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A0327
Title: Bayesian robust tensor completion via CP decomposition Authors:  Xiaohang Wang - Shenzhen Technology University (China) [presenting]
Philip Yu - The Education University of Hong Kong (Hong Kong)
Weidong Yang - Fudan University (China)
Jun Su - Sun Yat-sen University (China)
Abstract: The real-world tensor data are inevitably missing and corrupted with noise. Some models of the low-rank tensor factorization (LRTF) add an L1 norm or L2 norm to deal with the sparse or Gaussian noise. However, the real noise is usually complex. We propose a robust Bayesian tensor completion method, called MoG BTC-CP, which could impute the missing data and remove the complex noise simultaneously. The observed tensor is assumed to be the summation of a low-rank tensor and the noise. CP decomposition is proposed to extract the low-rank structure of the tensor. We assume that the noise follows a Mixture of Gaussian (MoG) distribution. A full Bayesian framework together with a Gibbs sampling algorithm is designed to estimate the model. Extensive experiments including synthetic data and real-life applications show that MoG BTC-CP outperforms the recently published leading tensor completion and denoising methods.