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I've got the output of some simulations that look something like this:


Basically a series of M studies of N individuals (in actuality M = 1000 and N = 123). I'd like to run a Cox model (preferably) or a parametric regression model (if I must) to estimate the effect of Var1 on survival time. What I want to do is estimate the effect for each "Run" (to produce 1,000 estimates) and then dump all those estimates into a single data frame, matrix, etc. where I can look at their distribution.

If I were using SAS, the code would look something like this:

ods output ParameterEstimates=work.parameters;
proc phreg model time*outcome(0) = Var1;
   BY Run;
ods output close;

But since this is a side project, and I'm trying to force myself to do side projects in R in order to learn it, I can't so much fall back on SAS. As far as I can tell from the coxph() documentation, there's no easy way to include a by-variable. My guess is this is going to involve loops and subsets.

Any suggestions?

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It's not clear to me what you're after (this may be due to my ignorance with time series) but replicate may be what you're after. –  Tyler Rinker Jul 15 '12 at 23:42
I would suggest using plyr::ddply or data.table as opposed to a loop or subset. –  mnel Jul 15 '12 at 23:43
@TylerRinker The same question could apply to something like lm(). Essentially, how take a data set and apply something like lm() on levels of that variable. –  Fomite Jul 15 '12 at 23:48
@EpiGrad then mnel's reponse is good as would the use of base's split and then lapply. You'd then have to grab the pices from lapplying the cox model and use do.call to put them back together as a dataframe. –  Tyler Rinker Jul 15 '12 at 23:59
There's nlme::lmList to be used for lm. –  Roman Luštrik Jul 18 '12 at 9:35

1 Answer 1

up vote 4 down vote accepted

An example using plyr or data.table

## some data
.data <- data.frame(run = rep(1:10, each = 50), x = runif(500))
.data$y <- .data$x * rep(runif(10),each = 50)

# ---------------------------------------------------------
# using plyr
# ddply to extract just the coefficients
ddply(.data, .(run), function(data) data.frame(coef = coef(lm(y ~ x, data))))
    # or save the whole object
# the whole lm object 
lm_list <- dlply(.data, .(run), lm, formula = y ~ x)
# get the coefficients    
ldply(lm_list, coef)
# print the summaries
llply(lm_list, summary)

# ---------------------------------------------------------
# with data.table 

DT <- data.table(.data)
setkeyv(DT, 'run')

DT[, list(coef = coef(lm(y~x, .SD))), by = 'run']
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