Exploiting synthetically generated data with semi-supervised learning for small and imbalanced datasets
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- Áreas de investigación:
- Año:
- 2019
- Tipo de publicación:
- Artículo en conferencia
- Autores:
-
- Pérez-Ortiz, María
- Tino, Peter
- Mantiuk, Rafal
- Hervás-Martínez, César
- Título del libro:
- Proceedings of the Thirty-Third AAAI (Association for the Advancement of Artificial Intelligence) Conference on Artificial Intelligence (AAAI'19)
- Páginas:
- 4715-4722
- Organización:
- Honolulu,Hawaii, USA
- Mes:
- 27th February
- ISBN:
- 978-1-57735-809-1
- ISSN:
- 2159-5399
- BibTex:
- Abstract:
- Data augmentation is rapidly gaining attention in machinelearning. Synthetic data can be generated by simple transfor-mations or through the data distribution. In the latter case,the main challenge is to estimate the label associated to newsynthetic patterns. This paper studies the effect of generat-ing synthetic data by convex combination of patterns and theuse of these as unsupervised information in a semi-supervisedlearning framework with support vector machines, avoidingthus the need to label synthetic examples. We perform ex-periments on a total of 53 binary classification datasets. Ourresults show that this type of data over-sampling supportsthe well-known cluster assumption in semi-supervised learn-ing, showing outstanding results for small high-dimensionaldatasets and imbalanced learning problems.