Introduction to stochastic programming
Material type: TextSeries: Springer series in operations research and financial engineeringPublication details: Springer New York 2011Edition: 2ndDescription: xxv, 485 pISBN:- 9781493937035
- 519.7 BIR
Item type | Current library | Collection | Call number | Copy number | Status | Date due | Barcode | Item holds | |
---|---|---|---|---|---|---|---|---|---|
Book | Bodh Gaya General Stacks | OM&QT | 519.7 BIR (Browse shelf(Opens below)) | 1 | Available | IIMG-004890 | |||
Book | Jammu General Stacks | Non-fiction | 519.7 BIR (Browse shelf(Opens below)) | Available | IIMJ-5261 |
Browsing Bodh Gaya shelves, Shelving location: General Stacks Close shelf browser (Hides shelf browser)
519.6 ANT Practical optimization: algorithms and engineering applications | 519.6 FOX Nonlinear optimization: models and applications | 519.6 VAN Linear programming : | 519.7 BIR Introduction to stochastic programming | 519.72 BAZ Linear programming and network flows | 519.72 FEI Linear programming | 519.72 IGN Introduction to linear goal programming |
The aim of stochastic programming is to find optimal decisions in problems which involve uncertain data. This field is currently developing rapidly with contributions from many disciplines including operations research, mathematics, and probability. At the same time, it is now being applied in a wide variety of subjects ranging from agriculture to financial planning and from industrial engineering to computer networks. This textbook provides a first course in stochastic programming suitable for students with a basic knowledge of linear programming, elementary analysis, and probability. The authors aim to present a broad overview of the main themes and methods of the subject. Its prime goal is to help students develop an intuition on how to model uncertainty into mathematical problems, what uncertainty changes bring to the decision process, and what techniques help to manage uncertainty in solving the problems. In this extensively updated new edition there is more material on methods and examples including several new approaches for discrete variables, new results on risk measures in modeling and Monte Carlo sampling methods, a new chapter on relationships to other methods including approximate dynamic programming, robust optimization and online methods. The book is highly illustrated with chapter summaries and many examples and exercises. Students, researchers and practitioners in operations research and the optimization area will find it particularly of interest.
There are no comments on this title.