The classiFunc package implements methods for functional data classification. The main functions of this package are classiKnn, a k nearest neighbor estimator for functional data, and classiKernel, a kernel estimator for functional data. The package uses efficiently implemented semimetrics to create the distance matrix of the functional observations in the function computeDistMat.
For installation instructions, see below. A hands on introduction to can be found in the vignette. Details on specific functions are in the reference manual.
For issues, bugs, feature requests etc. please use the Github Issues. Input is always welcome.
You can install the current classiFunc version from CRAN with:
or the latest patched version from Github with:
# install.packages("devtools") devtools::install_github("maierhofert/classiFunc")