# between-subjects Code select(df1, -expression) Output # A tibble: 1 x 14 parameter1 parameter2 statistic df.error p.value 1 length genre 51.4 8 0.0000000217 method effectsize estimate conf.level conf.low 1 Kruskal-Wallis rank sum test Epsilon2 (rank) 0.328 0.95 0.258 conf.high conf.method conf.iterations n.obs 1 1 percentile bootstrap 100 158 --- Code df1[["expression"]] Output [[1]] list(chi["Kruskal-Wallis"]^2 * "(" * 8 * ")" == "51.43", italic(p) == "2.17e-08", widehat(epsilon)["ordinal"]^2 == "0.33", CI["95%"] ~ "[" * "0.26", "1.00" * "]", italic("n")["obs"] == "158") --- Code select(df2, -expression) Output # A tibble: 1 x 14 parameter1 parameter2 statistic df.error p.value method 1 sleep_total vore 3.30 3 0.348 Kruskal-Wallis rank sum test effectsize estimate conf.level conf.low conf.high conf.method 1 Epsilon2 (rank) 0.0440 0.99 0.00729 1 percentile bootstrap conf.iterations n.obs 1 100 76 --- Code df2[["expression"]] Output [[1]] list(chi["Kruskal-Wallis"]^2 * "(" * 3 * ")" == "3.30", italic(p) == "0.35", widehat(epsilon)["ordinal"]^2 == "0.04", CI["99%"] ~ "[" * "7.29e-03", "1.00" * "]", italic("n")["obs"] == "76") # within-subjects Code select(df1, -expression) Output # A tibble: 1 x 14 parameter1 parameter2 statistic df.error p.value method 1 desire condition 55.8 3 4.56e-12 Friedman rank sum test effectsize estimate conf.level conf.low conf.high conf.method 1 Kendall's W 0.211 0.99 0.140 1 percentile bootstrap conf.iterations n.obs 1 100 88 --- Code df1[["expression"]] Output [[1]] list(chi["Friedman"]^2 * "(" * 3 * ")" == "55.83", italic(p) == "4.56e-12", widehat(italic("W"))["Kendall"] == "0.21", CI["99%"] ~ "[" * "0.14", "1.00" * "]", italic("n")["pairs"] == "88") --- Code select(df2, -expression) Output # A tibble: 1 x 14 parameter1 parameter2 statistic df.error p.value method 1 value condition 410 3 1.51e-88 Friedman rank sum test effectsize estimate conf.level conf.low conf.high conf.method 1 Kendall's W 0.911 0.9 0.906 1 percentile bootstrap conf.iterations n.obs 1 100 150 --- Code df2[["expression"]] Output [[1]] list(chi["Friedman"]^2 * "(" * 3 * ")" == "410.00", italic(p) == "1.51e-88", widehat(italic("W"))["Kendall"] == "0.91", CI["90%"] ~ "[" * "0.91", "1.00" * "]", italic("n")["pairs"] == "150")