During the process of knowledge discovery in data, imbalanced learning data often emerges and presents a significant challenge for data mining methods. In this paper, we investigate the influence of class imbalanced data on the classification results of artificial intelligence methods, i.e. neural networks and support vector machine, and on the classification results of classical classification methods represented by RIPPER and the Naïve Bayes classifier. All experiments are conducted on 30 different imbalanced datasets obtained from KEEL (Knowledge Extraction based on Evolutionary Learning) repository. With the purpose of measuring the quality of classification, the accuracy and the area under ROC curve (AUC) measures are used. The results...
Many real world applications involve highly imbalanced class distribution. Research into learning fr...
The first book of its kind to review the current status and future direction of the exciting new bra...
Training an imbalanced dataset can cause classifiers to overfit the majority class and increase the ...
During the process of knowledge discovery in data, imbalanced learning data often emerges and presen...
Response surface methodologies The area under ROC curve Consequently, when classification models wit...
In this paper, we present a new rule induction algorithm for machine learning in medical diagnosis. ...
Summary. This chapter investigates the capabilities of XCS for mining imbalanced datasets. Initial e...
Machine learning models may not be able to effectively learn and predict from imbalanced data in the...
Assigning class labels to instances is a key component of the machine learning technique known as cl...
Assigning class labels to instances is a key component of the machine learning technique known as cl...
Support vector machines (SVMs) constitute one of the most popular and powerful classification method...
Imbalanced data is a major problem in machine learning classification, since predictive performance ...
The problem of imbalanced data has a heavy impact on the performance of learning models. In the case...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
Classification of data has become an important research area. The process of classifying documents i...
Many real world applications involve highly imbalanced class distribution. Research into learning fr...
The first book of its kind to review the current status and future direction of the exciting new bra...
Training an imbalanced dataset can cause classifiers to overfit the majority class and increase the ...
During the process of knowledge discovery in data, imbalanced learning data often emerges and presen...
Response surface methodologies The area under ROC curve Consequently, when classification models wit...
In this paper, we present a new rule induction algorithm for machine learning in medical diagnosis. ...
Summary. This chapter investigates the capabilities of XCS for mining imbalanced datasets. Initial e...
Machine learning models may not be able to effectively learn and predict from imbalanced data in the...
Assigning class labels to instances is a key component of the machine learning technique known as cl...
Assigning class labels to instances is a key component of the machine learning technique known as cl...
Support vector machines (SVMs) constitute one of the most popular and powerful classification method...
Imbalanced data is a major problem in machine learning classification, since predictive performance ...
The problem of imbalanced data has a heavy impact on the performance of learning models. In the case...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
Classification of data has become an important research area. The process of classifying documents i...
Many real world applications involve highly imbalanced class distribution. Research into learning fr...
The first book of its kind to review the current status and future direction of the exciting new bra...
Training an imbalanced dataset can cause classifiers to overfit the majority class and increase the ...