Hybrid Regularisation of Functional Linear Models
Anirvan Chakraborty, Victor M. Panaretos

TL;DR
This paper introduces a hybrid regularisation method for functional linear models that combines spectral truncation and Tikhonov regularisation, leading to improved finite-sample performance over traditional methods.
Contribution
It proposes a novel hybrid estimator that decomposes the covariate and applies different regularisation strategies, outperforming Tikhonov regularisation in finite samples while maintaining stability.
Findings
Hybrid estimator strictly improves MSE over Tikhonov in finite samples.
The method remains stable and asymptotically optimal.
Simulation results show significant gains with modest sample sizes.
Abstract
We consider the problem of estimating the slope function in a functional regression with a scalar response and a functional covariate. This central problem of functional data analysis is well known to be ill-posed, thus requiring a regularised estimation procedure. The two most commonly used approaches are based on spectral truncation or Tikhonov regularisation of the empirical covariance operator. In principle, Tikhonov regularisation is the more canonical choice. Compared to spectral truncation, it is robust to eigenvalue ties, while it attains the optimal minimax rate of convergence in the mean squared sense, and not just in a concentration probability sense. In this paper, we show that, surprisingly, one can strictly improve upon the performance of the Tikhonov estimator in finite samples by means of a linear estimator, while retaining its stability and asymptotic properties by…
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Taxonomy
TopicsStatistical and numerical algorithms · Numerical methods in inverse problems · Image and Signal Denoising Methods
