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Signal Decomposition Using Masked Proximal Operators Bennet E. Meyers

Signal Decomposition Using Masked Proximal Operators By Bennet E. Meyers

Signal Decomposition Using Masked Proximal Operators by Bennet E. Meyers


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Summary

Covers the problem of decomposing a vector time series signal into components with different characteristics, such as smooth, periodic, nonnegative, or sparse. A general framework in which the components are defined by loss functions, and the signal decomposition is carried out by minimizing the sum of losses of the components are included.

Signal Decomposition Using Masked Proximal Operators Summary

Signal Decomposition Using Masked Proximal Operators by Bennet E. Meyers

The decomposition of a time series signal into components is an age old problem, with many different approaches proposed, including traditional filtering and smoothing, seasonal-trend decomposition, Fourier and other decompositions, PCA and newer variants such as nonnegative matrix factorization, various statistical methods, and many heuristic methods.

In this monograph, the well-studied problem of decomposing a vector time series signal into components with different characteristics, such as smooth, periodic, nonnegative, or sparse are covered. A general framework in which the components are defined by loss functions (which include constraints), and the signal decomposition is carried out by minimizing the sum of losses of the components (subject to the constraints) are included. When each loss function is the negative log-likelihood of a density for the signal component, this framework coincides with maximum a posteriori probability (MAP) estimation; but it also includes many other interesting cases.

Summarizing and clarifying prior results, two distributed optimization methods for computing the decomposition are presented, which find the optimal decomposition when the component class loss functions are convex, and are good heuristics when they are not. Both methods require only the masked proximal operator of each of the component loss functions, a generalization of the well-known proximal operator that handles missing entries in its argument. Both methods are distributed, i.e., handle each component separately. Also included are tractable methods for evaluating the masked proximal operators of some loss functions that have not appeared in the literature.

Table of Contents

  • 1. Introduction
  • 2. Signal Decomposition
  • 3. Background and Related Work
  • 4. Solution Methods
  • 5. Component Class Attributes
  • 6. Component Class Examples
  • 7. Examples
  • Acknowledgements
  • Appendix
  • References

    Additional information

    NPB9781638281023
    9781638281023
    1638281025
    Signal Decomposition Using Masked Proximal Operators by Bennet E. Meyers
    New
    Paperback
    now publishers Inc
    2023-01-16
    92
    N/A
    Book picture is for illustrative purposes only, actual binding, cover or edition may vary.
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