Class noise is an important issue in classification with a lot of potential consequences. It can decrease the overall accuracy and increase the complexity of the induced model. This study investigates ensemble filtering, removing and relabeling noisy instances issues and proposes a new two-filter model for Class Noise Detection and Classification (CNDC). The proposed two-filter CNDC model comprises two major parts, which are noise detection and noise classification. The noise detection part involves ensemble and distance filtering to overcome ensemble issues. In latter part, a Removing-Relabeling (REM-REL) technique is proposed to enhance overall performance of noise classification. To evaluate the performance of the proposed model, several...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
This work was supported by project PID2020-119478GB-I00 granted by Ministerio de Ciencia, Innovacion...
One of the significant problems in classification is class noise which has numerous potential conseq...
Real data may have a considerable amount of noise produced by error in data collection, transmission...
The data in industrial informatics may be high-dimensional and mislabeled. Irrelevant or noisy featu...
Noise filters are preprocessing techniques designed to improve data quality in classification tasks ...
Purpose: The purpose of this study is to enhance data quality and overall accuracy and improve certa...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
Supported by the Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-06858 and P11-TIC-7765. J.A. Saez ...
International audienceReal-world datasets are often contaminated with label noise; labeling is not a...
This paper presents a new approach for identifying and eliminating mislabeled instances in large or ...
Real-world classification data usually contain noise, which can affect the accuracy of the models an...
CNPqLabel noise detection has been widely studied in Machine Learning due to its importance to impro...
Noise filtering is most frequently used in data preprocessing to improve the accuracy of induced cla...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
This work was supported by project PID2020-119478GB-I00 granted by Ministerio de Ciencia, Innovacion...
One of the significant problems in classification is class noise which has numerous potential conseq...
Real data may have a considerable amount of noise produced by error in data collection, transmission...
The data in industrial informatics may be high-dimensional and mislabeled. Irrelevant or noisy featu...
Noise filters are preprocessing techniques designed to improve data quality in classification tasks ...
Purpose: The purpose of this study is to enhance data quality and overall accuracy and improve certa...
In classification, noise may deteriorate the system performance and increase the complexity of the m...
Supported by the Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-06858 and P11-TIC-7765. J.A. Saez ...
International audienceReal-world datasets are often contaminated with label noise; labeling is not a...
This paper presents a new approach for identifying and eliminating mislabeled instances in large or ...
Real-world classification data usually contain noise, which can affect the accuracy of the models an...
CNPqLabel noise detection has been widely studied in Machine Learning due to its importance to impro...
Noise filtering is most frequently used in data preprocessing to improve the accuracy of induced cla...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
Ensemble methods combine a set of classifiers to construct a new classifier that is (often) more acc...
This work was supported by project PID2020-119478GB-I00 granted by Ministerio de Ciencia, Innovacion...