Autoencoder-based personalized ranking framework unifying explicit and implicit feedback for accurate top-N recommendation

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Existing top-N recommendation models can be classified according to the following two criteria: way of optimization and type of data. In terms of optimization, the models can either minimize the mean squared error (MSE) of rating predictions, which is so-called pointwise learning, or maximize the likelihood of pairwise preferences over more preferred and less preferred items (e.g., rated and unrated items), which is so-called pairwise learning. According to the data type, the models use either explicit feedback or implicit feedback. Most existing models use one of the optimization methods with either explicit or implicit feedback. However, we believe that pairwise learning and pointwise learning (resp. using explicit and implicit feedback) are complementary, thus employing both optimization methods and both forms of data together would bring a synergy effect in recommendation. Along this line, we propose a novel, unified recommendation framework based on deep neural networks, in which the pointwise and pairwise learning are employed together while using both the users’ explicit and implicit feedback. The experimental results on four real-life datasets confirm the effectiveness of our proposed framework over the state-of-the-art ones.

论文关键词:Collaborative filtering,Top-N recommendation,Deep learning,Autoencoders

论文评审过程:Received 17 September 2018, Revised 23 March 2019, Accepted 23 March 2019, Available online 28 March 2019, Version of Record 7 May 2019.

论文官网地址:https://doi.org/10.1016/j.knosys.2019.03.026