This paper reports a new framework for test-cost sensitive classification. It introduces a new loss function definition, in which misclassification cost and cost of feature extraction are combined qualitatively and the loss is conditioned with current and estimated decisions as well as their consistency. This loss function definition is motivated with the following issues. First, for many applications, the relation between different types of costs can be expressed roughly and usually only in terms of ordinal relations, but not as a precise quantitative number. Second, the redundancy between features can be used to decrease the cost; it is possible not to consider a new feature if it is consistent with the existing ones. In this paper, we sh...
The main object of this PhD. Thesis is the identification, characterization and study of new loss f...
The traditional framework for feature selection treats all features as costing the same amount. Howe...
Many real-world data mining applications need varying cost for different types of classification err...
Cataloged from PDF version of article.This paper reports a new framework for test-cost sensitive cla...
We report a novel approach for designing test-cost sensitive classifiers that consider the misclassi...
In medical diagnosis doctors must often determine what medical tests (e.g., X-ray, blood tests) shou...
Supervised machine learning models are increasingly being used for medical diagnosis. The diagnostic...
In medical diagnosis, doctors often have to order sets of medical tests in sequence in order to make...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
In the area of cost-sensitive learning, inductive learning algorithms have been extended to handle d...
Graduation date: 2004In its simplest form, the process of diagnosis is a decision-making process in ...
University of Technology, Sydney. Faculty of Information Technology.Cost sensitive learning is first...
In many domains, such as medical diagnosis, obtaining the complete set of feature values for a test ...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
The main object of this PhD. Thesis is the identification, characterization and study of new loss f...
The traditional framework for feature selection treats all features as costing the same amount. Howe...
Many real-world data mining applications need varying cost for different types of classification err...
Cataloged from PDF version of article.This paper reports a new framework for test-cost sensitive cla...
We report a novel approach for designing test-cost sensitive classifiers that consider the misclassi...
In medical diagnosis doctors must often determine what medical tests (e.g., X-ray, blood tests) shou...
Supervised machine learning models are increasingly being used for medical diagnosis. The diagnostic...
In medical diagnosis, doctors often have to order sets of medical tests in sequence in order to make...
We study cost-sensitive learning of decision trees that incorporate both test costs and misclassific...
Abstract. We study cost-sensitive learning of decision trees that incorporate both test costs and mi...
In the area of cost-sensitive learning, inductive learning algorithms have been extended to handle d...
Graduation date: 2004In its simplest form, the process of diagnosis is a decision-making process in ...
University of Technology, Sydney. Faculty of Information Technology.Cost sensitive learning is first...
In many domains, such as medical diagnosis, obtaining the complete set of feature values for a test ...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
The main object of this PhD. Thesis is the identification, characterization and study of new loss f...
The traditional framework for feature selection treats all features as costing the same amount. Howe...
Many real-world data mining applications need varying cost for different types of classification err...