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HhP (version 1.0.0)

Hierarchical Heterogeneity Analysis via Penalization

Description

In medical research, supervised heterogeneity analysis has important implications. Assume that there are two types of features. Using both types of features, our goal is to conduct the first supervised heterogeneity analysis that satisfies a hierarchical structure. That is, the first type of features defines a rough structure, and the second type defines a nested and more refined structure. A penalization approach is developed, which has been motivated by but differs significantly from penalized fusion and sparse group penalization. Reference: Ren, M., Zhang, Q., Zhang, S., Zhong, T., Huang, J. & Ma, S. (2022). "Hierarchical cancer heterogeneity analysis based on histopathological imaging features". Biometrics, .

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Version

Install

install.packages('HhP')

Monthly Downloads

152

Version

1.0.0

License

GPL-2

Maintainer

Mingyang Ren

Last Published

November 23rd, 2022

Functions in HhP (1.0.0)

evaluation.sum

Hierarchical Heterogeneity Regression Analysis.
HhP.reg

Hierarchical Heterogeneity Regression Analysis.
example.data.GGM

Some example data
gen_int_beta

Hierarchical Heterogeneity Regression Analysis.
genelambda.obo

Generate tuning parameters
example.data.reg

Some example data