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I ran exact logistic regression on my data set using the package elrm

I am comparing it to ordinary logistic regression.

I was able to run a bootstrap on the ordinary logistic regression, the statistics of interest I pulled were the estimated coefficient and p-value.

However, I cannot run my elrm bootstrap because I can't pull the coefficients I need from the output.

With my data the summary gives a print out:

   estimate p-value p-value_se mc_size
M  0.15116 0.06594    0.00443   49000

95% Confidence Intervals for Parameters

     lower     upper
M 0.00156155 0.3647232

I want to extract the M estimate and p-value so I can pull these stats when I do the bootstrap. I have tried a bunch of different combinations to try and pull the values and they aren't working.


All of these just spit out the summary again.

Does anyone know if it is possible to extract from the elrm summary?

Any help would be appreciated.

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2 Answers 2

drug.elrm <- elrm(formula=recovered/n~sex+treatment,interest=~sex+treatment,r=4, 

> summary.elrm(drug.elrm)

elrm(formula = recovered/n ~ sex + treatment, interest = ~sex + 
    treatment, r = 4, iter = 1e+05, dataset = drugDat, burnIn = 1000)

          estimate p-value p-value_se mc_size
joint           NA 0.14886    0.00173   99000
sex        0.27092 0.69385    0.01204    2649
treatment  0.76739 0.07226    0.00314   13160

95% Confidence Intervals for Parameters

               lower    upper
sex       -0.6217756 1.212499
treatment -0.1216884 1.852346

# If you look at the summary function, it simply outputs formatted results to
# the screen. So instead, we can just work with the original drug.elrm object

# shows you everything in this object

# to see the p-values
      joint         sex   treatment 
0.001734482 0.012039701 0.003143006 

# to get the p-value for joint

# now for the CI
               lower    upper
sex       -0.6217756 1.212499
treatment -0.1216884 1.852346

> drug.elrm$coeffs.ci[[1]]
[1] -0.6217756 -0.1216884
> drug.elrm$coeffs.ci[[1]][1]
[1] -0.6217756
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+1 - looks like we used a very similar debugging strategy here. –  Chase Jun 29 '12 at 19:16

It looks like the p-values and confidence intervals are stored as part of the model object itself. The summary.elrm function just extracts and formats some of that information for you. I show the steps below that I used to figure this out, but the summary version is to index into your model object itself for object$p.values and object$coeffs.ci respectively.

#Example from help page
uti.elrm <- elrm(uti/n~age+current+dia+oc+pastyr+vi+vic+vicl+vis,
#Look at summary
#Let's examine the structure of the summary object to see what's in there, i.e.
#what can we extract?
#Hmm, doesn't look like anything of interest. Let's look at the source code itself
#Looks like the p.values are stored in the actual model object iself and the summary function
#just formats them for us. The relevant part of the summary code for the p-value is:
  #inferences = as.data.frame(cbind(round(as.numeric(object$coeffs),5), 
  #                                 round(as.numeric(object$p.values), 5), 
  #                                 round(as.numeric(object$p.values.se),5),
  #                                 object$mc.size)
  #                           )
  #results = data.frame(row.names = names(object$coeffs), inferences)
  #names(results) = c("estimate", "p-value", "p-value_se", "mc_size")
#So, it looks like we can grab the p.values directly from "object"
> uti.elrm$p.values
#And the confidence intervals are also in the object, located here in the summary code:
  #cat(object$ci.level, "% Confidence Intervals for Parameters\n", 
  #    sep = "")
#So we can extract them thusly:
> uti.elrm$coeffs.ci
lower upper
dia 0.1256211   Inf
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