Dealing with imbalanced datasets is a recurrent issue in health-care data processing. Most literature deals with small academic datasets, so that results often do not extrapolate to the large real-life datasets, or have little real-life validity. When minority class sample generation by interpolation is meaningless, the recourse to undersampling the majority class is mandatory in order to reach some acceptable results. Ensembles of classifiers provide the advantage of the diversity of their members, which may allow adaptation to the imbalanced distribution. In this paper, we present a pipeline method combining random undersampling with bootstrap aggregation (bagging) for a hybrid ensemble of extreme learning machines and decision trees, who...
In Machine Learning, a data set is imbalanced when the class proportions are highly skewed. Imbalanc...
Abstract—Classifier learning with data-sets that suffer from im-balanced class distributions is a ch...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Due to the common use of electronic health databases in many healthcare services, healthcare data ar...
Clinical data analysis and forecasting have made substantial contributions to disease control, preve...
Clinical data analysis and forecasting have made substantial contributions to disease control, preve...
In this paper, we present a new rule induction algorithm for machine learning in medical diagnosis. ...
Medical datasets are often predominately composed of “normal” examples with only a small percentage ...
There is an unprecedented amount of data available. This has caused knowledge discovery to garner at...
Ensembles are often capable of greater prediction accuracy than any of their individual members. As ...
Developing a prognostic model to predict an asset’s health condition is a maintenance strategy that ...
Learning from imbalanced data is an important problem in data mining research. Much research has add...
Learning from imbalanced data is an important problem in data mining research. Much research has add...
In healthcare machine learning is used mainly for disease diagnosis or acute condition detection bas...
Short time readmission prediction in Emergency Depart-ments (ED) is a valuable tool to improve...
In Machine Learning, a data set is imbalanced when the class proportions are highly skewed. Imbalanc...
Abstract—Classifier learning with data-sets that suffer from im-balanced class distributions is a ch...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...
Due to the common use of electronic health databases in many healthcare services, healthcare data ar...
Clinical data analysis and forecasting have made substantial contributions to disease control, preve...
Clinical data analysis and forecasting have made substantial contributions to disease control, preve...
In this paper, we present a new rule induction algorithm for machine learning in medical diagnosis. ...
Medical datasets are often predominately composed of “normal” examples with only a small percentage ...
There is an unprecedented amount of data available. This has caused knowledge discovery to garner at...
Ensembles are often capable of greater prediction accuracy than any of their individual members. As ...
Developing a prognostic model to predict an asset’s health condition is a maintenance strategy that ...
Learning from imbalanced data is an important problem in data mining research. Much research has add...
Learning from imbalanced data is an important problem in data mining research. Much research has add...
In healthcare machine learning is used mainly for disease diagnosis or acute condition detection bas...
Short time readmission prediction in Emergency Depart-ments (ED) is a valuable tool to improve...
In Machine Learning, a data set is imbalanced when the class proportions are highly skewed. Imbalanc...
Abstract—Classifier learning with data-sets that suffer from im-balanced class distributions is a ch...
Many real-life problems can be described as unbalanced, where the number of instances belonging to o...