Oversampling the Minority Class in the Feature Space.

IEEE Transactions on Neural Networks and Learning Systems(2016)

引用 67|浏览12
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摘要
The imbalanced nature of some real-world data is one of the current challenges for machine learning researchers. One common approach oversamples the minority class through convex combination of its patterns. We explore the general idea of synthetic oversampling in the feature space induced by a kernel function (as opposed to input space). If the kernel function matches the underlying problem, the ...
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关键词
Kernel,Support vector machines,Training,Symmetric matrices,Learning systems,Eigenvalues and eigenfunctions,Algorithm design and analysis
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