An edition of Stochastic processes (2011)

Stochastic Processes

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Stochastic Processes
Richard F. Bass
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October 5, 2021 | History
An edition of Stochastic processes (2011)

Stochastic Processes

  • 0 Ratings
  • 4 Want to read
  • 0 Currently reading
  • 0 Have read

"This comprehensive guide to stochastic processes gives a complete overview of the theory and addresses the most important applications. Pitched at a level accessible to beginning graduate students and researchers from applied disciplines, it is both a course book and a rich resource for individual readers. Subjects covered include Brownian motion, stochastic calculus, stochastic differential equations, Markov processes, weak convergence of processes and semigroup theory. Applications include the Black-Scholes formula for the pricing of derivatives in financial mathematics, the Kalman-Bucy filter used in the US space program and also theoretical applications to partial differential equations and analysis. Short, readable chapters aim for clarity rather than full generality. More than 350 exercises are included to help readers put their new-found knowledge to the test and to prepare them for tackling the research literature"--

"In a first course on probability one typically works with a sequence of random variables X1,X2,... For stochastic processes, instead of indexing the random variables by the non-negative integers, we index them by t G [0, oo) and we think of Xt as being the value at time t. The random variable could be the location of a particle on the real line, the strength of a signal, the price of a stock, and many other possibilities as well. We will also work with increasing families of s -fields {J-t}, known as filtrations. The s -field J-t is supposed to represent what we know up to time t. 1.1 Processes and s -fields Let (Q., J-, P) be a probability space. A real-valued stochastic process (or simply a process) is a map X from [0, oo) x Q. to the reals. We write Xt = Xt(?) = X(t, ?). We will impose stronger measurability conditions shortly, but for now we require that the random variables Xt be measurable with respect to J- for each t 0. A collection of s -fields J-t such that J-t C J- for each t and J-s C J-t if s t is called a filtration. Define J-t+ = Pe0J-t+e. A filtration is right continuous if J-t+ = J-t for all t 0. "--

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Cover of: Stochastic Processes
Stochastic Processes
2012, Cambridge University Press
in English
Cover of: Stochastic Processes
Stochastic Processes
2011, Cambridge University Press
in English
Cover of: Stochastic Processes
Stochastic Processes
2011, Cambridge University Press
in English
Cover of: Stochastic Processes
Stochastic Processes
2011, Cambridge University Press
in English
Cover of: Stochastic processes
Stochastic processes
2011, Cambridge University Press
in English

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ID Numbers

Open Library
OL34477233M
ISBN 13
9780511997044

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Better World Books record

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October 5, 2021 Created by ImportBot Imported from Better World Books record