Learning from data with structured missingness
R. Mitra
Sarah F. McGough
Tapabrata (Rohan) Chakraborty
Chris Holmes
Ryan Copping
Niels Hagenbuch
Stefanie Biedermann
Jack Noonan
B. Lehmann
Aditi Shenvi
X. V. Doan
David Leslie
G. Bianconi
Rubén J. Sánchez-García
Alisha Davies
M. Mackintosh
E. Andrinopoulou
A. Basiri
Chris Harbron
Ben D. MacArthur

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.
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