Stochastic Models in Operations Research

Stochastic Models in Operations Research
Title Stochastic Models in Operations Research PDF eBook
Author Daniel P. Heyman
Publisher Courier Corporation
Pages 564
Release 2004-01-01
Genre Mathematics
ISBN 9780486432595

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This volume of a 2-volume set explores the central facts and ideas of stochastic processes, illustrating their use in models based on applied and theoretical investigations. Explores stochastic processes, operating characteristics of stochastic systems, and stochastic optimization. Comprehensive in its scope, this graduate-level text emphasizes the practical importance, intellectual stimulation, and mathematical elegance of stochastic models.

Stochastic Processes and Models in Operations Research

Stochastic Processes and Models in Operations Research
Title Stochastic Processes and Models in Operations Research PDF eBook
Author Anbazhagan, Neelamegam
Publisher IGI Global
Pages 359
Release 2016-03-24
Genre Business & Economics
ISBN 1522500456

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Decision-making is an important task no matter the industry. Operations research, as a discipline, helps alleviate decision-making problems through the extraction of reliable information related to the task at hand in order to come to a viable solution. Integrating stochastic processes into operations research and management can further aid in the decision-making process for industrial and management problems. Stochastic Processes and Models in Operations Research emphasizes mathematical tools and equations relevant for solving complex problems within business and industrial settings. This research-based publication aims to assist scholars, researchers, operations managers, and graduate-level students by providing comprehensive exposure to the concepts, trends, and technologies relevant to stochastic process modeling to solve operations research problems.

Stochastic Processes Model and Its Application in Operations Research

Stochastic Processes Model and Its Application in Operations Research
Title Stochastic Processes Model and Its Application in Operations Research PDF eBook
Author Chun Yuan Hsu
Publisher
Pages 104
Release 1969
Genre
ISBN

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Stochastic Models in Operations Research: Stochastic optimization

Stochastic Models in Operations Research: Stochastic optimization
Title Stochastic Models in Operations Research: Stochastic optimization PDF eBook
Author Daniel P. Heyman
Publisher Courier Corporation
Pages 580
Release 2004-01-01
Genre Mathematics
ISBN 9780486432601

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This two-volume set of texts explores the central facts and ideas of stochastic processes, illustrating their use in models based on applied and theoretical investigations. They demonstrate the interdependence of three areas of study that usually receive separate treatments: stochastic processes, operating characteristics of stochastic systems, and stochastic optimization. Comprehensive in its scope, they emphasize the practical importance, intellectual stimulation, and mathematical elegance of stochastic models and are intended primarily as graduate-level texts.

Constructive Computation in Stochastic Models with Applications

Constructive Computation in Stochastic Models with Applications
Title Constructive Computation in Stochastic Models with Applications PDF eBook
Author Quan-Lin Li
Publisher Springer Science & Business Media
Pages 693
Release 2011-02-02
Genre Mathematics
ISBN 364211492X

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"Constructive Computation in Stochastic Models with Applications: The RG-Factorizations" provides a unified, constructive and algorithmic framework for numerical computation of many practical stochastic systems. It summarizes recent important advances in computational study of stochastic models from several crucial directions, such as stationary computation, transient solution, asymptotic analysis, reward processes, decision processes, sensitivity analysis as well as game theory. Graduate students, researchers and practicing engineers in the field of operations research, management sciences, applied probability, computer networks, manufacturing systems, transportation systems, insurance and finance, risk management and biological sciences will find this book valuable. Dr. Quan-Lin Li is an Associate Professor at the Department of Industrial Engineering of Tsinghua University, China.

Introduction to Modeling and Analysis of Stochastic Systems

Introduction to Modeling and Analysis of Stochastic Systems
Title Introduction to Modeling and Analysis of Stochastic Systems PDF eBook
Author V. G. Kulkarni
Publisher Springer
Pages 323
Release 2010-11-03
Genre Mathematics
ISBN 1441917721

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This book provides a self-contained review of all the relevant topics in probability theory. A software package called MAXIM, which runs on MATLAB, is made available for downloading. Vidyadhar G. Kulkarni is Professor of Operations Research at the University of North Carolina at Chapel Hill.

Stochastic Processes in Science, Engineering and Finance

Stochastic Processes in Science, Engineering and Finance
Title Stochastic Processes in Science, Engineering and Finance PDF eBook
Author Frank Beichelt
Publisher CRC Press
Pages 438
Release 2006-02-22
Genre Mathematics
ISBN 9781420010459

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This book presents a self-contained introduction to stochastic processes with emphasis on their applications in science, engineering, finance, computer science, and operations research. It provides theoretical foundations for modeling time-dependent random phenomena in these areas and illustrates their application by analyzing numerous practical examples. The treatment assumes few prerequisites, requiring only the standard mathematical maturity acquired by undergraduate applied science students. It includes an introductory chapter that summarizes the basic probability theory needed as background. Numerous exercises reinforce the concepts and techniques discussed and allow readers to assess their grasp of the subject. Solutions to most of the exercises are provided in an appendix. While focused primarily on practical aspects, the presentation includes some important proofs along with more challenging examples and exercises for those more theoretically inclined. Mastering the contents of this book prepares readers to apply stochastic modeling in their own fields and enables them to work more creatively with software designed for dealing with the data analysis aspects of stochastic processes.