International audienceIn this paper, we address the problem of learning from imbalanced data. We consider the scenario where the number of negative examples is much larger than the number of positive ones. We propose a theoretically-founded method which learns a set of local ellipsoids centered at the minority class examples while excluding the negative examples of the majority class. We address this task from a Mahalanobis-like metric learning point of view and we derive generalization guarantees on the learned metric using the uniform stability framework. Our experimental evaluation on classic benchmarks and on a proprietary dataset in bank fraud detection shows the effectiveness of our approach, particularly when the imbalancy is huge
The number of sensing data are often imbalanced across data classes, for which oversampling on the m...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
Abstract — Today, solving imbalanced problems is difficult task as it contains an unequal distributi...
International audienceIn this paper, we address the problem of learning from imbalanced data. We con...
International audienceLearning from imbalanced data, where the positive examples are very scarce, re...
International audienceA key element of any machine learning algorithm is the use of a function that ...
International audienceIn this paper, we address the challenging problem of learning from imbalanced ...
A learning algorithm referred to as Maximum Margin (MM) is proposed for considering the class-imbala...
There is an unprecedented amount of data available. This has caused knowledge discovery to garner at...
Many real-world data sets exhibit imbalanced class distributions in which almost all instances are a...
International audienceDue to the inability of the accuracy-driven methods to address the challenging...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Many real-world domains present the problem of im-balanced data sets, where examples of one classes ...
In this report, I presented my results to the tasks of 2008 UC San Diego Data Mining Contest. This c...
We introduce a method to deal with the problem of learning from imbalanced data sets, where examples...
The number of sensing data are often imbalanced across data classes, for which oversampling on the m...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
Abstract — Today, solving imbalanced problems is difficult task as it contains an unequal distributi...
International audienceIn this paper, we address the problem of learning from imbalanced data. We con...
International audienceLearning from imbalanced data, where the positive examples are very scarce, re...
International audienceA key element of any machine learning algorithm is the use of a function that ...
International audienceIn this paper, we address the challenging problem of learning from imbalanced ...
A learning algorithm referred to as Maximum Margin (MM) is proposed for considering the class-imbala...
There is an unprecedented amount of data available. This has caused knowledge discovery to garner at...
Many real-world data sets exhibit imbalanced class distributions in which almost all instances are a...
International audienceDue to the inability of the accuracy-driven methods to address the challenging...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
Many real-world domains present the problem of im-balanced data sets, where examples of one classes ...
In this report, I presented my results to the tasks of 2008 UC San Diego Data Mining Contest. This c...
We introduce a method to deal with the problem of learning from imbalanced data sets, where examples...
The number of sensing data are often imbalanced across data classes, for which oversampling on the m...
This thesis focuses on the study of machine learning and pattern recognition algorithms for imbalanc...
Abstract — Today, solving imbalanced problems is difficult task as it contains an unequal distributi...