Classification is the allocation of an object to an existing category among several based on uncertain measurements. Since information is used to quantify uncertainty, it is natural to consider classification and information as complementary subjects. This dissertation touches upon several topics that relate to the problem of classification, such as information, classification, and team classification. Motivated by the U.S. Air Force Intelligence, Surveillance, and Reconnaissance missions, we investigate the aforementioned topics for classifiers that follow two models: classifiers with workload-independent and workload-dependent performance. We adopt workload-independence and dependence as "first-order" models to capture the features of mac...
In this paper, a few basic notions stemming from information theory are presented with the intention...
The quality of the decisions made by a machine learning model depends on the data and the operating ...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...
Classification is the allocation of an object to an existing category among several based on uncerta...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
Multi-class assignment is often used to aid in the exploitation of data in the Intelligence, Surveil...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
There are many criteria for measuring the value of information (VOI), each based on a different prin...
There are (at least) three approaches to quantifying information. The first, algorithmic information...
Abstract Different from the conventional evaluation criteria using performance measures, information...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
Abstract—This paper investigates the comparative performance of several information-driven search st...
We investigate the problem of designing optimal classifiers in the "strategic classification" settin...
Abstract. A fundamental question in learning theory is the quantification of the basic tradeoff betw...
In this paper, a few basic notions stemming from information theory are presented with the intention...
The quality of the decisions made by a machine learning model depends on the data and the operating ...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...
Classification is the allocation of an object to an existing category among several based on uncerta...
The purpose of this paper is to demonstrate that having two classifiers, a trichotomous classifier (...
Multi-class assignment is often used to aid in the exploitation of data in the Intelligence, Surveil...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
There are many criteria for measuring the value of information (VOI), each based on a different prin...
There are (at least) three approaches to quantifying information. The first, algorithmic information...
Abstract Different from the conventional evaluation criteria using performance measures, information...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
The most widely spread measure of performance, accuracy, suffers from a paradox: predictive models w...
Abstract—This paper investigates the comparative performance of several information-driven search st...
We investigate the problem of designing optimal classifiers in the "strategic classification" settin...
Abstract. A fundamental question in learning theory is the quantification of the basic tradeoff betw...
In this paper, a few basic notions stemming from information theory are presented with the intention...
The quality of the decisions made by a machine learning model depends on the data and the operating ...
The focus of this thesis is on understanding machine learning algorithms from an information-theoret...