Algorithmic High-Dimensional Robust Statistics, 9781108837811
Hardcover
Surviving corrupted data: Robust, high-dimensional statistical estimation, made computationally efficient.

Algorithmic High-Dimensional Robust Statistics

$160.49

  • Hardcover

    300 pages

  • Release Date

    31 July 2023

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Summary

Algorithmic High-Dimensional Robust Statistics: A Modern Approach

Robust statistics focuses on creating estimators that maintain accuracy even when datasets stray from ideal modeling assumptions, such as model misspecification or adversarial outliers. While classical statistical theory has defined the information-theoretic limits of robust estimation for common problems, recent advancements in computer science have yielded the first computationally efficient robust estimators in hig…

Book Details

ISBN-13:9781108837811
ISBN-10:1108837816
Author:Ilias Diakonikolas, Daniel M. Kane
Publisher:Cambridge University Press
Imprint:Cambridge University Press
Format:Hardcover
Number of Pages:300
Release Date:31 July 2023
Weight:580g
Dimensions:236mm x 158mm x 22mm
What They're Saying

Critics Review

‘This is a timely book on efficient algorithms for computing robust statistics from noisy data. It presents lucid intuitive descriptions of the algorithms as well as precise statements of results with rigorous proofs - a nice combination indeed. The topic has seen fundamental breakthroughs over the last few years and the authors are among the leading contributors. The reader will get a ringside view of the developments.’ Ravi Kannan, Visiting Professor, Indian Institute of Science‘This volume was designed as a graduate textbook for a one-semester course, but it could also be useful for researchers and professionals in machine learning. While the foundational knowledge in computer science and statistics required is high, certain upper-level undergraduates could start their studies here. … Recommended.’ J. J. Meier, Choice

About The Author

Ilias Diakonikolas

Ilias Diakonikolas is an associate professor of computer science at the University of Wisconsin-Madison. His current research focuses on the algorithmic foundations of machine learning. Diakonikolas is a recipient of a number of research awards, including the best paper award at NeurIPS 2019.

Daniel M. Kane is an associate professor at the University of California, San Diego in the departments of Computer Science and Mathematics. He is a four-time Putnam Fellow and two-time IMO gold medallist. Kane’s research interests include number theory, combinatorics, computational complexity, and computational statistics.

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