Abstract. Real-world data is never perfect and can often suffer from corruptions (noise) that may impact interpretations of the data, models created from the data and decisions made based on the data. Noise can reduce system performance in terms of classification accuracy, time in building a classifier and the size of the classifier. Accordingly, most existing learning algorithms have integrated various approaches to enhance their learning abilities from noisy environments, but the existence of noise can still introduce serious negative impacts. A more reasonable solution might be to employ some preprocessing mechanisms to handle noisy instances before a learner is formed. Unfortunately, rare research has been conducted to systematically ex...
International audienceWhen training classifiers, presence of noise can severely harm theirperformanc...
Inductive learning systems have been successfully applied in a number of medical domains. It is gene...
Supervised learning under label noise has seen numerous advances recently, while existing theoretica...
Developing robust and less complex models capable of coping with environment volatility is the quest...
One of the significant problems in classification is class noise which has numerous potential conseq...
Most real world data contains some amount of noise, i.e. unwanted factors obscuring the underlying s...
AbstractThe means of evaluating, using artificial data, algorithms, such as ID3, which learn concept...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
This thesis focuses on the aspect of label noise for real-life datasets. Due to the upcoming growing...
In classification, it is often difficult or expensive to obtain completely accurate and reliable lab...
Noisy data are common in real-World problems and may have several causes, like inaccuracies, distort...
Inductive learning aims at constructing a generalized description of a given set of data, so that fu...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Abstract—The presence of noise is common in any real data set and may adversely affect the accuracy,...
Real data may have a considerable amount of noise produced by error in data collection, transmission...
International audienceWhen training classifiers, presence of noise can severely harm theirperformanc...
Inductive learning systems have been successfully applied in a number of medical domains. It is gene...
Supervised learning under label noise has seen numerous advances recently, while existing theoretica...
Developing robust and less complex models capable of coping with environment volatility is the quest...
One of the significant problems in classification is class noise which has numerous potential conseq...
Most real world data contains some amount of noise, i.e. unwanted factors obscuring the underlying s...
AbstractThe means of evaluating, using artificial data, algorithms, such as ID3, which learn concept...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
This thesis focuses on the aspect of label noise for real-life datasets. Due to the upcoming growing...
In classification, it is often difficult or expensive to obtain completely accurate and reliable lab...
Noisy data are common in real-World problems and may have several causes, like inaccuracies, distort...
Inductive learning aims at constructing a generalized description of a given set of data, so that fu...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Abstract—The presence of noise is common in any real data set and may adversely affect the accuracy,...
Real data may have a considerable amount of noise produced by error in data collection, transmission...
International audienceWhen training classifiers, presence of noise can severely harm theirperformanc...
Inductive learning systems have been successfully applied in a number of medical domains. It is gene...
Supervised learning under label noise has seen numerous advances recently, while existing theoretica...