fda.vi - Functional Data Analysis using Variational Inference
Implements a variational Expectation-Maximization (VEM)
algorithm for smoothing one or multiple functional observations
via basis function selection. The algorithm estimates all model
parameters simultaneously and automatically, while accounting
for within-curve correlation. The approach provides a flexible
and computationally efficient framework for smoothing
correlated functional data.