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Analysis and Extension of Arc-Cosine Kernels for Large Margin Classification

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arxiv 1112.3712 v1 pith:VOPIA2S7 submitted 2011-12-16 cs.LG

Analysis and Extension of Arc-Cosine Kernels for Large Margin Classification

classification cs.LG
keywords kernelsgeometryclassificationcomputationfamilylargemimicnetworks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We investigate a recently proposed family of positive-definite kernels that mimic the computation in large neural networks. We examine the properties of these kernels using tools from differential geometry; specifically, we analyze the geometry of surfaces in Hilbert space that are induced by these kernels. When this geometry is described by a Riemannian manifold, we derive results for the metric, curvature, and volume element. Interestingly, though, we find that the simplest kernel in this family does not admit such an interpretation. We explore two variations of these kernels that mimic computation in neural networks with different activation functions. We experiment with these new kernels on several data sets and highlight their general trends in performance for classification.

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