Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Given a regression model created from one dataset, I have been using WinBUGS to construct prediction intervals (PIs) around the mean of a second dataset. I have just discovered the "predict" function in R, but it delivers PIs around each predicted value in the second dataset. I have searched the R help, here and on the Net and only found the intervals for the separate members.

The average of the these intervals is clearly not the same as the PI around the predicted sample mean (and I have tested that against the value I got from WinBUGS).

How do I get R to give me the PI around the mean?

share|improve this question
    
What kind of model? Example code used to fit the model in R? –  Gavin Simpson Jun 25 '13 at 1:57
    
I'm using straight linear regression with several indep vars as well as log-log regression to give a relationsjip of y=ax^b. The code for the first case is: –  user2518356 Jun 25 '13 at 3:02
    
Sorry, not used to this process and not at the PC which has the code but from memory: zmodel<-lm(Mass~Diameter+Height+Width,data=dataset1) then pred_int<-predict(zmodel,dataset2) "pred_int" contains PIs for each element in dataset2 –  user2518356 Jun 25 '13 at 3:07

1 Answer 1

There used to be an R mean.data.frame function, but it was deprecated and then removed. You can get the same result with:

  mean.vec <-  lapply(na.omit(dfrm), mean)

Then probably just:

 predict(fit, newdata=data.frame(mean.vec) )

I say 'probably' because you provided no dataset to test this with and provision of such is in my opinion your responsibility. I have no idea whether this replicates the JMP method or the WinBUGS method.

share|improve this answer
    
Thanks, DWin. I'll check that out and give it a go. I'm glad you can see my ref to JMP because it's gone from my screen - but that could be user error. I'm new to using this - or any - forum. Regards, Peter –  user2518356 Jun 25 '13 at 5:44
    
DWin, Thanks for your suggestion. I have had a look at your suggested code and I believe it is not the answer. The "lapply" statement returns a vector of the means of each column in the dataframe. Supplying that to "predict" returns the PI around a single entity, which happens to consist of those means. What I would desperately like to be able to do in R is to obtain a PI which is (95%) likely to contain the mean predicted response, given a new dataset of n items. This is what JMP and WinBUGS allow me to do. (Note: it is not the mean of the n individual PIs.) Regards, Peter –  user2518356 Jun 25 '13 at 20:27
    
Then it might be mean(predict(fit, newdata=dfrm))+ c(-1.96,1.96) * sd(predict(fit, newdata=dfrm)). (We are not JMP users around here and only a very few of us have been WinBUGS users.) The issue of whether these are pseudo-CI's or pseudo-PI's remains open. –  BondedDust Jun 25 '13 at 20:35
    
Also note: The above suggestion assumes a fairly large sample and that the "group-PI" should be even wider for small samples, since the t-statistic should be higher and the SD would be multiplied by sqrt(1+1/n). (You still have not provided any data or even a good description of what the task really looks like.) –  BondedDust Jun 25 '13 at 20:51

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.