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Model Theory of Stochastic Processes (Lecture Notes in Logic 14)
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Product Details
Author:
Sergio Fajardo, H. Jerome Keisler
Format:
Paperback
Pages:
140
Publisher:
CRC Press (January 1, 2002)
Language:
English
ISBN-13:
9781568811727
ISBN-10:
1568811721
Weight:
8oz
Dimensions:
6" x 9"
File:
TAYLORFRANCIS-TayFran_260513043821732-20260513.xml
Folder:
TAYLORFRANCIS
List Price:
$65.99
Country of Origin:
United States
Case Pack:
55
As low as:
$62.69
Publisher Identifier:
P-CRC
Discount Code:
H
Pub Discount:
30
Imprint:
A K Peters/CRC Press
Overview
This book presents new research in probability theory using ideas from mathematical logic. It is a general study of stochastic processes on adapted probability spaces, employing the concept of similarity of stochastic processes based on the notion of adapted distribution. The authors use ideas from model theory and methods from nonstandard analysis. The construction of spaces with certain richness properties, defined by insights from model theory, becomes easy using nonstandard methods, but remains difficult or impossible without them.








