The focus of this thesis is on solving a sequence of optimization problems that change over time in a structured manner. This type of problem naturally arises in contexts as diverse as channel estimation, target tracking, sequential machine learning, and repeated games. Due to the time-varying nature of these problems, it is necessary to determine new solutions as the problems change in order to ensure good solution quality. However, since the problems change over time in a structured manner, it is beneficial to exploit solutions to the previous optimization problems in order to efficiently solve the current optimization problem. The first problem considered is sequentially solving minimization problems that change slowly, in the sense tha...
In this thesis we study several machine learning problems that are all linked with the minimization ...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
The focus of this thesis is on solving a sequence of optimization problems that change over time in ...
In this thesis, we study three classes of problems within the general area of sequential decision ma...
We provide a comprehensive, effective and very efficient methodology for the design and experimental...
This dissertation focuses on sequential learning and inference under unknown models. In this class o...
This dissertation focuses on the integration of machine learning and optimization. Specifically, nov...
We investigate a recently proposed sequential Monte Carlo methodology for recursively tracking the m...
2014-10-14This dissertation addresses some problems in the area of learning, optimization and decisi...
Optimization has been the workhorse of solving machine learning problems. However, the efficiency of...
This thesis aims at developing efficient optimization algorithms for solving large-scale machine lea...
In this dissertation, we study several Markovian problems of optimal sequential decisions by focusin...
This thesis addresses a class of optimization problems that deals with the two-fold objective of mak...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
In this thesis we study several machine learning problems that are all linked with the minimization ...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...
The focus of this thesis is on solving a sequence of optimization problems that change over time in ...
In this thesis, we study three classes of problems within the general area of sequential decision ma...
We provide a comprehensive, effective and very efficient methodology for the design and experimental...
This dissertation focuses on sequential learning and inference under unknown models. In this class o...
This dissertation focuses on the integration of machine learning and optimization. Specifically, nov...
We investigate a recently proposed sequential Monte Carlo methodology for recursively tracking the m...
2014-10-14This dissertation addresses some problems in the area of learning, optimization and decisi...
Optimization has been the workhorse of solving machine learning problems. However, the efficiency of...
This thesis aims at developing efficient optimization algorithms for solving large-scale machine lea...
In this dissertation, we study several Markovian problems of optimal sequential decisions by focusin...
This thesis addresses a class of optimization problems that deals with the two-fold objective of mak...
This volume contains the proceedings of the AMS-IMS-SIAM Joint Summer Research Conference on Strateg...
In this thesis we study several machine learning problems that are all linked with the minimization ...
Stochastic optimization (SO) is extensively studied in various fields, such as control engineering, ...
This dissertation investigates the use of sampling methods for solving stochastic optimization probl...