Class-imbalance is a common problem in machine learning practice. Typical Imbalanced Learning (IL) methods balance the data via intuitive class-wise resampling or reweighting. However, previous studies suggest that beyond class-imbalance, intrinsic data difficulty factors like overlapping, noise, and small disjuncts also play critical roles. To handle them, many solutions have been proposed (e.g., noise removal, borderline sampling, hard example mining) but are still confined to a specific factor and cannot generalize to broader scenarios, which raises an interesting question: how to handle both class-agnostic difficulties and the class-imbalance in a unified way? To answer this, we consider both class-imbalance and its orthogonal: intra-cl...
Abstract In machine learning problems, dierences in prior class probabilities|or class imbalances|ha...
Machine learning classifiers are designed with the underlying assumption of a roughly balanced numbe...
Invited paper for the AAAI'2000 Workshop on Imbalanced Data Sets.For research to progress most effec...
Many classification problems must deal with imbalanced datasets where one class \u2013 the majority ...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Since many important real-world classification problems involve learning from unbalanced data, the c...
Online class imbalance learning is a new learning problem that combines the challenges of both onlin...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
This thesis studies the diversity issue of classification ensembles for class imbalance learning pro...
The class imbalance problem is prevalent in many domains including medical, natural language process...
Most existing classification approaches assume the underlying training set is evenly distributed. In...
The first book of its kind to review the current status and future direction of the exciting new bra...
The proportion of instances belonging to each class in a data-set plays an important role in machine...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
In predictive tasks, real-world datasets often present di erent degrees of imbalanced (i.e., long-ta...
Abstract In machine learning problems, dierences in prior class probabilities|or class imbalances|ha...
Machine learning classifiers are designed with the underlying assumption of a roughly balanced numbe...
Invited paper for the AAAI'2000 Workshop on Imbalanced Data Sets.For research to progress most effec...
Many classification problems must deal with imbalanced datasets where one class \u2013 the majority ...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Since many important real-world classification problems involve learning from unbalanced data, the c...
Online class imbalance learning is a new learning problem that combines the challenges of both onlin...
Abstract. Many real world datasets exhibit skewed class distributions in which almost all instances ...
This thesis studies the diversity issue of classification ensembles for class imbalance learning pro...
The class imbalance problem is prevalent in many domains including medical, natural language process...
Most existing classification approaches assume the underlying training set is evenly distributed. In...
The first book of its kind to review the current status and future direction of the exciting new bra...
The proportion of instances belonging to each class in a data-set plays an important role in machine...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
In predictive tasks, real-world datasets often present di erent degrees of imbalanced (i.e., long-ta...
Abstract In machine learning problems, dierences in prior class probabilities|or class imbalances|ha...
Machine learning classifiers are designed with the underlying assumption of a roughly balanced numbe...
Invited paper for the AAAI'2000 Workshop on Imbalanced Data Sets.For research to progress most effec...