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Learning active instances on the border in the case of imbalanced data classification task.

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Active-Learning-in-Imbalance-Classification

Learning active instances on the border in the case of an imbalanced data classification task.

What is it?

The implementation is based on the border learning: active learning algorithm for imbalance classification with early stopping by using small pools in active.py module.

An extension and transfer of the technique to the area of highly interpretable and robust prototype-based models LVQ's has been exemplified with matrix-lvq in the active1.py script.

Reference

Ertekin, Seyda, et al. "Learning on the border: active learning in imbalanced data classification." Proceedings of the sixteenth ACM conference on Conference on information and knowledge management. 2007.

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Learning active instances on the border in the case of imbalanced data classification task.

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