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yhat (version 2.0-5)

Interpreting Regression Effects

Description

The purpose of this package is to provide methods to interpret multiple linear regression and canonical correlation results including beta weights,structure coefficients, validity coefficients, product measures, relative weights, all-possible-subsets regression, dominance analysis, commonality analysis, and adjusted effect sizes.

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Version

Install

install.packages('yhat')

Monthly Downloads

372

Version

2.0-5

License

GPL (>= 2)

Maintainer

Kim Nimon

Last Published

July 3rd, 2025

Functions in yhat (2.0-5)

plotCI.yhat

Plot CIs from yhat
calc.yhat

More regression indices for lm class objects
booteval.yhat

Evaluate bootstrap metrics produced from calc.yhat
commonality

Commonality Analysis
ci.yhat

Compute CI
combCI

Combine upper and lower confidence intervals
odd

isOdd Function
rlw

Relative Weights
regr

Regression effect reporting for lm class objects
canonCommonality

Commonality Coefficents for Canonical Correlation
dominance

Dominance Weights
commonalityCoefficients

Commonality Coefficents
dombin

Dominance Analysis
boot.yhat

Bootstrap metrics produced from calc.yhat
genList

Generate List R^2 Values
effect.size

Effect Size Computation for lm
setBits

Decimal to Binary
canonVariate

Canonical Commonality Analysis
yhat-package

Interpreting Regression Effects
aps

All Possible Subsets Regression