Publication | Open Access
Recurrent Latent Variable Networks for Session-Based Recommendation
34
Citations
27
References
2017
Year
Unknown Venue
Structured PredictionEngineeringMachine LearningSequential LearningAutoencodersSession-based RecommendationNatural Language ProcessingInformation RetrievalData ScienceSparse Neural NetworkNetwork Recurrent UnitsLarge Ai ModelData SparsityPredictive AnalyticsKnowledge DiscoveryConversational Recommender SystemComputer ScienceCold-start ProblemDeep LearningBayesian StatisticsCollaborative Filtering
In this work, we attempt to ameliorate the impact of data sparsity in the context of session-based recommendation. Specifically, we seek to devise a machine learning mechanism capable of extracting subtle and complex underlying temporal dynamics in the observed session data, so as to inform the recommendation algorithm. To this end, we improve upon systems that utilize deep learning techniques with recurrently connected units; we do so by adopting concepts from the field of Bayesian statistics, namely variational inference. Our proposed approach consists in treating the network recurrent units as stochastic latent variables with a prior distribution imposed over them. On this basis, we proceed to infer corresponding posteriors; these can be used for prediction and recommendation generation, in a way that accounts for the uncertainty in the available sparse training data. To allow for our approach to easily scale to large real-world datasets, we perform inference under an approximate amortized variational inference (AVI) setup, whereby the learned posteriors are parameterized via (conventional) neural networks. We perform an extensive experimental evaluation of our approach using challenging benchmark datasets, and illustrate its superiority over existing state-of-the-art techniques.
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