LASER: A new method for locally adaptive nonparametric regression
Chatterjee, Sabyasachi, Goswami, Subhajit, Mukherjee, Soumendu Sundar
In this article, we introduce \textsf{LASER} (Locally Adaptive Smoothing Estimator for Regression), a computationally efficient locally adaptive nonparametric regression method that performs variable bandwidth local polynomial regression. We prove that it adapts (near-)optimally to the local H\"{o}lder exponent of the underlying regression function \texttt{simultaneously} at all points in its domain. Furthermore, we show that there is a single ideal choice of a global tuning parameter under which the above mentioned local adaptivity holds. Despite the vast literature on nonparametric regression, instances of practicable methods with provable guarantees of such a strong notion of local adaptivity are rare. The proposed method achieves excellent performance across a broad range of numerical experiments in comparison to popular alternative locally adaptive methods.
Dec-27-2024
- Country:
- Asia > India (0.28)
- North America > United States
- Illinois (0.14)
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- Research Report (0.64)
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