A B C D E F G H I L M N O P R S T V W X Z
sjstats-package | Collection of Convenient Functions for Common Statistical Computations |
anova_stats | Effect size statistics for anova |
autocorrelation | Check model assumptions |
auto_prior | Create default priors for brms-models |
binned_resid | Compute model quality |
bootstrap | Generate nonparametric bootstrap replications |
boot_ci | Standard error and confidence intervals for bootstrapped estimates |
boot_est | Standard error and confidence intervals for bootstrapped estimates |
boot_p | Standard error and confidence intervals for bootstrapped estimates |
boot_se | Standard error and confidence intervals for bootstrapped estimates |
check_assumptions | Check model assumptions |
chisq_gof | Compute model quality |
cod | Goodness-of-fit measures for regression models |
cohens_f | Effect size statistics for anova |
converge_ok | Convergence test for mixed effects models |
cramer | Measures of association for contingency tables |
cronb | Check internal consistency of a test or questionnaire |
cv | Compute model quality |
cv_compare | Test and training error from model cross-validation |
cv_error | Test and training error from model cross-validation |
deff | Design effects for two-level mixed models |
difficulty | Check internal consistency of a test or questionnaire |
efc | Sample dataset from the EUROFAMCARE project |
equi_test | Compute statistics for MCMC samples and Stan models |
equi_test.brmsfit | Compute statistics for MCMC samples and Stan models |
equi_test.stanreg | Compute statistics for MCMC samples and Stan models |
error_rate | Compute model quality |
eta_sq | Effect size statistics for anova |
find_beta | Determining distribution parameters |
find_beta2 | Determining distribution parameters |
find_cauchy | Determining distribution parameters |
find_normal | Determining distribution parameters |
fish | Sample dataset |
get_re_var | Random effect variances |
gmd | Gini's Mean Difference |
grpmean | Summary of mean values by group |
grp_var | Access information from model objects |
hdi | Compute statistics for MCMC samples and Stan models |
hdi.brmsfit | Compute statistics for MCMC samples and Stan models |
hdi.stanreg | Compute statistics for MCMC samples and Stan models |
heteroskedastic | Check model assumptions |
hoslem_gof | Compute model quality |
icc | Intraclass-Correlation Coefficient |
icc.brmsfit | Intraclass-Correlation Coefficient |
icc.glmmTMB | Intraclass-Correlation Coefficient |
icc.merMod | Intraclass-Correlation Coefficient |
icc.stanreg | Intraclass-Correlation Coefficient |
inequ_trend | Compute trends in status inequalities |
is_prime | Find prime numbers |
is_singular | Convergence test for mixed effects models |
link_inverse | Access information from model objects |
mcse | Compute statistics for MCMC samples and Stan models |
mcse.brmsfit | Compute statistics for MCMC samples and Stan models |
mcse.stanreg | Compute statistics for MCMC samples and Stan models |
mean_n | Row means with min amount of valid values |
mediation | Compute statistics for MCMC samples and Stan models |
mediation.brmsfit | Compute statistics for MCMC samples and Stan models |
mic | Check internal consistency of a test or questionnaire |
model_family | Access information from model objects |
model_frame | Access information from model objects |
mse | Compute model quality |
multicollin | Check model assumptions |
mwu | Mann-Whitney-U-Test |
nhanes_sample | Sample dataset from the National Health and Nutrition Examination Survey |
normality | Check model assumptions |
n_eff | Compute statistics for MCMC samples and Stan models |
n_eff.brmsfit | Compute statistics for MCMC samples and Stan models |
n_eff.stanreg | Compute statistics for MCMC samples and Stan models |
odds_to_rr | Get relative risks estimates from logistic regressions or odds ratio values |
omega_sq | Effect size statistics for anova |
or_to_rr | Get relative risks estimates from logistic regressions or odds ratio values |
outliers | Check model assumptions |
overdisp | Check overdispersion of GL(M)M's |
pca | Tidy summary of Principal Component Analysis |
pca_rotate | Tidy summary of Principal Component Analysis |
phi | Measures of association for contingency tables |
pred_accuracy | Accuracy of predictions from model fit |
pred_vars | Access information from model objects |
prop | Proportions of values in a vector |
props | Proportions of values in a vector |
p_value | Get p-values from regression model objects |
p_value.lmerMod | Get p-values from regression model objects |
r2 | Goodness-of-fit measures for regression models |
r2.brmsfit | Goodness-of-fit measures for regression models |
r2.lme | Goodness-of-fit measures for regression models |
r2.stanreg | Goodness-of-fit measures for regression models |
reliab_test | Check internal consistency of a test or questionnaire |
resp_val | Access information from model objects |
resp_var | Access information from model objects |
re_grp_var | Access information from model objects |
re_var | Random effect variances |
rmse | Compute model quality |
robust | Robust standard errors for regression models |
rope | Compute statistics for MCMC samples and Stan models |
rope.brmsfit | Compute statistics for MCMC samples and Stan models |
rope.stanreg | Compute statistics for MCMC samples and Stan models |
rse | Compute model quality |
scale_weights | Rescale design weights for multilevel analysis |
sd_pop | Calculate population variance and standard deviation |
se | Standard Error for variables or coefficients |
se.sj_icc | Standard Error for variables or coefficients |
se.sj_icc_merMod | Standard Error for variables or coefficients |
se_ybar | Standard error of sample mean for mixed models |
sjstats | Collection of Convenient Functions for Common Statistical Computations |
smpsize_lmm | Sample size for linear mixed models |
split_half | Check internal consistency of a test or questionnaire |
std_beta | Standardized beta coefficients and CI of linear and mixed models |
std_beta.gls | Standardized beta coefficients and CI of linear and mixed models |
std_beta.lm | Standardized beta coefficients and CI of linear and mixed models |
std_beta.merMod | Standardized beta coefficients and CI of linear and mixed models |
svy | Robust standard errors for regression models |
svyglm.nb | Survey-weighted negative binomial generalised linear model |
svy_md | Weighted statistics for tests and variables |
table_values | Expected and relative table values |
tidy_stan | Tidy summary output for stan models |
typical_value | Return the typical value of a vector |
var_names | Access information from model objects |
var_pop | Calculate population variance and standard deviation |
weight | Weight a variable |
weight2 | Weight a variable |
wtd_chisqtest | Weighted statistics for tests and variables |
wtd_chisqtest.default | Weighted statistics for tests and variables |
wtd_chisqtest.formula | Weighted statistics for tests and variables |
wtd_cor | Weighted statistics for tests and variables |
wtd_cor.default | Weighted statistics for tests and variables |
wtd_cor.formula | Weighted statistics for tests and variables |
wtd_mean | Weighted statistics for tests and variables |
wtd_median | Weighted statistics for tests and variables |
wtd_mwu | Weighted statistics for tests and variables |
wtd_mwu.default | Weighted statistics for tests and variables |
wtd_mwu.formula | Weighted statistics for tests and variables |
wtd_sd | Weighted statistics for tests and variables |
wtd_se | Weighted statistics for tests and variables |
wtd_ttest | Weighted statistics for tests and variables |
wtd_ttest.default | Weighted statistics for tests and variables |
wtd_ttest.formula | Weighted statistics for tests and variables |
xtab_statistics | Measures of association for contingency tables |
zero_count | Check overdispersion of GL(M)M's |