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sjstats - Collection of Convenient Functions for Common Statistical Computations

Collection of convenient functions for common statistical computations, which are not directly provided by R's base or stats packages. This package aims at providing, first, shortcuts for statistical measures, which otherwise could only be calculated with additional effort (like standard errors or root mean squared errors). Second, these shortcut functions are generic (if appropriate), and can be applied not only to vectors, but also to other objects as well (e.g., the Coefficient of Variation can be computed for vectors, linear models, or linear mixed models; the r2-function returns the r-squared value for lm, glm, merMod or lme objects). The focus of most functions lies on summary statistics or fit measures for regression models, including generalized linear models and mixed effects models. However, some of the functions deal with other statistical measures, like Cronbach's Alpha, Cramer's V, Phi etc.

The comprised tools include:

  • For regression and mixed models: Coefficient of Variation, Root Mean Squared Error, Residual Standard Error, Coefficient of Discrimination, R-squared and pseudo-R-squared values, standardized beta values
  • Especially for mixed models: Design effect, ICC, sample size calculation, convergence and overdispersion tests

Other statistics:

  • Cramer's V, Cronbach's Alpha, Mean Inter-Item-Correlation, Mann-Whitney-U-Test, Item-scale reliability tests

Installation

Latest development build

To install the latest development snapshot (see latest changes below), type following commands into the R console:

library(devtools)
devtools::install_github("sjPlot/sjstats")

Officiale, stable release

     

To install the latest stable release from CRAN, type following command into the R console:

install.packages("sjstats")

Citation

In case you want / have to cite my package, please use citation('sjstats') for citation information.

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Version

Install

install.packages('sjstats')

Monthly Downloads

23,262

Version

0.3.0

License

GPL-3

Issues

Pull Requests

Stars

Forks

Maintainer

Daniel Lüdecke

Last Published

July 30th, 2016

Functions in sjstats (0.3.0)

cronb

Cronbach's Alpha for a matrix or data frame
chisq_gof

Chi-square goodness-of-fit-test
bootstrap

Generate bootstrap replications
cramer

Cramer's V for a contingency table
boot_ci

Standard Error and Confidence Intervals for bootstrapped estimates
cv

Coefficient of Variation
cod

Tjur's Coefficient of Discrimination
deff

Design effects for two-level mixed models
efc

Sample dataset from the EUROFAMCARE project
converge_ok

Convergence test for mixed effects models
hoslem_gof

Hosmer-Lemeshow Goodness-of-fit-test
eta_sq

Eta-squared of fitted anova
merMod_p

Get p-values for merMod objects
icc

Intraclass-Correlation Coefficient
mean_n

Row means with min amount of valid values
odds_to_rr

Get relative risks estimates from logistic regressions
get_re_var

Random effect variances
mic

Mean Inter-Item-Correlation
levene_test

Plot Levene-Test for One-Way-Anova
mwu

Mann-Whitney-U-Test
rmse

Root Mean Squared Error (RMSE)
re_var

Random effect variances
pred_vars

Get predictor and response variables from models
reliab_test

Performs a reliability test on an item scale
overdisp

Check overdispersion of GL(M)M's
se

Standard Error for variables
phi

Phi value for contingency tables
r2

Compute R-squared of (generalized) linear (mixed) models
sjstats-package

Collection of Convenient Functions for Common Statistical Computations
rse

Residual Standard Error (RSE)
wtd_sd

Weighted standard deviation for variables
std_beta

Standardized Beta coefficients and CI of lm and mixed models
weight2

Weight a variable
wtd_se

Weighted standard error for variables
table_values

Expected and relative table values
weight

Weight a variable
smpsize_lmm

Sample size for linear mixed models