One of the significant problems in classification is class noise which has numerous potential consequences such as reducing the overall accuracy and increasing the complexity of the induced model. Subsequently, finding and eliminating misclassified instances are known as important phases in machine learning and data mining. The predictions of classifiers can be applied to detect noisy instances, inconsistent data and errors, what is called classification filtering. It creates a new set of dataset to develop a reliable and precise classification model. In this paper we analyze the effect of class noise on six supervised learning algorithms. To evaluate the performance of the classification filtering algorithms, several experiments were condu...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Noise filtering is most frequently used in data preprocessing to improve the accuracy of induced cla...
Abstract The presence of noise in data is a common problem that produces sev-eral negative consequen...
Real data may have a considerable amount of noise produced by error in data collection, transmission...
Pattern classification systems play an important role in medical decision support. They allow to aut...
Class noise is an important issue in classification with a lot of potential consequences. It can dec...
Abstract. Real-world data is never perfect and can often suffer from corruptions (noise) that may im...
Inductive learning systems have been successfully applied in a number of medical domains. It is gene...
This paper presents a new approach for identifying and eliminating mislabeled instances in large or ...
Recent research in machine learning, data mining, and related areas has produced a wide variety of a...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
Noise filters are preprocessing techniques designed to improve data quality in classification tasks ...
Real-world classification data usually contain noise, which can affect the accuracy of the models an...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Noise filtering is most frequently used in data preprocessing to improve the accuracy of induced cla...
Abstract The presence of noise in data is a common problem that produces sev-eral negative consequen...
Real data may have a considerable amount of noise produced by error in data collection, transmission...
Pattern classification systems play an important role in medical decision support. They allow to aut...
Class noise is an important issue in classification with a lot of potential consequences. It can dec...
Abstract. Real-world data is never perfect and can often suffer from corruptions (noise) that may im...
Inductive learning systems have been successfully applied in a number of medical domains. It is gene...
This paper presents a new approach for identifying and eliminating mislabeled instances in large or ...
Recent research in machine learning, data mining, and related areas has produced a wide variety of a...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
Noise filters are preprocessing techniques designed to improve data quality in classification tasks ...
Real-world classification data usually contain noise, which can affect the accuracy of the models an...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Noise filtering is most frequently used in data preprocessing to improve the accuracy of induced cla...
Abstract The presence of noise in data is a common problem that produces sev-eral negative consequen...