Crandore Hub

veesa

Pipeline for Explainable Machine Learning with Functional Data

Implements the Variable importance Explainable Elastic Shape Analysis pipeline for explainable machine learning with functional data inputs. Converts training and testing data functional inputs to elastic shape analysis principal components that account for vertical and/or horizontal variability. Computes feature importance to identify important principal components and visualizes variability captured by functional principal components. See Goode et al. (2025) <doi:10.48550/arXiv.2501.07602> for technical details about the methodology.

Versions across snapshots

VersionRepositoryFileSize
0.1.7 rolling linux/jammy R-4.5 veesa_0.1.7.tar.gz 647.2 KiB
0.1.7 rolling linux/noble R-4.5 veesa_0.1.7.tar.gz 647.2 KiB
0.1.7 rolling source/ R- veesa_0.1.7.tar.gz 607.6 KiB
0.1.7 latest linux/jammy R-4.5 veesa_0.1.7.tar.gz 647.2 KiB
0.1.7 latest linux/noble R-4.5 veesa_0.1.7.tar.gz 647.2 KiB
0.1.7 latest source/ R- veesa_0.1.7.tar.gz 607.6 KiB
0.1.7 2026-04-26 source/ R- veesa_0.1.7.tar.gz 607.6 KiB
0.1.7 2026-04-23 source/ R- veesa_0.1.7.tar.gz 607.6 KiB
0.1.7 2026-04-09 windows/windows R-4.5 veesa_0.1.7.zip 650.1 KiB
0.1.6 2025-04-20 source/ R- veesa_0.1.6.tar.gz 606.0 KiB

Dependencies (latest)

Imports

Suggests