際際滷

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Personal Information
Organization / Workplace
Barcelona Area, Spain Spain
Occupation
Researcher at Barcelona Digital Technology Centre
Industry
Technology / Software / Internet
About
Victor Codina obtained his bachelor degree in Computer Science in 2007 from Technical University of Catalonia (UPC), Spain, with a thesis on A video-content, personalized recommendation system. In 2009, he received his MSc degree in Artificial Intelligence from UPC, where he developed a travel recommender using as main recommendation technique a content-based strategy that exploits the taxonomical relations between item attributes defined in several domain ontologies. Currently, he is a PhD student (4th year) in the Artificial Intelligence program at UPC, working in his thesis Semantically-enhanced, context-aware recommendation systems. Especialidades: Context-aware recommenders; U
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Presentations(6)油

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Context-aware user modeling strategies for journey plan recommendation
Context-aware user modeling strategies for journey plan recommendationContext-aware user modeling strategies for journey plan recommendation
Context-aware user modeling strategies for journey plan recommendation
PhD defense - Exploiting distributional semantics for content-based and context-aware recommendation
PhD defense - Exploiting distributional semantics for content-based and context-aware recommendationPhD defense - Exploiting distributional semantics for content-based and context-aware recommendation
PhD defense - Exploiting distributional semantics for content-based and context-aware recommendation
際際滷s UMAP'13 paper "Exploiting the Semantic Similarity of Contextual Situations for Pre-filtering Recommendation"
際際滷s UMAP'13 paper "Exploiting the Semantic Similarity of Contextual Situations for Pre-filtering Recommendation" 際際滷s UMAP'13 paper "Exploiting the Semantic Similarity of Contextual Situations for Pre-filtering Recommendation"
際際滷s UMAP'13 paper "Exploiting the Semantic Similarity of Contextual Situations for Pre-filtering Recommendation"