We revisit the Stochastic Score Classification (SSC) problem introduced by Gkenosis et al. (ESA 2018): We are given $n$ tests. Each test $j$ can be conducted at cost $c_j$, and it succeeds independently with probability $p_j$. Further, a partition of the (integer) interval $\{0,\dots,n\}$ into $B$ smaller intervals is known. The goal is to conduct tests so as to determine that interval from the partition in which the number of successful tests lies while minimizing the expected cost. Ghuge et al. (IPCO 2022) recently showed that a polynomial-time constant-factor approximation algorithm exists. We show that interweaving the two strategies that order tests increasingly by their $c_j/p_j$ and $c_j/(1-p_j)$ ratios, respectively, -- as already...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Issued as Annual report, and Final report, no. Project E-21-617Reports have title: Optional updatin...
Consider the following Stochastic Score Classification Problem. A doctor is assessing a patient\u27s...
We consider the following stochastic approximation algorithm of searching for the zero point x∗ of a...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
We consider the following stochastic approximation algorithm of searching for the zero point x∗ of a...
This paper studies the stochastic variant of the classical k-TSP problem where rewards at the vertic...
Consider a kidney-exchange application where we want to find a max-matching in a random graph. To fi...
We develop approximation algorithms for set-selection problems with deterministic constraints, but r...
A stochastic approximation (SA) algorithm with new adaptive step sizes for solving unconstrained mi...
AbstractWe propose a new adaptive algorithm with decreasing step-size for stochastic approximations....
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
AbstractWe consider a class of stochastic nonlinear programs for which an approximation to a locally...
Large scale stochastic linear programs are typically solved using a combination of mathematical prog...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Issued as Annual report, and Final report, no. Project E-21-617Reports have title: Optional updatin...
Consider the following Stochastic Score Classification Problem. A doctor is assessing a patient\u27s...
We consider the following stochastic approximation algorithm of searching for the zero point x∗ of a...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
We consider the following stochastic approximation algorithm of searching for the zero point x∗ of a...
This paper studies the stochastic variant of the classical k-TSP problem where rewards at the vertic...
Consider a kidney-exchange application where we want to find a max-matching in a random graph. To fi...
We develop approximation algorithms for set-selection problems with deterministic constraints, but r...
A stochastic approximation (SA) algorithm with new adaptive step sizes for solving unconstrained mi...
AbstractWe propose a new adaptive algorithm with decreasing step-size for stochastic approximations....
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
AbstractWe consider a class of stochastic nonlinear programs for which an approximation to a locally...
Large scale stochastic linear programs are typically solved using a combination of mathematical prog...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...
Approximation algorithms are the prevalent solution methods in the field of stochastic programming. ...
Issued as Annual report, and Final report, no. Project E-21-617Reports have title: Optional updatin...