Stochastic optimization problems attempt to model uncertainty in the data by assuming that (part of) the input is specified by a probability distribution. We consider the well-studied paradigm of stochastic recourse models, where the uncertainty evolves through a series of stages and one can take decisions in each stage in response to the new information learned. We obtain the first approximation algorithms for a variety of 2-stage and k-stage stochastic integer optimization problems where the underlying random data is given by a "black box" and no restrictions are placed on the costs of the two stages: one can merely sample data from this distribution, but no direct information about the distributions is given. Our results are based on two...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...
htmlabstractApproximation algorithms are the prevalent solution methods in the field of stochastic p...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that (part of)...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
We study two-stage, finite-scenario stochastic versions of several combinatorial optimization proble...
Two-stage stochastic optimization is a framework for modeling uncertainty, where we have a probabili...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
textStochastic programming is a natural and powerful extension of deterministic mathematical progra...
We present improved approximation algorithms in stochastic optimization. We prove that the multi-sta...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...
htmlabstractApproximation algorithms are the prevalent solution methods in the field of stochastic p...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that (part of)...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
We study two-stage, finite-scenario stochastic versions of several combinatorial optimization proble...
Two-stage stochastic optimization is a framework for modeling uncertainty, where we have a probabili...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
textStochastic programming is a natural and powerful extension of deterministic mathematical progra...
We present improved approximation algorithms in stochastic optimization. We prove that the multi-sta...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...
htmlabstractApproximation algorithms are the prevalent solution methods in the field of stochastic p...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...