A closed-form upper bound on the maximum Hessian eigenvalue of cross-entropy loss is derived for smooth nonlinear neural networks.
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Wolkowicz-Styan Upper Bound on the Hessian Eigenspectrum for Cross-Entropy Loss in Nonlinear Smooth Neural Networks
A closed-form upper bound on the maximum Hessian eigenvalue of cross-entropy loss is derived for smooth nonlinear neural networks.