Stochastic calculus has important applications to mathematical finance. This book will appeal to practitioners and students who want an elementary introduction to these areas. From the reviews: "As the preface says, βThis is a text with an attitude, and it is designed to reflect, wherever possible a
Modelling and Application of Stochastic Processes
β Scribed by Jeffrey D. Klein, Bradley W. Dickinson (auth.), Uday B. Desai (eds.)
- Publisher
- Springer US
- Year
- 1986
- Tongue
- English
- Leaves
- 295
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
The subject of modelling and application of stochastic processes is too vast to be exhausted in a single volume. In this book, attention is focused on a small subset of this vast subject. The primary emphasis is on realization and approximation of stochastic systems. Recently there has been considerable interest in the stochastic realization problem, and hence, an attempt has been made here to collect in one place some of the more recent approaches and algorithms for solving the stochastic realizaΒ tion problem. Various different approaches for realizing linear minimum-phase systems, linear nonminimum-phase systems, and bilinear systems are presented. These approaches range from time-domain methods to spectral-domain methods. An overview of the chapter contents briefly describes these approaches. Also, in most of these chapters special attention is given to the problem of developing numerically efΒ ficient algorithms for obtaining reduced-order (approximate) stochastic realizations. On the application side, chapters on use of Markov random fields for modelling and analyzing image signals, use of complementary models for the smoothing problem with missing data, and nonlinear estimation are included. Chapter 1 by Klein and Dickinson develops the nested orthogonal state space realization for ARMA processes. As suggested by the name, nested orthogonal realizations possess two key properties; (i) the state variables are orthogonal, and (ii) the system matrices for the (n + l)st order realization contain as their "upper" n-th order blocks the system matrices from the n-th order realization (nesting property).
β¦ Table of Contents
Front Matter....Pages i-xi
Nested Orthogonal Realizations for Linear Prediction of Arma Processes....Pages 1-23
q-Markov Covariance Equivalent Realizations....Pages 25-41
Reduced-Order Modelling of Stochastic Processes with Applications to Estimation....Pages 43-74
Generalized Principal Components Analysis and its Application in Approximate Stochastic Realization....Pages 75-104
Finite-Data Algorithms for Approximate Stochastic Realization....Pages 105-122
Model Reduction via Balancing, and Connections with other Methods....Pages 123-154
The Scattering Matrix Associated with a Stationary Stochastic Process: System Theoretic Properties and Role in Realization....Pages 155-191
Realization and Reduction of S.I.S.O. Nonminimum Phase Stochastic Systems....Pages 193-214
On Stochastic Bilinear Systems....Pages 215-241
Markov Random Fields for Image Modelling & Analysis....Pages 243-272
Smoothing with Blackouts....Pages 273-278
Stochastic Bilinear Models and Estimators with Nonlinear Observation Feedback....Pages 279-288
β¦ Subjects
Acoustics;Signal, Image and Speech Processing;Electrical Engineering;Probability Theory and Stochastic Processes
π SIMILAR VOLUMES
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Stochastic Processes and Models provides a concise and lucid introduction to simple stochastic processes and models. Including numerous exercises, problems and solutions, it covers the key concepts and tools, in particular: randon walks, renewals, Markov chains, martingales, the Wiener process mode