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catch (version 1.0.1)

Covariate-Adjusted Tensor Classification in High-Dimensions

Description

Performs classification and variable selection on high-dimensional tensors (multi-dimensional arrays) after adjusting for additional covariates (scalar or vectors) as CATCH model in Pan, Mai and Zhang (2018) . The low-dimensional covariates and the high-dimensional tensors are jointly modeled to predict a categorical outcome in a multi-class discriminant analysis setting. The Covariate-Adjusted Tensor Classification in High-dimensions (CATCH) model is fitted in two steps: (1) adjust for the covariates within each class; and (2) penalized estimation with the adjusted tensor using a cyclic block coordinate descent algorithm. The package can provide a solution path for tuning parameter in the penalized estimation step. Special case of the CATCH model includes linear discriminant analysis model and matrix (or tensor) discriminant analysis without covariates.

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Version

Install

install.packages('catch')

Monthly Downloads

169

Version

1.0.1

License

GPL-2

Maintainer

Yuqing Pan

Last Published

January 4th, 2021

Functions in catch (1.0.1)

cv.catch

Cross-validation for CATCH
predict.catch

Predict categorical responses.
adjten

Adjust tensor for covariates.
catch

Fit a CATCH model and predict categorical response.
catch_matrix

Fit a CATCH model for matrix and predict categorical response.
csa

Colorimetric sensor array (CSA) data