0

It is mentioned in broom website that it can be used for TukeyHSD and multcomp (See here). However, I could not figure it out how to use broom for TukeyHSD and multcomp.

See MWE given below.

df1 <- data.frame(
  Rep = factor(rep(1:3, each = 4, times = 2)),
  Trt = rep(paste0("T", 1:4), times = 6),
  Loc = rep(paste0("Loc", 1:2), each = 12), 
  Y   = rnorm(24)
)

library(dplyr)
df2 <- filter(df1, Loc=="Loc1")

fm1 <- aov(Y ~ Rep + Trt , data = df2)
anova(fm1)

library(multcompView)

fm1Tukey1 <- 
  data.frame(Letter = multcompLetters(TukeyHSD(fm1)$Trt[, "p adj"])$Letters)
fm1Tukey <- data.frame(Trt = row.names(fm1Tukey1), fm1Tukey1)

fm1Means1 <- 
  data.frame(
      Mean = as.matrix(model.tables(x = fm1, type = "means")[[1]]$Trt)
    , SE   = model.tables(x = fm1, type = "means", se = TRUE)$se$Trt
  )
names(fm1Means1) <- c("Mean", "SE")

fm1Means2 <- data.frame(Trt = row.names(fm1Means1), fm1Means1)
fm1Means <- left_join(fm1Means2, fm1Tukey)


library(dplyr)
fm3 <-
  df1 %>% 
  group_by(Loc) %>% 
  do(model = aov(Y ~ Rep + Trt , data = .))

fm3$model

library(broom)

fm3 %>% tidy(model)
5

What about this solution ?

fm3 <-
  df1 %>% 
  group_by(Loc) %>% 
  do(multitst = TukeyHSD(aov(Y ~ Rep + Trt , data = .)))
fm3 %>% tidy(multitst)

The result is:

# A tibble: 18 x 7
# Groups:   Loc [2]
      Loc   term comparison    estimate   conf.low conf.high adj.p.value
   <fctr> <fctr>      <chr>       <dbl>      <dbl>     <dbl>       <dbl>
 1   Loc1    Rep        2-1  1.06654704 -0.5666584 2.6997525   0.1920531
 2   Loc1    Rep        3-1  0.07349636 -1.5597091 1.7067018   0.9895627
 3   Loc1    Rep        3-2 -0.99305068 -2.6262561 0.6401548   0.2283849
 4   Loc1    Trt      T2-T1  0.66688371 -1.4607989 2.7945663   0.7105928
 5   Loc1    Trt      T3-T1 -0.34873829 -2.4764209 1.7789443   0.9382673
 6   Loc1    Trt      T4-T1  0.76089899 -1.3667836 2.8885816   0.6281933
 7   Loc1    Trt      T3-T2 -1.01562201 -3.1433046 1.1120606   0.4201776
 8   Loc1    Trt      T4-T2  0.09401528 -2.0336673 2.2216979   0.9985800
 9   Loc1    Trt      T4-T3  1.10963728 -1.0180453 3.2373199   0.3556331
10   Loc2    Rep        2-1 -0.59970808 -2.4360070 1.2365908   0.6023328
11   Loc2    Rep        3-1 -0.29558179 -2.1318807 1.5407171   0.8768041
12   Loc2    Rep        3-2  0.30412629 -1.5321726 2.1404252   0.8702266
13   Loc2    Trt      T2-T1 -1.06715766 -3.4594233 1.3251080   0.4703902
14   Loc2    Trt      T3-T1 -1.38659230 -3.7788579 1.0056733   0.2828393
15   Loc2    Trt      T4-T1 -1.23727832 -3.6295439 1.1549873   0.3616019
16   Loc2    Trt      T3-T2 -0.31943464 -2.7117003 2.0728310   0.9646736
17   Loc2    Trt      T4-T2 -0.17012066 -2.5623863 2.2221450   0.9942021
18   Loc2    Trt      T4-T3  0.14931398 -2.2429516 2.5415796   0.9960495
| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.