ABSTRACT

Volume I of this two-volume text and reference work begins by providing a foundation in measure and integration theory. It then offers a systematic introduction to probability theory, and in particular, those parts that are used in statistics. This volume discusses the law of large numbers for independent and non-independent random variables, transforms, special distributions, convergence in law, the central limit theorem for normal and infinitely divisible laws, conditional expectations and martingales. Unusual topics include the uniqueness and convergence theorem for general transforms with characteristic functions, Laplace transforms, moment transforms and generating functions as special examples. The text contains substantive applications, e.g., epidemic models, the ballot problem, stock market models and water reservoir models, and discussion of the historical background. The exercise sets contain a variety of problems ranging from simple exercises to extensions of the theory.

chapter |25 pages

Introduction

chapter 1|99 pages

Measure Theory

chapter 2|52 pages

Probability Measures

chapter 3|97 pages

Integration

chapter |105 pages

Expectations And Moments

chapter 5|86 pages

Convergence in Law

chapter 6|44 pages

Conditional Expectations

chapter 7|63 pages

Martingales

chapter Prerequisites|21 pages

Prerequisites

chapter |4 pages

List of Symbols