Universality laws for Gaussian mixtures in generalized linear models
–Neural Information Processing Systems
A recent line of work in high-dimensional statistics working under the Gaussian mixture hypothesis has led to a number of results in the context of empirical risk minimization, Bayesian uncertainty quantification, separation of kernel methods and neural networks, ensembling and fluctuation of random features.
Neural Information Processing Systems
Dec-26-2025, 13:20:51 GMT
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