We introduce adaptive sampling methods for stochastic programs with deterministic constraints. First, we propose and analyze a variant of the stochastic projected gradient method, where the sample size used to approximate the reduced gradient is determined on-the-fly and updated adaptively. This method is applicable to a broad class of expectation-based risk measures, and leads to a significant reduction in the individual gradient evaluations used to estimate the objective function gradient. Numerical experiments with expected risk minimization and conditional value-at-risk minimization support this conclusion, and demonstrate practical performance and efficacy for both risk-neutral and risk-averse problems. Second, we propose an SQP-type m...
where the function f or its gradient rf are not directly accessible except through Monte Carlo estim...
Sample average approximation (SAA) is a well-known solution methodology for traditional stochastic p...
We present adaptive assignment rules for the design of the necessary simulations when solving discre...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
Stochastic programming is a well-known instrument to model many risk management problems in finance....
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
The objective function of a stochastic optimization problem usually involves an expectation of rando...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
where the function f or its gradient rf are not directly accessible except through Monte Carlo estim...
Sample average approximation (SAA) is a well-known solution methodology for traditional stochastic p...
We present adaptive assignment rules for the design of the necessary simulations when solving discre...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
Stochastic programming is a well-known instrument to model many risk management problems in finance....
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
The objective function of a stochastic optimization problem usually involves an expectation of rando...
We are concerned with the efficiency of stochastic gradient estimation methods for large-scale nonli...
where the function f or its gradient rf are not directly accessible except through Monte Carlo estim...
Sample average approximation (SAA) is a well-known solution methodology for traditional stochastic p...
We present adaptive assignment rules for the design of the necessary simulations when solving discre...