**Convergence of Stochastic Processes**

by D. Pollard

**Publisher**: Springer 1984**ISBN/ASIN**: 1461297583**ISBN-13**: 9781461297581**Number of pages**: 223

**Description**:

An exposition od selected parts of empirical process theory, with related interesting facts about weak convergence, and applications to mathematical statistics. The high points of the book describe the combinatorial ideas needed to prove maximal inequalities for empirical processes indexed by classes of sets or classes of functions.

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