Two generative frameworks (sieve MLE via dimension-aware VAE mixtures and diffusion on score fields) are developed for distributions on stratified spaces, with convergence rates depending on intrinsic dimensions and smoothness, plus consistent estimators for the number and dimensions of strata.
Then we will use Lemmas 26, 27 and 28 for the approximationm t,σ t, monomial and reciprocal function
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A Deep Generative Approach to Stratified Learning
Two generative frameworks (sieve MLE via dimension-aware VAE mixtures and diffusion on score fields) are developed for distributions on stratified spaces, with convergence rates depending on intrinsic dimensions and smoothness, plus consistent estimators for the number and dimensions of strata.