Classification with application to Functional Data based on Gaussian process
Authors
Xin Liu and Chunzheng Cao
Abstract
In \u00a0this \u00a0paper, \u00a0we \u00a0briefly \u00a0introduce \u00a0four \u00a0methods \u00a0for \u00a0functional \u00a0classification. \u00a0To \u00a0compare \u00a0the
effects of the four \u00a0models, \u00a0we \u00a0generate the data \u00a0from \u00a0Gaussian process based on a functional \u00a0mixed-effects
model, square exponential kernel is used in random-effect term to describe the nonlinear structure of the data.
The outcomes show that the two functional classification models have a better prediction correct rate than the
two machine learning classification models.