Muenchen, Robert A (Bob) wrote:>Dear R Developers,
>
> This is my first time subscribing to this list, so let me start out
> by
saying thank you all very much for the incredible contribution you have
made to science through your work on R.>
> As you all know many users of commercial stat packages, their
managers, directors, CIOs etc. are skeptical of R's quality/accuracy.
And as the recent NY Times article demonstrated, the commercial vendors
rarely miss an opportunity stoke those fears. I have read many r-help
posts on this subject so I was aware that R was developed and tested
with great care, but until I read the clinical trials doc, I was not
aware that they were as many steps and that they were as rigorous (use
of version management software, etc.) Even as I read the document, the
opening paragraphs made me think it was far too focused to be of general
use. Luckily, I kept reading through the CFRs. Modifying that doc would
take little effort as I outlined in my original post (below). Putting it
in easy reach of every R user is important. By adding that to the docs
in R's Help menu, and adding a FAQ entry for it, all R users will have
ready access to it.>
> My second suggestion is adding an option to the R installation that
would let every R user run the test suite, very clearly showing them
that it is being done. I realize this is a superfluous step, since you
have already run the test suite against R before releasing it. However,
it would provide user assurance that they could easily demonstrate to
skeptics that very thorough testing is being done. I don't know whether
written messages that I suggested below would be best, or simply showing
the output scrolling by would have the most impact. Perhaps both, as in
a message "Testing accuracy of linear regression..." in a message
window
while the output scrolled by in the console.>
> Rather than having this as a part of installation, an alternative
would be to end the installation with a message pointing people to a
function like validate.R() and an equivalent menu selection as a
following step. That would ensure that everyone knows the option exists,
plus it enables any R user to run the tests for skeptics at any time.
The easier it is to run the test suite the better.>
> The complete set of validation programs you use may be huge and
impractical for most people to run. In that case, perhaps just a subset
could be compiled, with an emphasis on testing the common statistical
functions that people are likely to focus their concern
upon.>
> Asking to add a superfluous step to an installation may seem like a
waste of time, and technically it is. But psychologically this testing
will have a important impact that will silence many critics. Thanks for
taking the time to consider it.
Now that I've asked you in, I probably should at least chip in with a
couple of brief notes on the issue:
- not everything can be validated, and it's not like the commercial
companies are validating everything. E.g. nonlinear regression code will
give different results on different architectures, or even different
compilers on the same architecture, and may converge on one and not on
another.
- end-user validation is in principle a good thing, but please notice
that what we currently do is part of a build from sources, and requires
that build tools are installed. (E.g., we don't just run things, we also
compare them to known outputs.) It's not entirely trivial to push these
techniques to the end user.
- a good reason to want post-install validation is that validity can
depend on other part of the system outside developer control (e.g. an
overzealous BLAS optimization, sacrificing accuracy and/or standards
compliance for speed, can cause trouble). This is also a reason for not
making too far-reaching statements about validity.
- I'm not too happy about maintaining the same information in multiple
places. One thing we learned from the FDA document is how easily factual
errors creep in and how silly we'd look if, say, the location of a key
server got stated incorrectly, or say that we release one patch version
when in fact the most recent one had two. This kind of authoritative
document itself needs a verification process to ensure that it is correct.
Best,
-pd
>
> Best regards, Bob
>
> -----Original Message-----
> From: Peter Dalgaard [mailto:p.dalgaard at biostat.ku.dk]
> Sent: Saturday, January 24, 2009 4:53 AM
> To: Muenchen, Robert A (Bob)
> Cc: R-help at r-project.org
> Subject: Re: [R] The Quality & Accuracy of R
>
> Bob,
>
> Your point is well taken, but it also raises a number of issues
> (post-install testing to name one) for which the R-devel list would be
> more suitable. Could we move the discussion there?
>
> -Peter
>
>
> Muenchen, Robert A (Bob) wrote:
>> Hi All,
>>
>>
>>
>> We have all had to face skeptical colleagues asking if software made by
>> volunteers could match the quality and accuracy of commercially written
>> software. Thanks to the prompting of a recent R-help thread, I read,
"R:
>> Regulatory Compliance and Validation Issues, A Guidance Document for
the
>> Use of R in Regulated Clinical Trial Environments
>> (http://www.r-project.org/doc/R-FDA.pdf). This is an important
document,
>> of interest to the general R community. The question of R's
accuracy is
>> such a frequent one, it would be beneficial to increase the visibility
>> of the non-clinical information it contains. A document aimed at a
>> general audience, entitled something like, "R: Controlling Quality
and
>> Assuring Accuracy" could be compiled from the these sections:
>>
>>
>>
>> 1. What is R? (section 4)
>>
>> 2. The R Foundation for Statistical Computing (section 3)
>>
>> 3. The Scope of this Guidance Document (section 2)
>>
>> 4. Software Development Life Cycle (section 6)
>>
>>
>>
>> Marc Schwartz, Frank Harrell, Anthony Rossini, Ian Francis and others
>> did such a great job that very few words would need to change. The only
>> addition I suggest is to mention how well R did in, Keeling &
Parvur's
>> "A comparative study of the reliability to nine statistical
software
>> packages, May 1, 2007 Computational Statistics & Data Analysis,
Vol.51,
>> pp 3811-3831.
>>
>>
>>
>> Given the importance of this issue, I would like to see such a document
>> added to the PDF manuals in R's Help.
>>
>>
>>
>> The document mentions (Sect. 6.3) that a set of validation tests, data
>> and known results are available. It would be useful to have an option
to
>> run that test suite in every R installation, providing clear progress,
>> "Validating accuracy of t-tests...Validating accuracy of linear
>> regression...." Whether or not people chose to run the tests, they
would
>> at least know that such tests are available. Back in my mainframe
>> installation days, this step was part of many software installations
and
>> it certainly gave the impression that those were the companies that
took
>> accuracy seriously. Of course the other companies probably just ran
>> their validation suite before shipping, but seeing it happen had a
>> tremendous impact. I don't know how much this would add to
download,
>> but if it was too much, perhaps it could be implemented as a separate
>> download.
>>
>>
>>
>> I hope these suggestions can help mitigate the concerns so many non-R
>> users have.
--
O__ ---- Peter Dalgaard ?ster Farimagsgade 5, Entr.B
c/ /'_ --- Dept. of Biostatistics PO Box 2099, 1014 Cph. K
(*) \(*) -- University of Copenhagen Denmark Ph: (+45) 35327918
~~~~~~~~~~ - (p.dalgaard at biostat.ku.dk) FAX: (+45) 35327907