Random Iterative Models

Random Iterative Models PDF

Author: Marie Duflo

Publisher: Springer Science & Business Media

Published: 2013-03-09

Total Pages: 394

ISBN-13: 3662128802

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An up-to-date, self-contained review of a wide range of recursive methods for stabilization, identification and control of complex stochastic models (guiding a rocket or a plane, organizing multi-access broadcast channels, self-learning of neural networks ...). Suitable for mathematicians (researchers and also students) and engineers.

Statistics of Random Processes II

Statistics of Random Processes II PDF

Author: Robert S. Liptser

Publisher: Springer Science & Business Media

Published: 2013-03-14

Total Pages: 409

ISBN-13: 3662100282

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"Written by two renowned experts in the field, the books under review contain a thorough and insightful treatment of the fundamental underpinnings of various aspects of stochastic processes as well as a wide range of applications. Providing clear exposition, deep mathematical results, and superb technical representation, they are masterpieces of the subject of stochastic analysis and nonlinear filtering....These books...will become classics." --SIAM REVIEW

Statistics of Random Processes II

Statistics of Random Processes II PDF

Author: Robert Shevilevich Lipt︠s︡er

Publisher: Springer Science & Business Media

Published: 2001

Total Pages: 428

ISBN-13: 9783540639282

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"Written by two renowned experts in the field, the books under review contain a thorough and insightful treatment of the fundamental underpinnings of various aspects of stochastic processes as well as a wide range of applications. Providing clear exposition, deep mathematical results, and superb technical representation, they are masterpieces of the subject of stochastic analysis and nonlinear filtering....These books...will become classics." --SIAM REVIEW

The Random-Cluster Model

The Random-Cluster Model PDF

Author: Geoffrey R. Grimmett

Publisher: Springer Science & Business Media

Published: 2006-12-13

Total Pages: 392

ISBN-13: 3540328912

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The random-cluster model has emerged as a key tool in the mathematical study of ferromagnetism. It may be viewed as an extension of percolation to include Ising and Potts models, and its analysis is a mix of arguments from probability and geometry. The Random-Cluster Model contains accounts of the subcritical and supercritical phases, together with clear statements of important open problems. The book includes treatment of the first-order (discontinuous) phase transition.

Probabilistic Methods In Fluids, Proceedings Of The Swansea 2002 Workshop

Probabilistic Methods In Fluids, Proceedings Of The Swansea 2002 Workshop PDF

Author: Ian M Davies

Publisher: World Scientific

Published: 2003-06-13

Total Pages: 383

ISBN-13: 9814487058

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This volume contains recent research papers presented at the international workshop on “Probabilistic Methods in Fluids” held in Swansea. The central problems considered were turbulence and the Navier-Stokes equations but, as is now well known, these classical problems are deeply intertwined with modern studies of stochastic partial differential equations, jump processes and random dynamical systems. The volume provides a snapshot of current studies in a field where the applications range from the design of aircraft through the mathematics of finance to the study of fluids in porous media.

Probabilistic Methods in Fluids

Probabilistic Methods in Fluids PDF

Author: Ian Malcolm Davies

Publisher: World Scientific

Published: 2003

Total Pages: 383

ISBN-13: 9812382267

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This volume contains recent research papers presented at the international workshop on ?Probabilistic Methods in Fluids? held in Swansea. The central problems considered were turbulence and the Navier-Stokes equations but, as is now well known, these classical problems are deeply intertwined with modern studies of stochastic partial differential equations, jump processes and random dynamical systems. The volume provides a snapshot of current studies in a field where the applications range from the design of aircraft through the mathematics of finance to the study of fluids in porous media.

Monte Carlo Statistical Methods

Monte Carlo Statistical Methods PDF

Author: Christian Robert

Publisher: Springer Science & Business Media

Published: 2013-03-14

Total Pages: 670

ISBN-13: 1475741456

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We have sold 4300 copies worldwide of the first edition (1999). This new edition contains five completely new chapters covering new developments.

Stochastic Controls

Stochastic Controls PDF

Author: Jiongmin Yong

Publisher: Springer Science & Business Media

Published: 1999-06-22

Total Pages: 472

ISBN-13: 9780387987231

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As is well known, Pontryagin's maximum principle and Bellman's dynamic programming are the two principal and most commonly used approaches in solving stochastic optimal control problems. * An interesting phenomenon one can observe from the literature is that these two approaches have been developed separately and independently. Since both methods are used to investigate the same problems, a natural question one will ask is the fol lowing: (Q) What is the relationship betwccn the maximum principlc and dy namic programming in stochastic optimal controls? There did exist some researches (prior to the 1980s) on the relationship between these two. Nevertheless, the results usually werestated in heuristic terms and proved under rather restrictive assumptions, which were not satisfied in most cases. In the statement of a Pontryagin-type maximum principle there is an adjoint equation, which is an ordinary differential equation (ODE) in the (finite-dimensional) deterministic case and a stochastic differential equation (SDE) in the stochastic case. The system consisting of the adjoint equa tion, the original state equation, and the maximum condition is referred to as an (extended) Hamiltonian system. On the other hand, in Bellman's dynamic programming, there is a partial differential equation (PDE), of first order in the (finite-dimensional) deterministic case and of second or der in the stochastic case. This is known as a Hamilton-Jacobi-Bellman (HJB) equation.

Linear Models for the Prediction of the Genetic Merit of Animals, 4th Edition

Linear Models for the Prediction of the Genetic Merit of Animals, 4th Edition PDF

Author: Raphael Mrode

Publisher: CABI

Published: 2023-10-09

Total Pages: 409

ISBN-13: 1800620489

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Fundamental to any livestock improvement programme by animal scientists, is the prediction of genetic merit in the offspring generation for desirable production traits such as increased growth rate, or superior meat, milk and wool production. Covering the foundational principles on the application of linear models for the prediction of genetic merit in livestock, this new edition is fully updated to incorporate recent advances in genomic prediction approaches, genomic models for multi-breed and crossbred performance, dominance and epistasis. It provides models for the analysis of main production traits as well as functional traits and includes numerous worked examples. For the first time, R codes for key examples in the textbook are provided online. Suitable for graduate and postgraduate students, researchers and lecturers of animal breeding, genetics and genomics, this established textbook provides a thorough grounding in both the basics and in new developments of linear models and animal genetics.

Numerical Probability

Numerical Probability PDF

Author: Gilles Pagès

Publisher: Springer

Published: 2018-07-31

Total Pages: 579

ISBN-13: 3319902768

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This textbook provides a self-contained introduction to numerical methods in probability with a focus on applications to finance. Topics covered include the Monte Carlo simulation (including simulation of random variables, variance reduction, quasi-Monte Carlo simulation, and more recent developments such as the multilevel paradigm), stochastic optimization and approximation, discretization schemes of stochastic differential equations, as well as optimal quantization methods. The author further presents detailed applications to numerical aspects of pricing and hedging of financial derivatives, risk measures (such as value-at-risk and conditional value-at-risk), implicitation of parameters, and calibration. Aimed at graduate students and advanced undergraduate students, this book contains useful examples and over 150 exercises, making it suitable for self-study.