Complexity L⁰-penalized M-Estimation: Consistency in More Dimensions
classification
🧮 math.ST
stat.TH
keywords
complexityconsistencydomainspartitionspenalizedabstractapplicationsapproximation
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We study the asymptotics in $L^2$ for complexity penalized least squares regression for the discrete approximation of finite-dimensional signals on continuous domains - e.g. images - by piecewise smooth functions. We introduce a fairly general setting which comprises most of the presently popular partitions of signal- or image- domains like interval-, wedgelet- or related partitions, as well as Delaunay triangulations. Then we prove consistency and derive convergence rates. Finally, we illustrate by way of relevant examples that the abstract results are useful for many applications.
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