articleAug 24, 2017GREEN OA

Personalizing Session-based Recommendations with Hierarchical Recurrent Neural Networks

MQMassimo QuadranaAKAlexandros KaratzoglouBHBalázs HidasiPCPaolo Cremonesi

Politecnico di Milano · Telefonica Research and Development

Indexed inarxivcrossref

Abstract

Session-based recommendations are highly relevant in many modern on-line services (e.g. e-commerce, video streaming) and recommendation settings. Recently, Recurrent Neural Networks have been shown to perform very well in session-based settings. While in many session-based recommendation domains user identifiers are hard to come by, there are also domains in which user profiles are readily available. We propose a seamless way to personalize RNN models with cross-session information transfer and devise a Hierarchical RNN model that relays end evolves latent hidden states of the RNNs across user sessions. Results on two industry datasets show large improvements over the session-only RNNs.

Citation impact

567
total citations
FWCI
68.85
Percentile
100%
References
13
Citations per year

Authors

4
  • MQ
    Massimo QuadranaCorresponding

    Politecnico di Milano

  • AK
    Alexandros Karatzoglou

    Telefonica Research and Development

  • BH
    Balázs Hidasi
  • PC
    Paolo Cremonesi

    Politecnico di Milano

Topics & keywords

Keywords
  • Recurrent neural network
  • Identifier
  • Artificial neural network
  • Key (lock)
  • Recommender system
  • Deep neural networks
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