Chapter 14

Elements of Multidimensional Stochastic Analysis

 

 

In this book, we have essentially restricted ourselves to one-dimensional processes. For the reader’s convenience, in this chapter we present a short overview of the main definitions and facts in the multidimensional case. Some of them are rather simple and natural generalizations of the facts already stated, other facts can be checked without any principal difficulties, while for a deeper understanding of some facts, additional, more exhaustive sources will be necessary.

14.1. Multidimensional Brownian motion

A random process

images

with values in the k-dimensional real space images, such that all coordinates Bi, i = 1,2,… ,k, are independent one-dimensional Brownian motions is called a k-dimensional (standard) Brownian motion.

The set imagest = imagestB of all random variables that depend only on the values of a k-dimensional Brownian B until moment t is called its history (or past) until moment t. If a random variable Ximagest, then X Bu − Bs for ...

Get Introduction to Stochastic Analysis: Integrals and Differential Equations now with the O’Reilly learning platform.

O’Reilly members experience books, live events, courses curated by job role, and more from O’Reilly and nearly 200 top publishers.