The present paper studies the influence of two distinct factors on the performance of some resampling strategies for handling imbalanced data sets. In particular, we focus on the nature of the classifier used, along with the ratio between minority and majority classes. Experiments using eight different classifiers show that the most significant differences are for data sets with low or moderate imbalance: over-sampling clearly appears as better than under-sampling for local classifiers, whereas some under-sampling strategies outperform over-sampling when employing classifiers with global learning
We present a comprehensive suite of experimentation on the subject of learning from imbalanced data....
Learning from imbalanced data has been a research topic studied for many years. There are two main a...
Class imbalance occurs when the distribution of classes between the majority and the minority classe...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Imbalanced class problem (machine learning) is a problem that arises because of the significant diff...
Data plays a key role in the design of expert and intelligent systems and therefore, data preprocess...
Dissertation presented as the partial requirement for obtaining a Master's degree in Statistics and...
Imbalanced datasets are a well-known problem in data mining, where the datasets are composed of two ...
Imbalanced datasets are a well-known problem in data mining, where the datasets are composed of two ...
Data plays a key role in the design of expert and intelligent systems and therefore, data preprocess...
Re-Sampling methods are commonly used for dealing with the class-imbalance problem. Their advantage ...
Abstract. Learning classifiers from imbalanced or skewed datasets is an important topic, arising ver...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
In pattern recognition, it is well known that the classifier performance depends on the classificati...
In many application domains such as medicine, information retrieval, cybersecurity, social media, et...
We present a comprehensive suite of experimentation on the subject of learning from imbalanced data....
Learning from imbalanced data has been a research topic studied for many years. There are two main a...
Class imbalance occurs when the distribution of classes between the majority and the minority classe...
The present paper studies the influence of two distinct factors on the performance of some resamplin...
Imbalanced class problem (machine learning) is a problem that arises because of the significant diff...
Data plays a key role in the design of expert and intelligent systems and therefore, data preprocess...
Dissertation presented as the partial requirement for obtaining a Master's degree in Statistics and...
Imbalanced datasets are a well-known problem in data mining, where the datasets are composed of two ...
Imbalanced datasets are a well-known problem in data mining, where the datasets are composed of two ...
Data plays a key role in the design of expert and intelligent systems and therefore, data preprocess...
Re-Sampling methods are commonly used for dealing with the class-imbalance problem. Their advantage ...
Abstract. Learning classifiers from imbalanced or skewed datasets is an important topic, arising ver...
Abstract—In the last decade, class imbalance has attracted a huge amount of attention from researche...
In pattern recognition, it is well known that the classifier performance depends on the classificati...
In many application domains such as medicine, information retrieval, cybersecurity, social media, et...
We present a comprehensive suite of experimentation on the subject of learning from imbalanced data....
Learning from imbalanced data has been a research topic studied for many years. There are two main a...
Class imbalance occurs when the distribution of classes between the majority and the minority classe...