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Domain-Sensitive Recommendation with User-Item Subgroup Analysis
Abstract:
Collaborative Filtering (CF) is one of the most successful recommendation
approaches to cope with information overload in the real world. However, typical
CF methods equally treat every user and item, and cannot distinguish the
variation of user's interests across different domains. This violates the reality that
user's interests always center on some specific domains, and the users having
similar tastes on one domain may have totally different tastes on another
domain. Motivated by the observation, in this paper, we propose a novel Domain-
sensitive Recommendation (DsRec) algorithm, to make the rating prediction by
exploring the user-item subgroup analysis simultaneously, in which a user-item
subgroup is deemed as a domain consisting of a subset of items with similar
attributes and a subset of users who have interests in these items. The proposed
framework of DsRec includes three components: a matrix factorization model for
the observed rating reconstruction, a bi-clustering model for the user-item
subgroup analysis, and two regularization terms to connect the above two
components into a unified formulation. Extensive experiments on Movielens-
100K and two real-world product review datasets show that our method achieves
the better performance in terms of prediction accuracy criterion over the state-
of-the-art methods.

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Domain sensitive recommendation with user-item subgroup analysis

  • 1. Domain-Sensitive Recommendation with User-Item Subgroup Analysis Abstract: Collaborative Filtering (CF) is one of the most successful recommendation approaches to cope with information overload in the real world. However, typical CF methods equally treat every user and item, and cannot distinguish the variation of user's interests across different domains. This violates the reality that user's interests always center on some specific domains, and the users having similar tastes on one domain may have totally different tastes on another domain. Motivated by the observation, in this paper, we propose a novel Domain- sensitive Recommendation (DsRec) algorithm, to make the rating prediction by exploring the user-item subgroup analysis simultaneously, in which a user-item subgroup is deemed as a domain consisting of a subset of items with similar attributes and a subset of users who have interests in these items. The proposed framework of DsRec includes three components: a matrix factorization model for the observed rating reconstruction, a bi-clustering model for the user-item subgroup analysis, and two regularization terms to connect the above two components into a unified formulation. Extensive experiments on Movielens- 100K and two real-world product review datasets show that our method achieves the better performance in terms of prediction accuracy criterion over the state- of-the-art methods.