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fdclassify

Supervised Classification for Functional Data via Signed Depth

v0.1.0 · Apr 23, 2026 · GPL-3

Description

Provides a suite of supervised classifiers for functional data based on the concept of signed depth. The core pipeline computes Fraiman-Muniz (FM) functional depth in either its Tukey or Simplicial variant, derives a signed depth by comparing each curve to a reference median curve via the signed distance integral, and feeds the resulting scalar summary into several classifiers: the k-Ranked Nearest Neighbour (k-RNN) rule, a moving-average smoother, a kernel-density Bayes rule, logistic regression on signed depth and distance to the mode, and a generalised additive model (GAM) classifier. Cross-validation routines for tuning the neighbourhood size k and parametric bootstrap confidence intervals are also included.

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OK 4 OK · 0 NOTE · 0 WARNING · 0 ERROR · 0 FAILURE Apr 24, 2026

Dependency Network

Dependencies Reverse dependencies mgcv modeest fdclassify

Version History

new 0.1.0 Apr 23, 2026