In the stochastic sequential optimisation problems it is of interest to study features of strategies more delicate than just their performance measure. In this talk we focus on variations of the online monotone subsequence and bin packing problems, where it is possible to give a fairly explicit asymptotic description of the selection processes under strategies that are sufficiently close to optimality. We show that the transversal fluctuations of the shape and the length of selected subsequence approach Gaussian functional limits that are very different from their counterparts in the offline problem, where the full set of data can be used in selection algorithms
In the first part of this dissertation, we consider two problems in sequential decision making. The ...
In this dissertation we study concentration properties of Markov chains,and sequential decision maki...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
The online increasing subsequence problem is a stochastic optimisation task with the objective to ma...
PhD ThesesThis thesis deals with several closely related, but subtly di erent problems in the area ...
AbstractThis article presents new results on the problem of selecting (online) a monotone subsequenc...
Given a sequence of independent random variables with a common continuous distribution, we consider ...
We find a two term asymptotic expansion for the optimal expected value of a sequentially selected mo...
This article presents new results on the problem of selecting (online) a monotone subsequence of max...
Consider a sequence of n independent random variables with a common continuous distribution F, and c...
The length of the longest monotone increasing subsequence of a random sample of size n is known to h...
This article provides a refinement of the main results for the monotone subsequence selection proble...
We consider sequential selection of an alternating subsequence from a sequence of independent, ident...
Abstract. Given a sequence of independent random variables with a common continuous distribution, we...
We analyze the optimal policy for the sequential selection of an alternating subsequence from a sequ...
In the first part of this dissertation, we consider two problems in sequential decision making. The ...
In this dissertation we study concentration properties of Markov chains,and sequential decision maki...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
The online increasing subsequence problem is a stochastic optimisation task with the objective to ma...
PhD ThesesThis thesis deals with several closely related, but subtly di erent problems in the area ...
AbstractThis article presents new results on the problem of selecting (online) a monotone subsequenc...
Given a sequence of independent random variables with a common continuous distribution, we consider ...
We find a two term asymptotic expansion for the optimal expected value of a sequentially selected mo...
This article presents new results on the problem of selecting (online) a monotone subsequence of max...
Consider a sequence of n independent random variables with a common continuous distribution F, and c...
The length of the longest monotone increasing subsequence of a random sample of size n is known to h...
This article provides a refinement of the main results for the monotone subsequence selection proble...
We consider sequential selection of an alternating subsequence from a sequence of independent, ident...
Abstract. Given a sequence of independent random variables with a common continuous distribution, we...
We analyze the optimal policy for the sequential selection of an alternating subsequence from a sequ...
In the first part of this dissertation, we consider two problems in sequential decision making. The ...
In this dissertation we study concentration properties of Markov chains,and sequential decision maki...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...