Online Regularized Learning Algorithm for Functional Data
This work addresses the challenge of improving convergence in online functional data analysis, offering incremental advances over existing methods for researchers in statistics and machine learning.
The paper tackles the problem of online learning for functional linear models by introducing a regularized algorithm, achieving fast convergence rates for prediction and estimation errors without capacity assumptions when using polynomial step-size decay.
In recent years, functional linear models have attracted growing attention in statistics and machine learning, with the aim of recovering the slope function or its functional predictor. This paper considers online regularized learning algorithm for functional linear models in reproducing kernel Hilbert spaces. Convergence analysis of excess prediction error and estimation error are provided with polynomially decaying step-size and constant step-size, respectively. Fast convergence rates can be derived via a capacity dependent analysis. By introducing an explicit regularization term, we uplift the saturation boundary of unregularized online learning algorithms when the step-size decays polynomially, and establish fast convergence rates of estimation error without capacity assumption. However, it remains an open problem to obtain capacity independent convergence rates for the estimation error of the unregularized online learning algorithm with decaying step-size. It also shows that convergence rates of both prediction error and estimation error with constant step-size are competitive with those in the literature.