[R] Coefficients of Logistic Regression from bootstrap - how to get them?
Frank E Harrell Jr
f.harrell at vanderbilt.edu
Tue Jul 22 01:22:26 CEST 2008
Michal Figurski wrote:
> Frank,
>
> "How does bootstrap improve on that?"
>
> I don't know, but I have an idea. Since the data in my set are just a
> small sample of a big population, then if I use my whole dataset to
> obtain max likelihood estimates, these estimates may be best for this
> dataset, but far from ideal for the whole population.
The bootstrap, being a resampling procedure from your sample, has the
same issues about the population as MLEs.
>
> I used bootstrap to virtually increase the size of my dataset, it should
> result in estimates more close to that from the population - isn't it
> the purpose of bootstrap?
No
>
> When I use such median coefficients on another dataset (another sample
> from population), the predictions are better, than using max likelihood
> estimates. I have already tested that and it worked!
Then your testing procedure is probably not valid.
>
> I am not a statistician and I don't feel what "overfitting" is, but it
> may be just another word for the same idea.
>
> Nevertheless, I would still like to know how can I get the coeffcients
> for the model that gives the "nearly unbiased estimates". I greatly
> appreciate your help.
More info in my book Regression Modeling Strategies.
Frank
>
> --
> Michal J. Figurski
> HUP, Pathology & Laboratory Medicine
> Xenobiotics Toxicokinetics Research Laboratory
> 3400 Spruce St. 7 Maloney
> Philadelphia, PA 19104
> tel. (215) 662-3413
>
> Frank E Harrell Jr wrote:
>> Michal Figurski wrote:
>>> Hello all,
>>>
>>> I am trying to optimize my logistic regression model by using
>>> bootstrap. I was previously using SAS for this kind of tasks, but I
>>> am now switching to R.
>>>
>>> My data frame consists of 5 columns and has 109 rows. Each row is a
>>> single record composed of the following values: Subject_name,
>>> numeric1, numeric2, numeric3 and outcome (yes or no). All three
>>> numerics are used to predict outcome using LR.
>>>
>>> In SAS I have written a macro, that was splitting the dataset,
>>> running LR on one half of data and making predictions on second half.
>>> Then it was collecting the equation coefficients from each iteration
>>> of bootstrap. Later I was just taking medians of these coefficients
>>> from all iterations, and used them as an optimal model - it really
>>> worked well!
>>
>> Why not use maximum likelihood estimation, i.e., the coefficients from
>> the original fit. How does the bootstrap improve on that?
>>
>>>
>>> Now I want to do the same in R. I tried to use the 'validate' or
>>> 'calibrate' functions from package "Design", and I also experimented
>>> with function 'sm.binomial.bootstrap' from package "sm". I tried also
>>> the function 'boot' from package "boot", though without success - in
>>> my case it randomly selected _columns_ from my data frame, while I
>>> wanted it to select _rows_.
>>
>> validate and calibrate in Design do resampling on the rows
>>
>> Resampling is mainly used to get a nearly unbiased estimate of the
>> model performance, i.e., to correct for overfitting.
>>
>> Frank Harrell
>>
>>>
>>> Though the main point here is the optimized LR equation. I would
>>> appreciate any help on how to extract the LR equation coefficients
>>> from any of these bootstrap functions, in the same form as given by
>>> 'glm' or 'lrm'.
>>>
>>> Many thanks in advance!
>>>
>>
>>
>
--
Frank E Harrell Jr Professor and Chair School of Medicine
Department of Biostatistics Vanderbilt University
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