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Generation Properties of Stochastic Interpolation under Finite Training Set

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arxiv 2509.21925 v3 pith:3OMENC5Q submitted 2025-09-26 cs.LG cs.AI

Generation Properties of Stochastic Interpolation under Finite Training Set

classification cs.LG cs.AI
keywords traininggenerativesamplesstochasticfinitegenerationprocessunder
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper investigates the theoretical behavior of generative models under finite training populations. Within the stochastic interpolation generative framework, we derive closed-form expressions for the optimal velocity field and score function when only a finite number of training samples are available. We demonstrate that, under some regularity conditions, the deterministic generative process exactly recovers the training samples, while the stochastic generative process manifests as training samples with added Gaussian noise. Beyond the idealized setting, we consider model estimation errors and introduce formal definitions of underfitting and overfitting specific to generative models. Our theoretical analysis reveals that, in the presence of estimation errors, the stochastic generation process effectively produces convex combinations of training samples corrupted by a mixture of uniform and Gaussian noise. Experiments on generation tasks and downstream tasks such as classification support our theory.

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