Title :
Probabilistic non-negative tensor factorization using Markov chain Monte Carlo
Author :
Schmidt, Mikkel N. ; Mohamed, Shakir
Author_Institution :
Dept. of Eng., Univ. of Cambridge, Cambridge, UK
Abstract :
We present a probabilistic model for learning non-negative tensor factorizations (NTF), in which the tensor factors are latent variables associated with each data dimension. The non-negativity constraint for the latent factors is handled by choosing priors with support on the non-negative numbers. Two Bayesian inference procedures based on Markov chain Monte Carlo sampling are described: Gibbs sampling and Hamiltonian Markov chain Monte Carlo. We evaluate the model on two food science data sets, and show that the probabilistic NTF model leads to better predictions and avoids overfitting compared to existing NTF approaches.
Keywords :
Markov processes; Monte Carlo methods; belief networks; inference mechanisms; learning (artificial intelligence); sampling methods; tensors; Bayesian inference procedures; Gibbs sampling; Hamiltonian Markov chain Monte Carlo sampling; non-negativity constraint; probabilistic NTF model; probabilistic nonnegative tensor factorization; tensor factors; Bayes methods; Computational modeling; Data models; Markov processes; Monte Carlo methods; Probabilistic logic; Tensile stress;
Conference_Titel :
Signal Processing Conference, 2009 17th European
Conference_Location :
Glasgow
Print_ISBN :
978-161-7388-76-7