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I'm trying to do some unit testing using the testthat package but I can't seem to get it to work properly together with the rms package. The following example:

library(rms)
set.seed(10)
ds <- data.frame(
  ftime = rexp(200),
  fstatus = sample(0:1,200,replace=TRUE),
  x1 = runif(200),
  x2 = runif(200),
  x3 = factor(sample(LETTERS[1:3], size=200, replace=TRUE)))


ddist <- datadist(ds)
options(datadist="ddist")

s <- Surv(ds$ftime, ds$fstatus == 1)
fit <- cph(s ~ x1 + x2 + x3, data=ds)

returns this error:

Error in Design(eval.parent(m)) : dataset ddist not found for options(datadist=)

This even though print(ddist) works and the options("datadist") returns the proper variable. Does testthat have a different variable scope that causes errors?

Update

I run the testthat by a R console started in the my package dir (Eclipse StatET):

library(testthat)
test_dir("inst/tests")
q()

The same error occurs with the R CMD check --as-cran

share|improve this question
    
@agstudy: Added how I run the testthat –  Max Gordon Dec 30 '12 at 14:00
    
<shrug> Both Professors Harrell and Wickham have (or had) been known to resort to programming techniques which may be or may not be close to those of R Core. As such, side effects lasting longer than four hours may occur. I think you may just have met one. There are two other unit testing packages you could try if you want to keep the rms around. –  Dirk Eddelbuettel Dec 30 '12 at 15:47
    
Unable to reproduce so far. R 2.15.2, MacOS 10.6.8, R.app GUI 1.53 (6335), testthat version 0.7, evaluate 0.4.2 (and re-tested with evaluate 0.4.3). Perhaps it is problem with the usual paths being hijacked by StatET? I do not know what you mean by same error with: R CMD check --as-cran Is that the complete command line entry (which gave an error when I entered it, but nothing to do with rms)? –  BondedDust Dec 30 '12 at 16:29
    
@DWin: I use Windows 7, R 2.15.2 64-bit, testthat v 0.7, evaluate 0.4.3 and the latest rms package 3.6-2. The R CMD thing is just the cran check for my package. –  Max Gordon Dec 30 '12 at 18:46
    
@DirkEddelbuettel: I really like the tools that come in the Hmisc/rms packages and my own package is intended to supplement some of them, like a markdown alternative to latex(). The reason that I'm setting up the unit testing is to see if I can understand some of the code by restructuring the Predict(), predictrms(), contrast() and summary.rms() - they all have their own calculation of the confidence interval. This seems to me like a bad idea especially since it seems that the Predict() is the only one that properly deals with the bootstrapped estimates (with coef.reps=TRUE). –  Max Gordon Dec 30 '12 at 18:51

2 Answers 2

up vote 0 down vote accepted

yes It is a scope problem as suggested by the error.

A possible work around is to define your ds where you call test_dir

for example You create file, runtest.R like this

library(rms)
set.seed(10)
ds <- data.frame(
  ftime = rexp(200),
  fstatus = sample(0:1,200,replace=TRUE),
  x1 = runif(200),
  x2 = runif(200),
  x3 = factor(sample(LETTERS[1:3], size=200, replace=TRUE)))
ddist <- datadist(ds)
options(datadist="ddist")
library(testthat)
test_dir("inst/tests")
share|improve this answer

While @agstudy's suggestion is correct I've figured out a simple workaround for the bug by using the <<- operator that assigns the variable to the global environment, here's a test-file that works:

set.seed(10)
n <- 11
ds <- data.frame(
  y = rnorm(n),
  x1 = factor(sample(c("a", "aa", "aaa"), size = n, replace = TRUE)))

suppressMessages(library(rms))
dd <<- datadist(ds)
options(datadist = "dd")

context("rms")
test_that("test", {
  fit <- ols(y ~ x1, data=ds)
  s <- summary(fit)
  expect_true(inherits(s, "summary.rms"))
})

This works also if you happen to do the assignment within the test_that:

context("rms")
test_that("test", {
  set.seed(10)
  n <- 11
  ds <- data.frame(
    y = rnorm(n),
    x1 = factor(sample(c("a", "aa", "aaa"), size = n, replace = TRUE)))

  suppressMessages(library(rms))
  dd <<- datadist(ds)
  options(datadist = "dd")

  fit <- ols(y ~ x1, data=ds)
  s <- summary(fit)
  expect_true(inherits(s, "summary.rms"))
})

This is also equivalent to the following code (perhaps easier to understand):

env <- globalenv() # Grab the global environment
env$dd <- datadist(ds) # Assign the datadist to it

If you want to learn more about how environments work I can recommend Hadley's excellent Advanced R coverage of the topic. I found this explaining many of the issues that I was running into.

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