Recommender systems are software tools and techniques which aim at suggesting to users items they might be interested in. Context-aware recommender systems are a particular category of recommender systems which exploit contextual information to provide more adequate recommendations. However, recommendation engines still suffer from the cold-start problem, namely where not enough information about users and their ratings is available. In this paper we introduce a method for generating a list of top k recommendations in a new user cold-start situations. It is based on a user model called Contextual Conditional Preferences and utilizes a satisfiability measure proposed in this paper. We analyze accuracy measures as well as serendipity, novelty and diversity of results obtained using three context-aware publicly available datasets in comparison with several contextual and traditional state-of-the-art baselines. We show that our method is applicable in the new user cold-start situations as well as in typical scenarios.

Top k Recommendations using Contextual Conditional Preferences Model / Aleksandra, Karpus; Di Noia, Tommaso; Krzysztof, Goczyla. - (2017), pp. 19-28. (Intervento presentato al convegno Federated Conference on Computer Science and Information Systems, FedCSIS 2017 tenutosi a Prague, Czech Republic nel September 3-7, 2017) [10.15439/2017F258].

Top k Recommendations using Contextual Conditional Preferences Model

Di Noia, Tommaso;
2017-01-01

Abstract

Recommender systems are software tools and techniques which aim at suggesting to users items they might be interested in. Context-aware recommender systems are a particular category of recommender systems which exploit contextual information to provide more adequate recommendations. However, recommendation engines still suffer from the cold-start problem, namely where not enough information about users and their ratings is available. In this paper we introduce a method for generating a list of top k recommendations in a new user cold-start situations. It is based on a user model called Contextual Conditional Preferences and utilizes a satisfiability measure proposed in this paper. We analyze accuracy measures as well as serendipity, novelty and diversity of results obtained using three context-aware publicly available datasets in comparison with several contextual and traditional state-of-the-art baselines. We show that our method is applicable in the new user cold-start situations as well as in typical scenarios.
2017
Federated Conference on Computer Science and Information Systems, FedCSIS 2017
978-83-946253-7-5
Top k Recommendations using Contextual Conditional Preferences Model / Aleksandra, Karpus; Di Noia, Tommaso; Krzysztof, Goczyla. - (2017), pp. 19-28. (Intervento presentato al convegno Federated Conference on Computer Science and Information Systems, FedCSIS 2017 tenutosi a Prague, Czech Republic nel September 3-7, 2017) [10.15439/2017F258].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11589/117096
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