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978-1-4419-1642-6
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9781441916426
978-1-4419-1642-6
10.1007/978-1-4419-1642-6
doi
QA273.A1-274.9
QA274-274.9
PBT
bicssc
PBWL
bicssc
MAT029000
bisacsh
519.2
23
Stochastic Programming
[electronic resource] :
The State of the Art In Honor of George B. Dantzig /
edited by Gerd Infanger.
New York, NY :
Springer New York :
Imprint: Springer,
2011.
XXIII, 362 p.
online resource.
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International Series in Operations Research & Management Science,
0884-8289 ;
150
Linear Programming Under Uncertainty -- A Probabilistic Lower Bound for Two-Stage Stochastic Programs -- Simulation-Based Optimality Tests for Stochastic Programs -- Stochastic Decomposition and Extensions -- Barycentric Bounds in Stochastic Programming: Theory and Application -- Stochastic Programming Apporximations Using Limited Moment Information, with Application to Asset Allocation -- Stability and Scenario Trees for Multistage Stochastic Programs -- Risk Aversion in Two-Stage Stochastic Integer Programming -- Risk-Averse Portfolio Optimization via Stochastic Dominance Constraints -- Single Period Mean-Variance Analysis in a Changing World -- Mean-Absolute Deviation Model -- Multi-Stage Financial Planning Models: Integrating Stochastic Programs and Policy Simulators -- Growth-Security Models and Stochastic Dominance -- Production Planning Under Supply and Demand Uncertainty: A Stochastic Programming Approach -- Global Climate Decisions under Uncertainty -- Control of Diffusions via Linear Programming.
From the Preface… The preparation of this book started in 2004, when George B. Dantzig and I, following a long-standing invitation by Fred Hillier to contribute a volume to his International Series in Operations Research and Management Science, decided finally to go ahead with editing a volume on stochastic programming. The field of stochastic programming (also referred to as optimization under uncertainty or planning under uncertainty) had advanced significantly in the last two decades, both theoretically and in practice. George Dantzig and I felt that it would be valuable to showcase some of these advances and to present what one might call the state-of- the-art of the field to a broader audience. We invited researchers whom we considered to be leading experts in various specialties of the field, including a few representatives of promising developments in the making, to write a chapter for the volume. Unfortunately, to the great loss of all of us, George Dantzig passed away on May 13, 2005. Encouraged by many colleagues, I decided to continue with the book and edit it as a volume dedicated to George Dantzig. Management Science published in 2005 a special volume featuring the “Ten most Influential Papers of the first 50 Years of Management Science.” George Dantzig’s original 1955 stochastic programming paper, “Linear Programming under Uncertainty,” was featured among these ten. Hearing about this, George Dantzig suggested that his 1955 paper be the first chapter of this book. The vision expressed in that paper gives an important scientific and historical perspective to the book. Gerd Infanger.
Mathematics.
Operations research.
Decision making.
Management science.
Probabilities.
Mathematics.
Probability Theory and Stochastic Processes.
Operations Research, Management Science.
Operation Research/Decision Theory.
Infanger, Gerd.
editor.
SpringerLink (Online service)
Springer eBooks
Printed edition:
9781441916419
International Series in Operations Research & Management Science,
0884-8289 ;
150
http://dx.doi.org/10.1007/978-1-4419-1642-6
ZDB-2-SMA
370273
370273
0
0
0
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EBook
elib
elib
2018-01-15
2018-01-15
2018-01-15
EBOOK