Recent years have witnessed an explosion in the volume and variety of data collected in all scientific disciplines and industrial settings. Such massive data sets present a number of challenges to researchers in statistics and machine learning. This book provides a self-contained introduction to the area of high-dimensional statistics, aimed at the first-year graduate level. It includes chapters that are focused on core methodology and theory – including tail bounds, concentration inequalities, uniform laws and empirical process, and random matrices – as well as chapters devoted to in-depth exploration of particular model classes – including sparse linear models, matrix models with rank constraints, graphical models, and various types of non-parametric models. With hundreds of worked examples and exercises, this text is intended both for courses and for self-study by graduate students and researchers in statistics, machine learning, and related fields who must understand, apply, and adapt modern statistical methods suited to large-scale data.
High-Dimensional Statistics: A Non-Asymptotic Viewpoint (Cambridge Series in Statistical and Probabilistic Mathematics, Series Number 48)
$75.92
This book serves as an introduction to high-dimensional statistics for graduate-level students and researchers.
Additional information
| Weight | 1.202 lbs |
|---|---|
| Dimensions | 18.4 × 3.8 × 26 in |


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