cs.AI updates on arXiv.org 10月02日
条件深度生成模型理论性质研究
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本文探讨条件深度生成模型在分布回归统计框架下的理论特性,研究基于似然估计的模型大样本性质,并分析了条件分布的收敛速率,以解释条件深度生成模型如何避免维度灾难,并通过数值实验验证了理论结果。

arXiv:2410.02025v2 Announce Type: replace-cross Abstract: In this work, we explore the theoretical properties of conditional deep generative models under the statistical framework of distribution regression where the response variable lies in a high-dimensional ambient space but concentrates around a potentially lower-dimensional manifold. More specifically, we study the large-sample properties of a likelihood-based approach for estimating these models. Our results lead to the convergence rate of a sieve maximum likelihood estimator (MLE) for estimating the conditional distribution (and its devolved counterpart) of the response given predictors in the Hellinger (Wasserstein) metric. Our rates depend solely on the intrinsic dimension and smoothness of the true conditional distribution. These findings provide an explanation of why conditional deep generative models can circumvent the curse of dimensionality from the perspective of statistical foundations and demonstrate that they can learn a broader class of nearly singular conditional distributions. Our analysis also emphasizes the importance of introducing a small noise perturbation to the data when they are supported sufficiently close to a manifold. Finally, in our numerical studies, we demonstrate the effective implementation of the proposed approach using both synthetic and real-world datasets, which also provide complementary validation to our theoretical findings.

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条件深度生成模型 分布回归 似然估计 维度灾难 数值实验
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