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block.random() from the psych library is a good tool for creating block-randomized experimental designs, however, the function as-written requires that you do some calculations before you can start, and generates a matrix that only includes numerical indices for the levels of your experimental factors.

An example plant growth experiment, with the kind of information you typically know when setting out to do an experimental design:

  • two experimental factors, say fertilizer and sunlight
  • three levels of fertilizer (5mL/day, 10mL/day, 20mL/day)
  • two levels of sunlight (direct sun, shade)
  • your power analysis tells you you need 15 samples per group

You'd use block.random in the following way:

> plan=block.random(n=90,c(fertilizer=3,sunlight=2))
> headtail(plan)
    blocks fertilizer sunlight
S1       1          3        2
S2       1          2        1
S3       1          3        1
S4       1          1        1
...    ...        ...      ...
S87     15          3        2
S88     15          2        1
S89     15          1        1
S90     15          1        2

OK great, but two problems:

  • You've got to realize that you need 90 total samples before you can use the function (15 per group, times 3 levels of fertilizer, times 2 levels of sunlight) this is a trivial problem to solve
  • You can't necessarily use the output directly, as you've got to correlate the numeric levels of the factors (1:3 for fertilizer, 1:2 for sunlight) to your actual levels (5mL/day, 10mL/day, 20mL/day for fertilizer) and (direct sun, shade for sunlight)

I'd rather have something including my level names that I can just directly print for reference or quickly format as a table for inclusion into a report.

How can I accomplish this?

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up vote 1 down vote accepted

With a simple wrapper function for block.random(), all of the above is possible.

create.randomization.plan <- function(n.per.group, factors, seed=NULL){
  factor.lengths <- sapply(factors,length)
  if(!is.null(seed)){
    set.seed(seed)
  }
  plan <- as.data.frame(block.random(n.per.group*prod(factor.lengths),
                                     factor.lengths))
  for(i in 1:length(factors)){
    plan[,colnames(plan)==names(factors)[i]] <-
      factor(plan[,colnames(plan)==names(factors)[i]])
    levels(plan[,colnames(plan)==names(factors)[i]]) <- factors[[i]]
  }
  return(plan)
}

usage is like so:

> factors <- list(fertilizer=c("5mL/day", "10mL/day", "20mL/day"),
+                 sunlight=c("direct sun", "shade"))
> 
> plan <- create.randomization.plan(15, factors)
> headtail(plan)
    blocks fertilizer   sunlight
S1       1   10mL/day      shade
S2       1   20mL/day direct sun
S3       1   20mL/day      shade
S4       1    5mL/day direct sun
...    ...       <NA>       <NA>
S87     15   10mL/day      shade
S88     15    5mL/day direct sun
S89     15   10mL/day direct sun
S90     15   20mL/day direct sun

you can also set a seed for reproducibility: create.randomization.plan(15, factors, seed=123)

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