Biased Autoencoder for Collaborative Filtering with Temporal Signals

Published in Expert Systems with Applications, 2021

Recommended citation: Runliang Dou, Oguzhan Arslan, and Ce Zhang*, “Biased Autoencoder for Collaborative Filtering with Temporal Signals,” Expert Systems with Applications, Volume 186, 30 December 2021, 115775.

Abstract: Recommendation systems are used in various types of online platforms and in e-commerce. Collaborative filtering (CF) is one of the most popular approaches for recommendation systems and has been widely studied in academia. In recent years, several models based on neural networks that can discover nonlinear relationships have been proposed and compared to traditional CF models. The results showed that they performed better in terms of their prediction accuracy. However, these models do not consider user bias and item bias together, and they do not include temporal signals. This paper proposes a biased autoencoder model (Biased AutoRec) for CF, which is built on the well-known AutoRec CF approach. Several approaches are also proposed to integrate temporal signals into the Biased AutoRec model to merge the power of nonlinearity and temporal signals. Experiments on several public datasets showed that the new models outperformed the AutoRec model, which outperformed the prediction accuracy of previous state-of-the-art CF models (i.e., biased matrix factorization, RBM-CF, LLORMA).

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