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Learning from data with structured missingness

Authors :
Mitra, Robin
McGough, Sarah F.
Chakraborti, Tapabrata
Holmes, Chris
Copping, Ryan
Hagenbuch, Niels
Biedermann, Stefanie
Noonan, Jack
Lehmann, Brieuc
Shenvi, Aditi
Doan, Xuan Vinh
Leslie, David
Bianconi, Ginestra
Sanchez-Garcia, Ruben
Davies, Alisha
Mackintosh, Maxine
Andrinopoulou, Eleni-Rosalina
Basiri, Anahid
Harbron, Chris
MacArthur, Ben D.
Publication Year :
2023

Abstract

Missing data are an unavoidable complication in many machine learning tasks. When data are `missing at random' there exist a range of tools and techniques to deal with the issue. However, as machine learning studies become more ambitious, and seek to learn from ever-larger volumes of heterogeneous data, an increasingly encountered problem arises in which missing values exhibit an association or structure, either explicitly or implicitly. Such `structured missingness' raises a range of challenges that have not yet been systematically addressed, and presents a fundamental hindrance to machine learning at scale. Here, we outline the current literature and propose a set of grand challenges in learning from data with structured missingness.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.01429
Document Type :
Working Paper