In this dissertation, we study several Markovian problems of optimal sequential decisions by focusing on research questions that are driven by probabilistic and operations-management considerations. Our probabilistic interest is in understanding the distribution of the total reward that one obtains when implementing a policy that maximizes its expected value. With this respect, we study the sequential selection of unimodal and alternating subsequences from a random sample, and we prove accurate bounds for the expected values and exact asymptotics. In the unimodal problem, we also note that the variance of the optimal total reward can be bounded in terms of its expected value. This fact then motivates a much broader analysis that characteriz...
In this paper, we treat a sequential stochastic assignment problem for the random number of jobs per...
In this paper, we treat a sequential stochastic assignment problem for the random number of jobs per...
International audienceWe provide a tight bound on the amount of experimentation under the optimal st...
In this dissertation, we study several Markovian problems of optimal sequential decisions by focusin...
In this dissertation, we study several Markovian problems of optimal sequential decisions by focusin...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
In this dissertation we study concentration properties of Markov chains,and sequential decision maki...
The Sequential Stochastic Assignment Problem (SSAP) deals with assigning sequentially arriving tasks...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
In this document, we give an overview of recent contributions to the mathematics of statistical sequ...
Sequential decision making is a fundamental task faced by any intelligent agent in an extended inter...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
This dissertation focuses on sequential learning and inference under unknown models. In this class o...
We consider sequential selection of an alternating subsequence from a sequence of independent, ident...
In this paper, we treat a sequential stochastic assignment problem for the random number of jobs per...
In this paper, we treat a sequential stochastic assignment problem for the random number of jobs per...
International audienceWe provide a tight bound on the amount of experimentation under the optimal st...
In this dissertation, we study several Markovian problems of optimal sequential decisions by focusin...
In this dissertation, we study several Markovian problems of optimal sequential decisions by focusin...
In this work we consider probabilistic approaches to sequential decision making. The ultimate goal i...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
In this dissertation we study concentration properties of Markov chains,and sequential decision maki...
The Sequential Stochastic Assignment Problem (SSAP) deals with assigning sequentially arriving tasks...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
In this document, we give an overview of recent contributions to the mathematics of statistical sequ...
Sequential decision making is a fundamental task faced by any intelligent agent in an extended inter...
This survey is focused on certain sequential decision-making problems that involve optimizing over p...
This dissertation focuses on sequential learning and inference under unknown models. In this class o...
We consider sequential selection of an alternating subsequence from a sequence of independent, ident...
In this paper, we treat a sequential stochastic assignment problem for the random number of jobs per...
In this paper, we treat a sequential stochastic assignment problem for the random number of jobs per...
International audienceWe provide a tight bound on the amount of experimentation under the optimal st...