ArXiv TLDR

High-Dimensional Statistics: Reflections on Progress and Open Problems

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2605.05076

Arian Maleki, Subhabrata Sen, Sivaraman Balakrishna, Verena Zuber, Chao Gao + 7 more

math.STstat.COstat.MEstat.ML

TLDR

This paper reviews two decades of high-dimensional statistics, highlighting key advances, challenges, and future directions.

Key contributions

  • Synthesizes representative advances in high-dimensional statistics.
  • Identifies common themes and significant open problems in the field.
  • Provides entry points to important works for new researchers.

Why it matters

High-dimensional statistics is crucial for analyzing modern complex datasets across various fields. This paper offers a timely synthesis of its rapid evolution, connecting it to optimization, random matrix theory, and more. It guides researchers through key advances and future challenges.

Original Abstract

Over the past two decades, the field of high-dimensional statistics has experienced substantial progress, driven largely by technological advances that have dramatically reduced the cost and effort for data collection and storage across a broad range of domains, including biology, medicine, astronomy, and the social and environmental sciences. Modern datasets are increasingly complex, often exhibiting rich dependency, heterogeneity, and other features that challenge traditional statistical methods. In response, high-dimensional statistics has evolved to address more sophisticated estimation and inference problems. This evolution has, in turn, fostered deep connections with and contributions to a wide range of research areas, including optimization, concentration of measure, random matrix theory, information theory, and theoretical computer science. Given the rapid pace of recent developments in high-dimensional statistics, our goal is to synthesize representative advances, highlight common themes and open problems, and point to important works that offer entry points into the field.

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