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Random Embeddings, Matrix-valued Kernels and Deep Learning
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Vikas Sindhwani, IBM T.J. Watson Research Center
Spectral Algorithms: From Theory to Practice
Simons Institute
Simons Institute
UC Berkeley
computer science
theory of computing
Algorithmic Spectral Graph Theory
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