• DocumentCode
    3716289
  • Title

    Online Bayesian low-rank subspace learning from partial observations

  • Author

    P. V. Giampouras;A. A. Rontogiannis;K. E. Themelis;K. D. Koutroumbas

  • Author_Institution
    IAASARS, National Observatory of Athens, GR-15236, Penteli, Greece
  • fYear
    2015
  • Firstpage
    2526
  • Lastpage
    2530
  • Abstract
    Learning the underlying low-dimensional subspace from streaming incomplete high-dimensional observations data has attracted considerable attention lately. In this paper, we present a new computationally efficient Bayesian scheme for online low-rank subspace learning and matrix completion. The proposed scheme builds upon a properly defined hierarchical Bayesian model that explicitly imposes low rank to the latent subspace by assigning sparsity promoting Student-t priors to the columns of the subspace matrix. The new algorithm is fully automated and as corroborated by numerical simulations, provides higher estimation accuracy and a better estimate of the true subspace rank compared to state of the art methods.
  • Keywords
    "Bayes methods","Yttrium","Estimation","Europe","Approximation methods","Signal processing","Computational modeling"
  • Publisher
    ieee
  • Conference_Titel
    Signal Processing Conference (EUSIPCO), 2015 23rd European
  • Electronic_ISBN
    2076-1465
  • Type

    conf

  • DOI
    10.1109/EUSIPCO.2015.7362840
  • Filename
    7362840