Below is an example dataframe with different samples, treatments and reps particularly between the control and treatments recording biomass accumulation over time. I can calculate the mean biomass of each sample, treatment and reps by subsetting it or creating a (long) list object of each sample by treatment groups, then taking the mean biomass this way by calling lapply. However, is there a simpler, or better way to do this without having to "leave the dataframe", and so requires writing less code?

df <- data.frame(
    SAMPLE = rep(c("S0","S1","S2"), times = c(4,15,15)),
    TREATMENT = c("Ctl","T1","T2","T3","Ctl","Ctl","Ctl",
    REPS = c(1,1,1,1, 1,2,3,1,2,3,4,1,2,3,4,1,2,3,4,1,2,3, 
    BIOMASS = round(rnorm(34, mean = 22, sd = 5), digits = 2)


Thanks, Franklin

  • There must be. For instance, you can try tapply, aggregate from base R, group_by from dplyr or use data.table syntax. – Psidom Dec 25 '16 at 0:20

We can use aggregate from base R

aggregate(BIOMASS~SAMPLE + TREATMENT, df, mean)

Or if is 'REPS' and 'TREATMENT' as groups

aggregate(BIOMASS~REPS + TREATMENT, df, mean)

Or with data.table

setDT(df)[, .(MEAN = mean(BIOMASS)) , .(SAMPLE, TREATMENT)]

Thanks Psidom and akrun. I better understand aggregate now...To do this using the tidyverse library it would be: z <- dplyr::group_by(df, SAMPLE, TREATMENT) summarize(z, mean(BIOMASS))

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