Class-wise characteristics of training examples affect the performance of deep classifiers. A well-studied example is when the number of training examples of classes follows a long-tailed distribution, a situation that is likely to yield suboptimal performance for under-represented classes. This class imbalance problem is conventionally addressed by approaches relying on the class-wise cardinality of training examples, such as data resampling. In this paper, we demonstrate that considering solely the cardinality of classes does not cover all issues causing class imbalance. To measure class imbalance, we propose CLASS UNCERTAINTY as the average predictive uncertainty of the training examples, and we show that this novel measure captures the ...
he problem of modeling binary responses by using cross-sectional data has been addressed with a numb...
We introduce an approach to learning from imbalanced class distributions that does not change the un...
International audienceClass imbalance is a common issue in many real world classification problems. ...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Abstract In machine learning problems, dierences in prior class probabilities|or class imbalances|ha...
Abstract Background The goal of class prediction studies is to develop rules to accurately predict t...
Abstract The purpose of this study is to examine existing deep learning techniques for addressing cl...
Many real world applications involve highly imbalanced class distribution. Research into learning fr...
Building useful classification models can be a challeng-ing endeavor, especially when training data ...
Most existing classification approaches assume the underlying training set is evenly distributed. In...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
Handling classification uncertainty is crucial for supporting efficient and ethical classification s...
There are several aspects that might influence the performance achieved by existing learning systems...
Data plays a key role in the design of expert and intelligent systems and therefore, data preprocess...
he problem of modeling binary responses by using cross-sectional data has been addressed with a numb...
We introduce an approach to learning from imbalanced class distributions that does not change the un...
International audienceClass imbalance is a common issue in many real world classification problems. ...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Abstract In machine learning problems, dierences in prior class probabilities|or class imbalances|ha...
Abstract Background The goal of class prediction studies is to develop rules to accurately predict t...
Abstract The purpose of this study is to examine existing deep learning techniques for addressing cl...
Many real world applications involve highly imbalanced class distribution. Research into learning fr...
Building useful classification models can be a challeng-ing endeavor, especially when training data ...
Most existing classification approaches assume the underlying training set is evenly distributed. In...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
Handling classification uncertainty is crucial for supporting efficient and ethical classification s...
There are several aspects that might influence the performance achieved by existing learning systems...
Data plays a key role in the design of expert and intelligent systems and therefore, data preprocess...
he problem of modeling binary responses by using cross-sectional data has been addressed with a numb...
We introduce an approach to learning from imbalanced class distributions that does not change the un...
International audienceClass imbalance is a common issue in many real world classification problems. ...