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Concentration inequalities for functions of independent random
variables is an area of probability theory that has witnessed a
great revolution in the last few decades, and has applications in a
wide variety of areas such as machine learning, statistics,
discrete mathematics, and high-dimensional geometry. Roughly
speaking, if a function of many independent random variables does
not depend too much on any of the variables then it is concentrated
in the sense that with high probability, it is close to its
expected value. This book offers a host of inequalities to
illustrate this rich theory in an accessible way by covering the
key developments and applications in the field.
Concentration inequalities have been recognized as fundamental tools in several domains such as geometry of Banach spaces or random combinatorics. They also turn to be essential tools to develop a non asymptotic theory in statistics. This volume provides an overview of a non asymptotic theory for model selection. It also discusses some selected applications to variable selection, change points detection and statistical learning.
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