resource,accurate recommendation,multiple domain,different site,semantic content,information retrieval,recommender systems,learning artificial intelligence
World Wide Web,Information retrieval,Semantic Web Stack,Computer science,Web standards,Data Web,Semantic Web,Web modeling,Web navigation,Social Semantic Web,Web service
Conference
Citations 
PageRank 
References 
1
0.34
9
Authors
3
Name
Order
Citations
PageRank
Julia Hoxha1315.16
Peter Mika22049176.71
Roi Blanco387257.42