How should we gather information to make effective decisions? We address Bayesian active learning and experimental design problems, where we sequentially select tests to reduce uncertainty about a set of hypotheses. Instead of minimizing uncertainty per se, we consider a set of overlapping decision regions of these hypotheses. Our goal is to drive uncertainty into a single decision region as quickly as possible. We identify necessary and sufficient conditions for correctly identifying a decision region that contains all hypotheses consistent with observations. We develop a novel Hyperedge Cutting (HEC) algorithm for this problem, and prove that is competitive with the intractable optimal policy. Our efficient implementation of the algorithm...
We approach the problem of active learning from a Bayesian perspective, working with a probability d...
Copyright © 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
In this thesis, we study three classes of problems within the general area of sequential decision ma...
<p>How should we gather information to make effective decisions? We address Bayesian active learning...
How should we gather information to make ef-fective decisions? We address Bayesian active learning a...
We consider the problem of active sequential hypothesis testing where a Bayesian\u3cbr/\u3edecision ...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
We tackle the fundamental problem of Bayesian active learning with noise, where we need to adaptivel...
This dissertation considers a generalization of the classical hypothesis testing problem. Suppose th...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
The ultimate goal of optimization is to find the minimizer of a target function. However, typical cr...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Information theoretic active learning has been widely studied for prob-abilistic models. For simple ...
People are efficient when they make decisions under uncertainty, even when their decisions have long...
Learning and decision making is one of the universal cornerstones of human and animal life. There ar...
We approach the problem of active learning from a Bayesian perspective, working with a probability d...
Copyright © 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
In this thesis, we study three classes of problems within the general area of sequential decision ma...
<p>How should we gather information to make effective decisions? We address Bayesian active learning...
How should we gather information to make ef-fective decisions? We address Bayesian active learning a...
We consider the problem of active sequential hypothesis testing where a Bayesian\u3cbr/\u3edecision ...
Traditionally, Bayesian inductive learning involves finding the most probable model from the entire ...
We tackle the fundamental problem of Bayesian active learning with noise, where we need to adaptivel...
This dissertation considers a generalization of the classical hypothesis testing problem. Suppose th...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
The ultimate goal of optimization is to find the minimizer of a target function. However, typical cr...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Information theoretic active learning has been widely studied for prob-abilistic models. For simple ...
People are efficient when they make decisions under uncertainty, even when their decisions have long...
Learning and decision making is one of the universal cornerstones of human and animal life. There ar...
We approach the problem of active learning from a Bayesian perspective, working with a probability d...
Copyright © 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obta...
In this thesis, we study three classes of problems within the general area of sequential decision ma...