
Package index
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read_spss() - Read SPSS Data with Tagged Missing Values
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read_por() - Read SPSS Portable Data with Tagged Missing Values
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read_stata() - Read Stata Data with Tagged Missing Values
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read_sas() - Read SAS Data with Tagged Missing Values
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read_xpt() - Read SAS Transport File with Tagged Missing Values
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read_xlsx() - Read Excel Data with Label Reconstruction
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write_spss() - Export Data to SPSS Format
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write_stata() - Export Data to Stata Format
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write_xpt() - Export Data to SAS Transport Format
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write_xlsx() - Export Data to Excel with Label Support
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var_label() - Get or Set Variable Labels
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val_labels() - Get or Set Value Labels
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copy_labels() - Copy Labels from One Data Frame to Another
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drop_labels() - Remove Unused Value Labels
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to_label() - Convert Labelled Variables to Factors
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to_character() - Convert Labelled Variables to Character
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to_numeric() - Convert Factors or Labelled Variables to Numeric
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to_labelled() - Convert Variables to Labelled Format
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set_na() - Declare Values as Missing
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unlabel() - Remove All Label Metadata
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rec() - Recode Variables Using String Syntax
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to_dummy() - Create Dummy Variables (One-Hot Encoding)
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std() - Standardize Variables (Z-Scores)
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center() - Center Variables (Mean Centering)
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find_var() - Find Variables by Name or Label
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codebook() - Create a Codebook for Your Data
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describe() - Get to Know Your Numeric Data
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frequency()fre() - Count How Many People Chose Each Option
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crosstab() - Compare Two Categories: See How They Relate
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t_test() - Test If Two Groups Differ
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oneway_anova() - Compare Multiple Groups: Are Their Averages Different?
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factorial_anova() - Compare Groups Across Multiple Factors: Factorial ANOVA
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ancova() - Analysis of Covariance: ANCOVA
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mann_whitney() - Compare Two Groups Without Assuming Normal Data
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chi_square()phi()cramers_v()goodman_gamma() - Test If Two Categories Are Related
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fisher_test() - Fisher's Exact Test for Small Samples
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chisq_gof() - Chi-Square Goodness-of-Fit Test
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mcnemar_test() - McNemar's Test for Paired Proportions
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kruskal_wallis() - Compare Multiple Groups Without Assuming Normal Data
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wilcoxon_test() - Compare Two Related Measurements Without Assuming Normality
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friedman_test() - Compare Three or More Related Measurements Without Assuming Normality
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binomial_test() - Test Whether a Proportion Matches an Expected Value
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pearson_cor() - Measure How Strongly Variables Are Related
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spearman_rho() - Spearman's Rank Correlation Analysis
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kendall_tau() - Kendall's Tau Correlation Analysis
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tukey_test() - Find Which Specific Groups Differ After ANOVA
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scheffe_test() - Compare All Groups More Conservatively After ANOVA
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levene_test() - Test If Groups Vary Similarly
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dunn_test() - Find Which Specific Groups Differ After Kruskal-Wallis
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pairwise_wilcoxon() - Find Which Specific Measurements Differ After Friedman Test
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reliability() - Check How Reliably Your Scale Measures a Concept
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efa() - Explore the Structure Behind Your Survey Items
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pomps() - Transform Scores to Percent of Maximum Possible (POMPS)
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row_means() - Compute Row Means Across Items
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row_sums() - Compute Row Sums Across Items
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row_count() - Count Occurrences of a Value Across Columns
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linear_regression() - Run a Linear Regression
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logistic_regression() - Run a Logistic Regression
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w_mean() - Calculate Population-Representative Averages
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w_median() - Find the Population-Representative Middle Value
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w_sd() - Calculate Population-Representative Standard Deviations
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w_var() - Calculate Population-Representative Variance
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w_se() - Calculate Population-Representative Standard Errors
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w_iqr() - Measure Population-Representative Spread (IQR)
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w_range() - Find the Range of Your Data
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w_quantile() - Calculate Population-Representative Percentiles
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w_modus() - Find the Most Common Value in Your Population
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w_skew() - Measure Population-Representative Skewness
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w_kurtosis() - Measure Population-Representative Kurtosis
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survey_data - Social Survey Data (Synthetic)
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longitudinal_data - Longitudinal Study Data (Synthetic)
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longitudinal_data_wide - Longitudinal Study Data - Wide Format (Synthetic)