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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 Cramer's V, Phi, or effict size statistics like Eta or Omega squared), or for which currently no functions available.

Second, another focus lies on weighted variants of common statistical measures and tests like weighted standard error, mean, t-test, correlation, and more.

The comprised tools include:

  • Especially for mixed models: design effect, sample size calculation
  • Especially for Bayesian models: mediation analysis
  • For anova-tables: Eta-squared, Partial Eta-squared, Omega-squared, Partial Omega-squared and Epsilon-squared statistics
  • Weighted statistics and tests for: mean, median, standard error, standard deviation, correlation, Chi-squared test, t-test, Mann-Whitney-U-test

Documentation

Please visit https://strengejacke.github.io/sjstats/ for documentation and vignettes.

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("strengejacke/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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Install

install.packages('sjstats')

Monthly Downloads

26,077

Version

0.17.7

License

GPL-3

Issues

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Stars

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Maintainer

Last Published

November 14th, 2019

Functions in sjstats (0.17.7)

is_prime

Find prime numbers
se_ybar

Standard error of sample mean for mixed models
gmd

Gini's Mean Difference
fish

Sample dataset
sjstats-package

Collection of Convenient Functions for Common Statistical Computations
find_beta

Determining distribution parameters
std_beta

Standardized beta coefficients and CI of linear and mixed models
svyglm.nb

Survey-weighted negative binomial generalised linear model
odds_to_rr

Get relative risks estimates from logistic regressions or odds ratio values
nhanes_sample

Sample dataset from the National Health and Nutrition Examination Survey
svy_md

Weighted statistics for tests and variables
inequ_trend

Compute trends in status inequalities
overdisp

Deprecated functions
weight

Weight a variable
grpmean

Summary of mean values by group
prop

Proportions of values in a vector
mwu

Mann-Whitney-U-Test
mediation

Summary of Bayesian multivariate-response mediation-models
samplesize_mixed

Sample size for linear mixed models
scale_weights

Rescale design weights for multilevel analysis
tidy_stan

Tidy summary output for stan models
cramer

Measures of association for contingency tables
var_pop

Calculate population variance and standard deviation
reexports

Objects exported from other packages
mean_n

Row means with min amount of valid values
robust

Robust standard errors for regression models
svyglm.zip

Survey-weighted zero-inflated Poisson model
table_values

Expected and relative table values
design_effect

Design effects for two-level mixed models
cv_error

Test and training error from model cross-validation
anova_stats

Effect size statistics for anova
bootstrap

Generate nonparametric bootstrap replications
cv

Compute model quality
auto_prior

Create default priors for brms-models
efc

Sample dataset from the EUROFAMCARE project
chisq_gof

Compute model quality
boot_ci

Standard error and confidence intervals for bootstrapped estimates