Pages that link to "Item:Q929602"
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The following pages link to Efficient sample sizes in stochastic nonlinear programming (Q929602):
Displaying 18 items.
- Optimizing \(n\)-variate \((n+k)\)-nomials for small \(k\) (Q633624) (← links)
- Spectral projected gradient method for stochastic optimization (Q670658) (← links)
- Optimality functions in stochastic programming (Q715095) (← links)
- Adaptive importance sampling for optimization under uncertainty problems (Q1668392) (← links)
- Variable sample size method for equality constrained optimization problems (Q1749777) (← links)
- Line search methods with variable sample size for unconstrained optimization (Q1947504) (← links)
- Sample average approximation for stochastic nonconvex mixed integer nonlinear programming via outer-approximation (Q2129194) (← links)
- Inexact restoration with subsampled trust-region methods for finite-sum minimization (Q2191786) (← links)
- Penalty variable sample size method for solving optimization problems with equality constraints in a form of mathematical expectation (Q2290926) (← links)
- Nonmonotone line search methods with variable sample size (Q2340358) (← links)
- On sample size control in sample average approximations for solving smooth stochastic programs (Q2376122) (← links)
- Variance reduction in sample approximations of stochastic programs (Q2487848) (← links)
- Barzilai–Borwein method with variable sample size for stochastic linear complementarity problems (Q2790891) (← links)
- Inexact restoration approach for minimization with inexact evaluation of the objective function (Q2796018) (← links)
- Greedy Sampling Using Nonlinear Optimization (Q4983099) (← links)
- Iteration and evaluation complexity for the minimization of functions whose computation is intrinsically inexact (Q5235099) (← links)
- Adaptive Sequential Sample Average Approximation for Solving Two-Stage Stochastic Linear Programs (Q5857298) (← links)
- Subsampled first-order optimization methods with applications in imaging (Q6606441) (← links)