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      Dionysius: A Framework for Modeling Hierarchical User Interactions in Recommender Systems

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          Abstract

          We address the following problem: How do we incorporate user item interaction signals as part of the relevance model in a large-scale personalized recommendation system such that, (1) the ability to interpret the model and explain recommendations is retained, and (2) the existing infrastructure designed for the (user profile) content-based model can be leveraged? We propose Dionysius, a hierarchical graphical model based framework and system for incorporating user interactions into recommender systems, with minimal change to the underlying infrastructure. We learn a hidden fields vector for each user by considering the hierarchy of interaction signals, and replace the user profile-based vector with this learned vector, thereby not expanding the feature space at all. Thus, our framework allows the use of existing recommendation infrastructure that supports content based features. We implemented and deployed this system as part of the recommendation platform at LinkedIn for more than one year. We validated the efficacy of our approach through extensive offline experiments with different model choices, as well as online A/B testing experiments. Our deployment of this system as part of the job recommendation engine resulted in significant improvement in the quality of retrieved results, thereby generating improved user experience and positive impact for millions of users.

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          An algorithmic framework for performing collaborative filtering

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            What we talk about when we talk about context

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              Context-Aware Recommender Systems

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                Author and article information

                Journal
                2017-06-12
                Article
                1706.03849
                a9aa73e5-faf3-422f-97c7-4b4602969157

                http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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                Custom metadata
                cs.SI cs.IR

                Social & Information networks,Information & Library science
                Social & Information networks, Information & Library science

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