We initiate the design of approximation algorithms for stochastic combinatorial optimization problems; we formulate the problems in the framework of two-stage stochastic optimization, and provide nearly tight approximation algorithms. Our problems range from the simple (shortest path, vertex cover, bin packing) to complex (facility location, set cover), and contain representatives with different approximation ratios. The approximation ratio of the stochastic variant of a typical problem is of the same order of magnitude as its deterministic counterpart. Furthermore, common techniques for designing approximation algorithms such as LP rounding, the primal-dual method, and the greedy algorithm, can be carefully adapted to obtain these results....
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...
We study two-stage, finite-scenario stochastic versions of several combinatorial optimization proble...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
We present improved approximation algorithms in stochastic optimization. We prove that the multi-sta...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
<p>The focus of this thesis is on the design and analysis of algorithms for basic problems in Stocha...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Several combinatorial optimization problems choose elements to minimize the total cost of constructi...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Optimization problems arising in practice involve random parameters. For the computation of robust o...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...
We study two-stage, finite-scenario stochastic versions of several combinatorial optimization proble...
This paper briefly describes three well-established frameworks for handling uncertainty in optimizat...
We present improved approximation algorithms in stochastic optimization. We prove that the multi-sta...
Uncertainty is a facet of many decision environments and might arise for various reasons, such as un...
Stochastic optimization problems attempt to model uncertainty in the data by assuming that the input...
<p>The focus of this thesis is on the design and analysis of algorithms for basic problems in Stocha...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Several combinatorial optimization problems choose elements to minimize the total cost of constructi...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Optimization problems arising in practice involve random parameters. For the computation of robust o...
Stochastic optimization problems provide a means to model uncertainty in the input data where the un...
Thesis (Ph. D.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
Abstract. The field of stochastic optimization studies decision making under uncertainty, when only ...