# parametric anova subtitles work (without NAs) Code select(df, -expression) Output # A tibble: 1 x 13 statistic df df.error p.value 1 20.2 2 19.0 0.0000196 method effectsize estimate 1 One-way analysis of means (not assuming equal variances) Eta2 0.681 conf.level conf.low conf.high conf.method conf.distribution n.obs 1 0.95 0.437 1 ncp F 32 --- Code df[["expression"]] Output [[1]] list(italic("F")["Welch"](2, 18.97383) == "20.24946", italic(p) == "0.00002", widehat(eta["p"]^2) == "0.68097", CI["95%"] ~ "[" * "0.43668", "1.00000" * "]", italic("n")["obs"] == "32") --- Code select(df1, -expression) Output # A tibble: 1 x 13 statistic df df.error p.value method effectsize 1 22.9 2 29 0.00000107 One-way analysis of means Eta2 estimate conf.level conf.low conf.high conf.method conf.distribution n.obs 1 0.612 0.95 0.404 1 ncp F 32 --- Code df1[["expression"]] Output [[1]] list(italic("F")["Fisher"](2, 29) == "22.91139", italic(p) == "1.07468e-06", widehat(eta["p"]^2) == "0.61242", CI["95%"] ~ "[" * "0.40360", "1.00000" * "]", italic("n")["obs"] == "32") # parametric anova subtitles with partial omega-squared Code select(df1, -expression) Output # A tibble: 1 x 13 statistic df df.error p.value 1 2.27 3 24.0 0.107 method effectsize estimate 1 One-way analysis of means (not assuming equal variances) Omega2 0.119 conf.level conf.low conf.high conf.method conf.distribution n.obs 1 0.95 0 1 ncp F 51 --- Code df1[["expression"]] Output [[1]] list(italic("F")["Welch"](3, 24.0475) == "2.2653", italic(p) == "0.1066", widehat(omega["p"]^2) == "0.1192", CI["95%"] ~ "[" * "0.0000", "1.0000" * "]", italic("n")["obs"] == "51") # paired parametric anova subtitles work (without NAs) Code select(df1, -expression) Output # A tibble: 1 x 17 term sumsq sum.squares.error df df.error meansq statistic p.value 1 condition 1656. 318. 1.15 171. 1.86 776. 1.32e-69 method effectsize estimate 1 ANOVA estimation for factorial designs using 'afex' Omega2 (partial) 0.707 conf.level conf.low conf.high conf.method conf.distribution n.obs 1 0.99 0.658 1 ncp F 150 --- Code df1[["expression"]] Output [[1]] list(italic("F")["Fisher"](1.149, 171.217) == "776.318", italic(p) == "1.325e-69", widehat(omega["p"]^2) == "0.707", CI["99%"] ~ "[" * "0.658", "1.000" * "]", italic("n")["pairs"] == "150")