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The Reconstruction Approach: From Interpolation to Regression

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posted on 2020-05-07, 09:11 authored by Shifeng Xiong

This article introduces an interpolation-based method, called the reconstruction approach, for nonparametric regression. Based on the fact that interpolation usually has negligible errors compared to statistical estimation, the reconstruction approach uses an interpolator to parameterize the regression function with its values at finite knots, and then estimates these values by (regularized) least squares. Some popular methods including kernel ridge regression can be viewed as its special cases. It is shown that the reconstruction idea not only provides different angles to look into existing methods, but also produces new effective experimental design and estimation methods for nonparametric models. In particular, for some methods of complexityO(n3), where n is the sample size, this approach provides effective surrogates with much less computational burden. This point makes it very suitable for large datasets. Supplementary materials for this article are available online.

Funding

This work is supported by the National Natural Science Foundation of China (grant nos. 11671386 and 11871033) and China Institute of Marine Technology and Economy (contact no. 2019A128).

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