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Newton-type methods for stochastic programming
Xiaojun Chen
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Journal article publication
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Journal article
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peer-review
7
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Keyphrases
Newton's Method
100%
Linear Programming
100%
Stochastic Programming
100%
Smoothing Methods
50%
Numerical Examples
50%
Smooth Approximation
50%
Convex Programming Problem
50%
Approximation Techniques
50%
Operations Research
50%
Parallel Implementation
50%
Discrete Set
50%
Two-stage Stochastic
50%
Practical Procedures
50%
Model Risk
50%
Decision-dependent Uncertainty
50%
Modeling Uncertainty
50%
Multidimensional Integrals
50%
Computer Science
Stochastic Programming
100%
Objective Function
100%
Linear Program
100%
Parallel Implementation
50%
Convex Programming
50%
Decision-Making
50%
System Analysis
50%
Numerical Example
50%
Approximation Technique
50%
Operations Research
50%
Mathematics
Type Method
100%
Stochastics
100%
Objective Function
50%
Linear Program
50%
Convex Programming Problem
25%
Discrete Set
25%
Probability Theory
25%
Operations Research
25%
Smooth approximation
25%
Numerical Example
25%
Approximation Technique
25%
Integral
25%