A k nearest neighbor (kNN) classi er classi es a query in- stance to the most frequent class of its k nearest neighbors in the training instance space. For imbalanced class distribution, a query instance is of- ten overwhelmed by majority class instances in its neighborhood and likely to be classi ed to the majority class. We propose to identify exem- plar minority class training instances and generalize them to Gaussian balls as concepts for the minority class. Our k Exemplar-based Nearest Neighbor (kENN) classi er is therefore more sensitive to the minority class. Extensive experiments show that kENN signi cantly improves the performance of kNN and also outperforms popular re-sampling and cost- sensitive learning strategies for imbalanced...
k-Nearest Neighbor (k-NN) has very good accuracy results on data with almost the same class distribu...
Learning classifiers from imbalanced or skewed datasets is an important topic, aris- ing very often ...
International audienceIn this paper, we address the challenging problem of learning from imbalanced ...
The k nearest neighbour (kNN) algorithm classifies a query instance to the most frequent class among...
Imbalanced classification is a challenging problem. Re-sampling and cost-sensitive learning are glob...
k nearest neighbor (kNN) is a simple and widely used classifier; it can achieve comparable performan...
International audienceDue to the inability of the accuracy-driven methods to address the challenging...
Abstract — Today, solving imbalanced problems is difficult task as it contains an unequal distributi...
Classification problems with an imbalanced class distribution have received an increased amount of a...
Many traditional approaches to pattern classifi- cation assume that the problem classes share simila...
Abstract. Imbalanced class distribution is a challenging problem in many real-life classification pr...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
The standard kNN algorithm suffers from two major drawbacks: sensitivity to the parameter value k, i...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
SMOTE is an effective oversampling technique for a class imbalance problem due to its simplicity and...
k-Nearest Neighbor (k-NN) has very good accuracy results on data with almost the same class distribu...
Learning classifiers from imbalanced or skewed datasets is an important topic, aris- ing very often ...
International audienceIn this paper, we address the challenging problem of learning from imbalanced ...
The k nearest neighbour (kNN) algorithm classifies a query instance to the most frequent class among...
Imbalanced classification is a challenging problem. Re-sampling and cost-sensitive learning are glob...
k nearest neighbor (kNN) is a simple and widely used classifier; it can achieve comparable performan...
International audienceDue to the inability of the accuracy-driven methods to address the challenging...
Abstract — Today, solving imbalanced problems is difficult task as it contains an unequal distributi...
Classification problems with an imbalanced class distribution have received an increased amount of a...
Many traditional approaches to pattern classifi- cation assume that the problem classes share simila...
Abstract. Imbalanced class distribution is a challenging problem in many real-life classification pr...
In this thesis, we develop methods for constructing an A-weighted metric (x - y)' A( x - y) that im...
The standard kNN algorithm suffers from two major drawbacks: sensitivity to the parameter value k, i...
We consider improving the performance of k-Nearest Neighbor classifiers. A reg-ularized kNN is propo...
SMOTE is an effective oversampling technique for a class imbalance problem due to its simplicity and...
k-Nearest Neighbor (k-NN) has very good accuracy results on data with almost the same class distribu...
Learning classifiers from imbalanced or skewed datasets is an important topic, aris- ing very often ...
International audienceIn this paper, we address the challenging problem of learning from imbalanced ...