Self-normalized processes are of common occurrence in
probabilistic and statistical studies. A prototypical example is
Student's t-statistic introduced in 1908 by Gosset, whose portrait
is on the front cover. Due to the highly non-linear nature of these
processes, the theory experienced a long period of slow
development. In recent years there have been a number of important
advances in the theory and applications of self-normalized
processes. Some of these developments are closely linked to the
study of central limit theorems, which imply that self-normalized
processes are approximate pivots for statistical inference.
The present volume covers recent developments in the area,
including self-normalized large and moderate deviations, and laws
of the iterated logarithms for self-normalized martingales. This is
the first book that systematically treats the theory and
applications of self-normalization.
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