• DocumentCode
    81702
  • Title

    Sparsity and Infinite Divisibility

  • Author

    Amini, Amin ; Unser, Michael

  • Author_Institution
    Dept. of Electr. & Eng., Sharif Univ. of Technol., Tehran, Iran
  • Volume
    60
  • Issue
    4
  • fYear
    2014
  • fDate
    Apr-14
  • Firstpage
    2346
  • Lastpage
    2358
  • Abstract
    We adopt an innovation-driven framework and investigate the sparse/compressible distributions obtained by linearly measuring or expanding continuous-domain stochastic models. Starting from the first principles, we show that all such distributions are necessarily infinitely divisible. This property is satisfied by many distributions used in statistical learning, such as Gaussian, Laplace, and a wide range of fat-tailed distributions, such as student´s-t and α-stable laws. However, it excludes some popular distributions used in compressed sensing, such as the Bernoulli-Gaussian distribution and distributions, that decay like exp (- O(|x|p)) for 1 <; p <; 2. We further explore the implications of infinite divisibility on distributions and conclude that tail decay and unimodality are preserved by all linear functionals of the same continuous-domain process. We explain how these results help in distinguishing suitable variational techniques for statistically solving inverse problems like denoising.
  • Keywords
    Gaussian distribution; Laplace equations; compressed sensing; inverse problems; signal denoising; stochastic processes; α-stable laws; Bernoulli-Gaussian distribution; Laplace; compressed sensing; compressible distributions; continuous domain stochastic models; denoising; fat tailed distributions; infinite divisibility; inverse problems; linear functionals; sparse distributions; statistical learning; student´s-t laws; tail decay; Gaussian distribution; Mathematical model; Probability density function; Probability distribution; Stochastic processes; Technological innovation; Transforms; Decay gap; Lévy process; Lévy-Khinchine representation; infinite-divisibility; sparse stochastic process;
  • fLanguage
    English
  • Journal_Title
    Information Theory, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9448
  • Type

    jour

  • DOI
    10.1109/TIT.2014.2303475
  • Filename
    6728634