Classification is a data mining technique which is utilized to predict the future by using available data and aims to discover hidden relationships between variables and classes. Since the cost component is crucial in most real life classification problems and most traditional classification methods work for the purpose of correct classification, developing cost-sensitive classifiers which minimize the total misclassification cost remains a subject of much interest. The purpose of this study is to present an effective solution method that configurates and evaluates learning systems from previous experiences, thus aiming to obtain decisions and predictions. Since most real life problems are cost-sensitive and developing effective direct meth...
An established technique to face a multiclass categorization problem is to reduce it into a set of t...
Several authors have studied the problem of inducing decision trees that aim to minimize costs of mi...
Summarization: Nature inspired methods are approaches that are used in various fields and for the so...
Classification is a data mining technique which is utilized to predict the future by using available...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
In practical situations almost all classification problems are cost-sensitive or utility based one w...
This thesis studies the cost sensitive learning algorithms that calculate the class learning algorit...
Many real-world applications require varying costs for different types of mis-classification errors....
Many real-world data mining applications need varying cost for different types of classification err...
There is a significant body of research in machine learning addressing techniques for performing cla...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
Cost-sensitive learning which deals with classification problems that have non-uniform costs has att...
Summarization: Nature-inspired methods are used in various fields for solving a number of problems. ...
This paper proposes a novel tool known as Bee for Mining (B4M) for classification tasks, which enabl...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...
An established technique to face a multiclass categorization problem is to reduce it into a set of t...
Several authors have studied the problem of inducing decision trees that aim to minimize costs of mi...
Summarization: Nature inspired methods are approaches that are used in various fields and for the so...
Classification is a data mining technique which is utilized to predict the future by using available...
Cost-sensitive classification is one of mainstream research topics in data mining and machine learni...
In practical situations almost all classification problems are cost-sensitive or utility based one w...
This thesis studies the cost sensitive learning algorithms that calculate the class learning algorit...
Many real-world applications require varying costs for different types of mis-classification errors....
Many real-world data mining applications need varying cost for different types of classification err...
There is a significant body of research in machine learning addressing techniques for performing cla...
Graduation date: 2002Many approaches for achieving intelligent behavior of automated (computer) syst...
Cost-sensitive learning which deals with classification problems that have non-uniform costs has att...
Summarization: Nature-inspired methods are used in various fields for solving a number of problems. ...
This paper proposes a novel tool known as Bee for Mining (B4M) for classification tasks, which enabl...
PurposeThis paper aims to describe the use of a meta-learning framework for recommending cost-sensit...
An established technique to face a multiclass categorization problem is to reduce it into a set of t...
Several authors have studied the problem of inducing decision trees that aim to minimize costs of mi...
Summarization: Nature inspired methods are approaches that are used in various fields and for the so...