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Overview

Sampling Theory, Signal Processing, and Data Analysis is a journal focusing on the mathematical aspects of sampling theory, signal processing, and data analysis.

  • Welcomes papers on the mathematics of data science and machine learning.
  • Encourages cross-disciplinary advances and interactions.
  • Publishes high-quality research papers, survey articles, and seminal theoretical papers.
  • Covers a wide range of topics from traditional Fourier analytic methods to cutting-edge techniques like Compressive Sensing, Atomic Decomposition, and Deep Learning.
  • The journal is a continuation of Sampling Theory in Signal and Image Processing.

 

This is a transformative journal, you may have access to funding.

Editors-in-Chief
  • Akram Aldroubi,
  • Zuhair Nashed,
  • Götz Pfander
Submission to first decision (median)
29 days
Downloads
36,279 (2023)

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Journal information

Electronic ISSN
2730-5724
Print ISSN
2730-5716
Abstracted and indexed in
  1. Astrophysics Data System (ADS)
  2. Baidu
  3. CLOCKSS
  4. CNKI
  5. CNPIEC
  6. Dimensions
  7. EBSCO
  8. Google Scholar
  9. Mathematical Reviews
  10. Naver
  11. OCLC WorldCat Discovery Service
  12. Portico
  13. ProQuest
  14. SCImago
  15. SCOPUS
  16. TD Net Discovery Service
  17. Wanfang
  18. zbMATH
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