Temporal Collaborative Filtering with Bayesian Probabilistic Tensor Factorization

<p>Real-world relational data are seldom stationary, yet traditional collaborative filtering algorithms generally rely on this assumption. Motivated by our sales prediction problem, we propose a factor-based algorithm that is able to take time into account. By introducing additional factors for time, we formalize this problem as a tensor factorization with a special constraint on the time dimension. Further, we provide a fully Bayesian treatment to avoid tuning parameters and achieve automatic model complexity control. To learn the model we develop an e±cient sampling procedure that is capable of analyzing large-scale data sets. This new algorithm, called <em><em>Bayesian Probabilistic Tensor Factorization </em></em>(BPTF), is evaluated on several real-world problems including sales prediction and movie recommendation. Empirical results demonstrate the superiority of our temporal model.</p>