• DocumentCode
    1756916
  • Title

    A Variational Bayes Framework for Sparse Adaptive Estimation

  • Author

    Themelis, Konstantinos E. ; Rontogiannis, Athanasios A. ; Koutroumbas, Konstantinos D.

  • Author_Institution
    Inst. for Astron., Astrophys., Space Applic. & RemoteSensing, Nat. Obs. of Athens, Athens, Greece
  • Volume
    62
  • Issue
    18
  • fYear
    2014
  • fDate
    Sept.15, 2014
  • Firstpage
    4723
  • Lastpage
    4736
  • Abstract
    Recently, a number of mostly l1-norm regularized least-squares-type deterministic algorithms have been proposed to address the problem of sparse adaptive signal estimation and system identification. From a Bayesian perspective, this task is equivalent to maximum a posteriori probability estimation under a sparsity promoting heavy-tailed prior for the parameters of interest. Following a different approach, this paper develops a unifying framework of sparse variational Bayes algorithms that employ heavy-tailed priors in conjugate hierarchical form to facilitate posterior inference. The resulting fully automated variational schemes are first presented in a batch iterative form. Then, it is shown that by properly exploiting the structure of the batch estimation task, new sparse adaptive variational Bayes algorithms can be derived, which have the ability to impose and track sparsity during real-time processing in a time-varying environment. The most important feature of the proposed algorithms is that they completely eliminate the need for computationally costly parameter fine-tuning, a necessary ingredient of sparse adaptive deterministic algorithms. Extensive simulation results are provided to demonstrate the effectiveness of the new sparse adaptive variational Bayes algorithms against state-of-the-art deterministic techniques for adaptive channel estimation. The results show that the proposed algorithms are numerically robust and exhibit in general superior estimation performance compared to their deterministic counterparts.
  • Keywords
    Bayes methods; adaptive estimation; adaptive signal processing; channel estimation; deterministic algorithms; inference mechanisms; iterative methods; least mean squares methods; maximum likelihood estimation; time-varying channels; variational techniques; adaptive channel estimation; automated variational scheme; batch estimation; batch iterative form; conjugate hierarchical form; l1-norm regularized least square type deterministic algorithm; maximum a posteriori probability estimation; posterior inference; sparse adaptive signal estimation; sparse adaptive variational Bayes algorithms; system identification; time-varying environment; Adaptation models; Adaptive estimation; Algorithm design and analysis; Bayes methods; Estimation; Signal processing algorithms; Vectors; Bayesian inference; Bayesian models; Laplace distribution; Sparse adaptive estimation; Student-t distribution; generalized inverse Gaussian distribution; online variational Bayes; sparse Bayesian learning;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2014.2338839
  • Filename
    6853356