Publication | Open Access
Infinite Tucker Decomposition: Nonparametric Bayesian Models for Multiway Data Analysis
29
Citations
14
References
2011
Year
Infinite Tucker DecompositionEngineeringMachine LearningTucker DecompositionLatent ModelingData ScienceTensor DecompositionStatisticsBayesian Hierarchical ModelingMultiway Data AnalysisKnowledge DiscoveryMultidimensional AnalysisComputer ScienceDimensionality ReductionFunctional Data AnalysisMatrix FactorizationBusinessStatistical InferenceMultivariate AnalysisSemi-nonparametric Estimation
Tensor decomposition is a powerful computational tool for multiway data analysis. Many popular tensor decomposition approaches---such as the Tucker decomposition and CANDECOMP/PARAFAC (CP)---amount to multi-linear factorization. They are insufficient to model (i) complex interactions between data entities, (ii) various data types (e.g. missing data and binary data), and (iii) noisy observations and outliers. To address these issues, we propose tensor-variate latent nonparametric Bayesian models, coupled with efficient inference methods, for multiway data analysis. We name these models InfTucker. Using these InfTucker, we conduct Tucker decomposition in an infinite feature space. Unlike classical tensor decomposition models, our new approaches handle both continuous and binary data in a probabilistic framework. Unlike previous Bayesian models on matrices and tensors, our models are based on latent Gaussian or $t$ processes with nonlinear covariance functions. To efficiently learn the InfTucker from data, we develop a variational inference technique on tensors. Compared with classical implementation, the new technique reduces both time and space complexities by several orders of magnitude. Our experimental results on chemometrics and social network datasets demonstrate that our new models achieved significantly higher prediction accuracy than the most state-of-art tensor decomposition
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