This thesis details the design and analysis of sequential procedures for the joint inference problem associated with hypothesis testing and parameter estimation in the context of sequentially observed data. The goal achieved is to minimize the average number of samples required to meet predefined detection and estimation error levels; thus fast inference with guaranteed performance. The first half of the thesis is devoted to the design of strictly optimal procedures, i.e., procedures that use, on average, as few samples as possible and fulfill constraints on the detection and estimation error levels. The design problem is formulated as a constrained optimization problem. The selected approach is to convert the problem to an unconstrained...
We consider the problem of sequential estimation of a random parameter under a controlled setting. U...
This dissertation mainly consists of three parts. The first part proposes generalized linear minimum...
This dissertation mainly consists of three parts. The first part proposes generalized linear minimum...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
In this dissertation a framework for the design and analysis of optimal and minimax robust sequentia...
In this dissertation a framework for the design and analysis of optimal and minimax robust sequentia...
In this thesis we develop algorithms for the numerical solution of problems from nonlinear optimum ...
We consider the problem of sequential estimation of a random parameter under a controlled setting. U...
Sequential analysis refers to the statistical theory and methods that can be applied to situations w...
We consider the problem of sequential estimation of a random parameter under a controlled setting. U...
We consider the problem of sequential estimation of a random parameter under a controlled setting. U...
This dissertation mainly consists of three parts. The first part proposes generalized linear minimum...
This dissertation mainly consists of three parts. The first part proposes generalized linear minimum...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
This thesis details the design and analysis of sequential procedures for the joint inference problem...
In this dissertation a framework for the design and analysis of optimal and minimax robust sequentia...
In this dissertation a framework for the design and analysis of optimal and minimax robust sequentia...
In this thesis we develop algorithms for the numerical solution of problems from nonlinear optimum ...
We consider the problem of sequential estimation of a random parameter under a controlled setting. U...
Sequential analysis refers to the statistical theory and methods that can be applied to situations w...
We consider the problem of sequential estimation of a random parameter under a controlled setting. U...
We consider the problem of sequential estimation of a random parameter under a controlled setting. U...
This dissertation mainly consists of three parts. The first part proposes generalized linear minimum...
This dissertation mainly consists of three parts. The first part proposes generalized linear minimum...