l_inf-approximation of localized distributions
Distributions in spatial model often exhibit localized features. Intuitively, this locality implies a low intrinsic dimensionality, which can be exploited for efficient approximation and computation of complex distributions. However, existing approximation theory mainly considers the joint distribut...
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Zusammenfassung: | Distributions in spatial model often exhibit localized features. Intuitively,
this locality implies a low intrinsic dimensionality, which can be exploited
for efficient approximation and computation of complex distributions. However,
existing approximation theory mainly considers the joint distributions, which
does not guarantee that the marginal errors are small. In this work, we
establish a dimension independent error bound for the marginals of approximate
distributions. This $\ell_\infty$-approximation error is obtained using Stein's
method, and we propose a $\delta$-locality condition that quantifies the degree
of localization in a distribution. We also show how $\delta$-locality can be
derived from different conditions that characterize the distribution's
locality. Our $\ell_\infty$ bound motivates the localization of existing
approximation methods to respect the locality. As examples, we show how to use
localized likelihood-informed subspace method and localized score matching,
which not only avoid dimension dependence in the approximation error, but also
significantly reduce the computational cost due to the local and parallel
implementation based on the localized structure. |
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DOI: | 10.48550/arxiv.2410.11771 |