English

Missing Data in Signal Processing and Machine Learning: Models, Methods and Modern Approaches

Signal Processing 2026-01-06 v3 Machine Learning

Abstract

This tutorial aims to provide signal processing (SP) and machine learning (ML) practitioners with vital tools, in an accessible way, to answer the question: How to deal with missing data? There are many strategies to handle incomplete signals. In this paper, we propose to group these strategies based on three common analytical tasks: i) missing-data imputation, ii) estimation with missing values and iii) prediction with missing values. We focus on methodological and experimental results through specific case studies on real-world applications. Promising and future research directions are also discussed. We hope that the proposed conceptual framework and the presentation of recent missing-data problems related will encourage researchers of the SP and ML communities to develop original methods and to efficiently deal with new applications involving missing data.

Keywords

Cite

@article{arxiv.2506.01696,
  title  = {Missing Data in Signal Processing and Machine Learning: Models, Methods and Modern Approaches},
  author = {Alexandre Hippert-Ferrer and Aude Sportisse and Amirhossein Javaheri and Mohammed Nabil El Korso and Daniel P. Palomar},
  journal= {arXiv preprint arXiv:2506.01696},
  year   = {2026}
}
R2 v1 2026-07-01T02:54:30.055Z