Laplacian Support Vector Analysis for Subspace Discriminative Learning
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Institute of Electrical and Electronics Engineers2015
We provide necessary and sufficient conditions for stochastic invariance of finite dimensional submanifolds with boundary in Hilbert spaces for stochastic partial differential equations driven by Wiener processes and Poisson random measures. ...