Parameter estimation in stochastic differential equations / Jaya P.N. Bishwal.
Material type:
TextSeries: Lecture notes in mathematics (Springer-Verlag) ; 1923.Publication details: Berlin : Springer, ©2008.Description: 1 online resource (xi, 264 pages)Content type: - text
- computer
- online resource
- 9783540744481
- 3540744487
- 3540744479
- 9783540744474
- 519.544 22
- QA276.8 .B57 2008eb
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eBook
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e-Library | eBook LN Mathematic | Available |
Includes bibliographical references and index.
Rates of weak convergence of estimators in homogeneous diffusions -- Large deviations of estimators in homogeneous diffusions -- Local asymptotic mixed normality for nonhomogeneous diffusions -- Bayes and sequential estimation in stochastic PDEs -- Maximum likelihood estimation in fractional diffusions -- Approximate maximum likelihood estimation in nonhomogeneous diffusions -- Rates of weak convergence estimators in the Ornstein-Uhlenbeck process -- Local asymptotic normality for discretely observed homogeneous diffusions -- Estimations function for discretely observed homogeneous diffusions.
Print version record.
Parameter estimation in stochastic differential equations and stochastic partial differential equations is the science, art and technology of modelling complex phenomena and making beautiful decisions. The subject has attracted researchers from several areas of mathematics and other related fields like economics and finance. This volume presents the estimation of the unknown parameters in the corresponding continuous models based on continuous and discrete observations and examines extensively maximum likelihood, minimum contrast and Bayesian methods. Useful because of the current availability of high frequency data is the study of refined asymptotic properties of several estimators when the observation time length is large and the observation time interval is small. Also space time white noise driven models, useful for spatial data, and more sophisticated non-Markovian and non-semimartingale models like fractional diffusions that model the long memory phenomena are examined in this volume.
English.