Influence of Resampling on Accuracy of Imbalanced Classification
July 12, 2017 Β· Declared Dead Β· π International Conference on Machine Vision
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Authors
Evgeny Burnaev, Pavel Erofeev, Artem Papanov
arXiv ID
1707.03905
Category
stat.ML: Machine Learning (Stat)
Cross-listed
cs.LG,
stat.AP
Citations
99
Venue
International Conference on Machine Vision
Last Checked
2 months ago
Abstract
In many real-world binary classification tasks (e.g. detection of certain objects from images), an available dataset is imbalanced, i.e., it has much less representatives of a one class (a minor class), than of another. Generally, accurate prediction of the minor class is crucial but it's hard to achieve since there is not much information about the minor class. One approach to deal with this problem is to preliminarily resample the dataset, i.e., add new elements to the dataset or remove existing ones. Resampling can be done in various ways which raises the problem of choosing the most appropriate one. In this paper we experimentally investigate impact of resampling on classification accuracy, compare resampling methods and highlight key points and difficulties of resampling.
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