Learning With Kernels: A Local Rademacher Complexity-Based Analysis With Application to Graph Kernels.

IEEE Transactions on Neural Networks and Learning Systems(2018)

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摘要
When dealing with kernel methods, one has to decide which kernel and which values for the hyperparameters to use. Resampling techniques can address this issue but these procedures are time-consuming. This problem is particularly challenging when dealing with structured data, in particular with graphs, since several kernels for graph data have been proposed in literature, but no clear relationship ...
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关键词
Kernel,Complexity theory,Tools,Particle separators,Hilbert space,Training
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