Abstract
Tensor factorization methods provide a useful way to extract latent factors from complex multirelational data, and also for predicting missing data. Developing tensor factorization methods for massive tensors, especially when the data are binary- or count-valued (which is true of most real-world tensors), however, remains a challenge. We develop a scalable probabilistic tensor factorization framework that enables us to perform efficient factorization of massive binary and count tensor data. The framework is based on (i) the Pólya-Gamma augmentation strategy which makes the model fully locally conjugate and allows closed-form parameter updates when data are binary- or count-valued; and (ii) an efficient online Expectation Maximization algorithm, which allows processing data in small mini-batches, and facilitates handling massive tensor data. Moreover, various types of constraints on the factor matrices (e.g., sparsity, non-negativity) can be incorporated under the proposed framework, providing good interpretability, which can be useful for qualitative analyses of the results. We apply the proposed framework on analyzing several binary-and count-valued real-world data sets.
Original language | English (US) |
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Title of host publication | IJCAI International Joint Conference on Artificial Intelligence |
Publisher | International Joint Conferences on Artificial [email protected] |
Pages | 3770-3776 |
Number of pages | 7 |
ISBN (Print) | 9781577357384 |
State | Published - Jan 1 2015 |
Externally published | Yes |