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Algorithmic High-Dimensional Robust Statistics

Algorithmic High-Dimensional Robust Statistics

Algorithmic High-Dimensional Robust Statistics

Authors:
Ilias Diakonikolas, University of Wisconsin-Madison
Daniel M. Kane, University of California, San Diego
Published:
September 2023
Availability:
Available
Format:
Hardback
ISBN:
9781108837811

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£44.99
GBP
Hardback
$59.99 USD
eBook

Robust statistics is the study of designing estimators that perform well even when the dataset significantly deviates from the idealized modeling assumptions, such as in the presence of model misspecification or adversarial outliers in the dataset. The classical statistical theory, dating back to pioneering works by Tukey and Huber, characterizes the information-theoretic limits of robust estimation for most common problems. A recent line of work in computer science gave the first computationally efficient robust estimators in high dimensions for a range of learning tasks. This reference text for graduate students, researchers, and professionals in machine learning theory, provides an overview of recent developments in algorithmic high-dimensional robust statistics, presenting the underlying ideas in a clear and unified manner, while leveraging new perspectives on the developed techniques to provide streamlined proofs of these results. The most basic and illustrative results are analyzed in each chapter, while more tangential developments are explored in the exercises.

  • Presents all key results and proofs in one place, with summaries of tangential results, creating a valuable reference for researchers and professionals
  • Explains the intricacies of outlier detection in high dimensions, allowing readers to understand which methods are guaranteed to work and which are not
  • Provides several exercises per chapter covering a broader range of topics within robust statistics

Reviews & endorsements

'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

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Product details

August 2023
Adobe eBook Reader
9781108950213
0 pages
This ISBN is for an eBook version which is distributed on our behalf by a third party.

Robust statistics is the study of designing estimators that perform well even when the dataset significantly deviates from the idealized modeling assumptions, such as in the presence of model misspecification or adversarial outliers in the dataset. The classical statistical theory, dating back to pioneering works by Tukey and Huber, characterizes the information-theoretic limits of robust estimation for most common problems. A recent line of work in computer science gave the first computationally efficient robust estimators in high dimensions for a range of learning tasks. This reference text for graduate students, researchers, and professionals in machine learning theory, provides an overview of recent developments in algorithmic high-dimensional robust statistics, presenting the underlying ideas in a clear and unified manner, while leveraging new perspectives on the developed techniques to provide streamlined proofs of these results. The most basic and illustrative results are analyzed in each chapter, while more tangential developments are explored in the exercises.

'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