I have a function, readnorm
which returns a list of related data from a file identified by an integer:
readnorm <- function(n) {
a <- read.csv(paste("/tmp/diff-a-", n, ".txt", sep=""),
col.names=c("raw"), header=FALSE)
a <- list(n=n, raw=a$raw, median=median(a$raw), iqr=IQR(a$raw))
a$shifted <- a$raw - a$median
a$scaled <- a$raw / a$iqr
a$normed <- a$shifted / a$iqr
a$necdf <- ecdf(a$normed)
return(a)
}
I can build a list containing data from a set of files by using lapply
:
> ns = c(5,6,7,8,9,10,15,20,25,30)
> data <- lapply(ns, readnorm)
> ls(data[[1]])
[1] "iqr" "median" "n" "necdf" "normed" "raw" "scaled"
[8] "shifted"
Now, what I would like to do is construct from that a set of data frames, called normed
, scaled
, etc, which group the entries from the components in data (the names could be the values of n
if integer names are allowed in R, so normed$5
contains data[[5]]$normed
, etc).
Does that make sense? This way I can plot all the raw data by using the raw
data frame, for example. It's kind-of turning the data structure I have "inside out".
I am new to R so may be doing something very wrong. In higher-level terms, I believe that the data in the different files are from similar distributions, shifted and scaled, and I want to explore that hypothesis. The code above is my attempt to arrange things so that I can do so in a systematic manner.
So my main question is how to generate the data frames, but I am also interested in more general guidance about how to tackle this problem (how to manage the data - I know about tools like qqplot
that will help with the analysis itself).
sapply
is returning a matrix, if you uselapply
it will return a list