How important is set.seed
"rather to understand how the choice of seed influences final model output." No! Different seeds just produce different streams of (pseudo)-random numbers. Hence there cannot be any "understanding" of how "choice of seed" influences results. Presumably, what you meant is to characterize the variability in results from the procedure due to its incorporation of randomness in what it does. Re-read Jeff's last post. This does *not* require set.seed() at all. Bert Gunter "The trouble with having an open mind is that people keep coming along and sticking things into it." -- Opus (aka Berkeley Breathed in his "Bloom County" comic strip )
On Tue, Mar 22, 2022 at 9:55 AM Ebert,Timothy Aaron <tebert at ufl.edu> wrote:
So step 1 is not to compare models, rather to understand how the choice of seed influences final model output. Once you have a handle on this issue, then work at comparing models. Tim *From:* Neha gupta <neha.bologna90 at gmail.com> *Sent:* Tuesday, March 22, 2022 12:19 PM *To:* Bert Gunter <bgunter.4567 at gmail.com> *Cc:* Ebert,Timothy Aaron <tebert at ufl.edu>; r-help at r-project.org *Subject:* Re: [R] How important is set.seed *[External Email]* I read a paper two days ago (and that's why I then posted here about set.seed) which used interpretable machine learning. According to the authors, different explanations (of the black-box models) will be produced by the ML models if different seeds are used or never used. On Tue, Mar 22, 2022 at 5:12 PM Bert Gunter <bgunter.4567 at gmail.com> wrote: OK, I'm somewhat puzzled by this discussion. Maybe I'm just clueless. But... 1. set.seed() is used to make any procedure that uses R's pseudo-random number generator -- including, for example, sampling from a distribution, random data splitting, etc. -- "reproducible". That is, if the procedure is repeated *exactly,* by invoking set.seed() with its original argument values (once!) *before* the procedure begins, exactly the same results should be produced by the procedure. Full stop. It does not matter how many times random number generation occurs within the procedure thereafter -- R preserves the state of the rng between invocations (but see the notes in ?set.seed for subtle qualifications of this claim). 2. Hence, if no (pseudo-) random number generation is used, set.seed() is irrelevant. Full stop. 3. Hence, if you don't care about reproducibility (you should! -- if for no other reason than debugging), you don't need set.seed() 4. The "randomness" of any sequence of results from any particular set.seed() arguments (including further calls to the rng) is a complex issue. ?set.seed has some discussion of this, but one needs considerable expertise to make informed choices here. As usual, we untutored users should be guided by the expert recommendations of the Help file. *** If anything I have said above is wrong, I would greatly appreciate a public response here showing my error.*** Bert Gunter "The trouble with having an open mind is that people keep coming along and sticking things into it." -- Opus (aka Berkeley Breathed in his "Bloom County" comic strip ) On Tue, Mar 22, 2022 at 7:48 AM Neha gupta <neha.bologna90 at gmail.com> wrote:
Hello Tim In some of the examples I see in the tutorials, they put the random seed just before the model training e.g train function in case of caret
library.
Should I follow this? Best regards On Tuesday, March 22, 2022, Ebert,Timothy Aaron <tebert at ufl.edu> wrote:
Ah, so maybe what you need is to think of ?set.seed()? as a treatment
in
an experiment. You could use a random number generator to select an appropriate number of seeds, then use those seeds repeatedly in the different models to see how seed selection influences outcomes. I am
not
quite sure how many seeds would constitute a good sample. For me that
would
depend on what I find and how long a run takes. In parallel processing you set seed in master and then use a random number generator to set seeds in each worker. Tim *From:* Neha gupta <neha.bologna90 at gmail.com> *Sent:* Tuesday, March 22, 2022 6:33 AM *To:* Ebert,Timothy Aaron <tebert at ufl.edu> *Cc:* Jeff Newmiller <jdnewmil at dcn.davis.ca.us>; r-help at r-project.org *Subject:* Re: How important is set.seed *[External Email]* Thank you all. Actually I need set.seed because I have to evaluate the consistency of features selection generated by different models, so I think for this,
it's
recommended to use the seed. Warm regards On Tuesday, March 22, 2022, Ebert,Timothy Aaron <tebert at ufl.edu>
wrote:
If you are using the program for data analysis then set.seed() is not necessary unless you are developing a reproducible example. In a
standard
analysis it is mostly counter-productive because one should then ask if your presented results are an artifact of a specific seed that you
selected
to get a particular result. However, in cases where you need a
reproducible
example, debugging a program, or specific other cases where you might
need
the same result with every run of the program then set.seed() is an essential tool. Tim -----Original Message----- From: R-help <r-help-bounces at r-project.org> On Behalf Of Jeff
Newmiller
Sent: Monday, March 21, 2022 8:41 PM To: r-help at r-project.org; Neha gupta <neha.bologna90 at gmail.com>;
r-help
mailing list <r-help at r-project.org> Subject: Re: [R] How important is set.seed [External Email] First off, "ML models" do not all use random numbers (for prediction I would guess very few of them do). Learn and pay attention to what the functions you are using do. Second, if you use random numbers properly and understand the precision that your specific use case offers, then you don't need to use
set.seed.
However, in practice, using set.seed can allow you to temporarily avoid chasing precision gremlins, or set up specific test cases for testing
code,
not results. It is your responsibility to not let this become a
crutch... a
randomized simulation that is actually sensitive to the seed is
unlikely to
offer an accurate result. Where to put set.seed depends a lot on how you are performing your simulations. In general each process should set it once uniquely at the beginning, and if you use parallel processing then use the features of
your
parallel processing framework to insure that this happens. Beware of setting all worker processes to use the same seed. On March 21, 2022 5:03:30 PM PDT, Neha gupta <neha.bologna90 at gmail.com
wrote:
Hello everyone I want to know (1) In which cases, we need to use set.seed while building ML models? (2) Which is the exact location we need to put the set.seed function
i.e.
when we split data into train/test sets, or just before we train a
model?
Thank you
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