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Keng Keng

CRAN status

The Keng package is named after Loo-Keng Hua, who made great achievements in mathematics mainly through self-study. Loo-Keng Hua encouraged novices to show their axe skills at the gate of Ban’s house, so the Keng package comes. In addition, Keng is the abbreviation of “Knock Errors off Nice Guesses.” Hope the functions and data gathered in the Keng package help to ease your life.

Installation

You can install the development version of Keng from GitHub with:

install.packages("devtools")
devtools::install_github("qyaozh/Keng", dependencies = TRUE, build_vignettes = TRUE)

Load

Before using the Keng package, load it using the library() function.

library(Keng)

List of contents

Here is a list of the data and functions gathered in the Keng package. Their usages are detailed in the documentation.

Data

depress is a subset of data from a research about depression and coping.

Variable transformation

Scale() could change the origin of a numeric vector x (including mean-centering it), or standardize the mean and standard deviation of x (including transforming it to its z-score).

Pearson’s r

cut_r() gives you the cut-off values of Pearson’s r at the significance levels of p = 0.1, 0.05, 0.01, and 0.001 with known sample size n.

test_r() tests the significance and compute the post-hoc power of r with known sample size n.

power_r() conducts prior power analysis and plan the sample size for r; post-hoc power analysis would also be conducted with known sample size n. 

The linear model

compare_lm() compares lm()’s fitted outputs using PRE, R2, f2, and post-hoc power.

calc_PRE() calculates PRE from partial correlation, Cohen’s f, or f_squared.

power_lm() conducts prior power analysis and plans the sample size for one or a set of predictors in regression analysis; post-hoc power analysis would also be conducted with known sample size n.

The Keng_power class

power_r() and power_lm() return the Keng_power class, which has print() and plot() methods.

print() prints primary but not all contents of the Keng_power class.

plot() plots the power against sample size for the Keng_power class.

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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