An Online Stochastic Kernel Machine for Robust Signal Classification

05/19/2019
by   Raghu G. Raj, et al.
3

We present a novel variation of online kernel machines in which we exploit a consensus based optimization mechanism to guide the evolution of decision functions drawn from a reproducing kernel Hilbert space, which efficiently models the observed stationary process.

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