The classification of datasets with a skewed class distribution is an important problem in data mining. Evolutionary undersampling of the majority class has proved to be a successful approach to tackle this issue. Such a challenging task may become even more difficult when the number of the majority class examples is very big. In this scenario, the use of the evolutionary model becomes unpractical due to the memory and time constrictions. Divide-and-conquer approaches based on the MapReduce paradigm have already been proposed to handle this type of problems by dividing data into multiple subsets. However, in extremely imbalanced cases, these models may suffer from a lack of density from the minority class in the subsets considered. Aiming a...
Abstract In the classification framework there are prob-lems in which the number of examples per cla...
Abstract In a majority–minority classification problem, class imbalance in the dataset(s) can dramat...
The volume of data in today’s applications has meant a change in the way Machine Learning issues are...
The classification of datasets with a skewed class distribution is an important problem in data mini...
This work was supported by the Research Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-6858 and P...
Classification techniques in the big data scenario are in high demand in a wide variety of applicati...
Abstract — Classification techniques in the big data scenario are in high demand in a wide variety o...
The design of efficient big data learning models has become a common need in a great number of appli...
Learning from imbalanced data is among the most challenging areas in contemporary machine learning. ...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
Abstract—The “big data ” term has caught the attention of experts in the context of learning from da...
Learning from imbalanced data poses significant challenges for the classifier. This becomes even mor...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
With the rapid development of internet technology, the amount of collected or generated data has inc...
Abstract In the classification framework there are prob-lems in which the number of examples per cla...
Abstract In a majority–minority classification problem, class imbalance in the dataset(s) can dramat...
The volume of data in today’s applications has meant a change in the way Machine Learning issues are...
The classification of datasets with a skewed class distribution is an important problem in data mini...
This work was supported by the Research Projects TIN2011-28488, TIN2013-40765-P, P10-TIC-6858 and P...
Classification techniques in the big data scenario are in high demand in a wide variety of applicati...
Abstract — Classification techniques in the big data scenario are in high demand in a wide variety o...
The design of efficient big data learning models has become a common need in a great number of appli...
Learning from imbalanced data is among the most challenging areas in contemporary machine learning. ...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
Abstract—The “big data ” term has caught the attention of experts in the context of learning from da...
Learning from imbalanced data poses significant challenges for the classifier. This becomes even mor...
Learning with imbalanced data is one of the recent challenges in machine learning. Various solutions...
© International Association of Engineers. Mining imbalanced data, which is also known as a class im...
With the rapid development of internet technology, the amount of collected or generated data has inc...
Abstract In the classification framework there are prob-lems in which the number of examples per cla...
Abstract In a majority–minority classification problem, class imbalance in the dataset(s) can dramat...
The volume of data in today’s applications has meant a change in the way Machine Learning issues are...