We develop an algorithm for solving the stochastic convex program (SCP) by combining Vaidya's volumetric center interior point method (VCM) for solving non-smooth convex programming problems with the Monte-Carlo sampling technique to compute a subgradient. A near-central cut variant of VCM is developed, and for this method an approach to perform bulk cut translation, and adding multiple cuts is given. We show that by using near-central VCM the SCP can be solved to a desirable accuracy with any given probability. For the two-stage SCP the solution time is independent of the number of scenarios
First, we study a class of stochastic differential equations driven by a possibly tempered Lévy pro...
High-dimensional integrals are usually solved with Monte Carlo algorithms although theory suggests t...
We consider the problem of estimating the unknown breakpoints in segmented generalized linear models...
We develop an algorithm for solving the stochastic convex program (SCP) by combining Vaidya's volume...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
Necessary and sufficient conditions for metric regularity of (several joint) probabilistic constrain...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider stochastic programming problems with probabilistic constraints involving random variable...
In this paper the asymptotic behaviour of the maximum likelihood and Bayesian estimators of a delay ...
We consider backward stochastic differential equations with convex constraints on the gains (or inte...
In this paper we compare two methods for estimating a global minimizer of an indefinite quadratic fo...
It is shown that Tyler's (1987) M-functional of scatter, whichis a robust surrogate for the covarian...
This paper examines improved regression methods for the linear multivariable measurement error model...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
Consider a spatial branching particle process where the underlying motion is a conservative diffusio...
First, we study a class of stochastic differential equations driven by a possibly tempered Lévy pro...
High-dimensional integrals are usually solved with Monte Carlo algorithms although theory suggests t...
We consider the problem of estimating the unknown breakpoints in segmented generalized linear models...
We develop an algorithm for solving the stochastic convex program (SCP) by combining Vaidya's volume...
In this paper we discuss Monte Carlo simulation based approximations of a stochastic programming pro...
Necessary and sufficient conditions for metric regularity of (several joint) probabilistic constrain...
We consider stochastic programming problems with probabilistic constraints involving integer-valued ...
We consider stochastic programming problems with probabilistic constraints involving random variable...
In this paper the asymptotic behaviour of the maximum likelihood and Bayesian estimators of a delay ...
We consider backward stochastic differential equations with convex constraints on the gains (or inte...
In this paper we compare two methods for estimating a global minimizer of an indefinite quadratic fo...
It is shown that Tyler's (1987) M-functional of scatter, whichis a robust surrogate for the covarian...
This paper examines improved regression methods for the linear multivariable measurement error model...
This paper presents a fully Bayesian approach to regression splines with automatic knot selection in...
Consider a spatial branching particle process where the underlying motion is a conservative diffusio...
First, we study a class of stochastic differential equations driven by a possibly tempered Lévy pro...
High-dimensional integrals are usually solved with Monte Carlo algorithms although theory suggests t...
We consider the problem of estimating the unknown breakpoints in segmented generalized linear models...