# t_nonparametric works - between-subjects design Code select(df, -expression) Output # A tibble: 1 x 13 parameter1 parameter2 statistic p.value method alternative 1 wt am 230. 0.0000435 Wilcoxon rank sum test two.sided effectsize estimate conf.level conf.low conf.high conf.method n.obs 1 r (rank biserial) 0.866 0.9 0.749 0.931 normal 32 --- Code df[["expression"]] Output [[1]] list(italic("W")["Mann-Whitney"] == "230.500", italic(p) == "4.347e-05", widehat(italic("r"))["biserial"]^"rank" == "0.866", CI["90%"] ~ "[" * "0.749", "0.931" * "]", italic("n")["obs"] == "32") # nonparametric works - within-subjects design Code select(df, -expression) Output # A tibble: 1 x 13 parameter1 parameter2 statistic p.value method alternative 1 desire condition 1796 0.000430 Wilcoxon signed rank test two.sided effectsize estimate conf.level conf.low conf.high conf.method n.obs 1 r (rank biserial) 0.487 0.99 0.215 0.690 normal 90 --- Code df[["expression"]] Output [[1]] list(italic("V")["Wilcoxon"] == "1796.00000", italic(p) == "0.00043", widehat(italic("r"))["biserial"]^"rank" == "0.48737", CI["99%"] ~ "[" * "0.21481", "0.68950" * "]", italic("n")["pairs"] == "90")