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For a project I want to do a robust regression with the 'robust' package in R. The data consists of prevalences of certain mutations on both X and Y axis so I used the binomial family. The problem is that whenever I try to calculate the confidence intervals I get an error:

Error in predict.glmRob(mod, newdata = dfPred, type = "response") :
attempt to apply non-function

This is the R-code that I ran:

mod      <- glmRob(pop2 ~ pop1, data=df, family=binomial)
xweights <- seq(0, 0.2, 0.001)
dfPred   <- data.frame(pop1 = xweights)
yweights <- predict(mod, newdata=dfPred, type="response")

And these are the data:

            pop2           pop1
1   0.0000000000    0.006656805
2   0.0023738872    0.027366864
3   0.0071216617    0.054733728
4   0.0029673591    0.030325444
5   0.0094955490    0.175295858
6   0.0000000000    0.022189349
7   0.0005934718    0.019970414
8   0.0000000000    0.011834320
9   0.0011869436    0.023668639
10  0.0053412463    0.159763314
11  0.0005934718    0.070266272
12  0.0000000000    0.014792899
13  0.0077151335    0.154585799
14  0.0005934718    0.003698225
15  0.0011869436    0.062130178
16  0.0017804154    0.025147929
17  0.0071216617    0.053254438
18  0.0136498516    0.196745562

I found someone to help me extract the confidence intervals from the model with the following code but then I get confidence intervals ranging from 0 to 1 which doesn't happen in the non-robust glm or when another family is selected.

mod          <- glmRob(pop2 ~ pop1, data=df, family=binomial)
yweights     <- fitted.values(mod)
coefficients <- coef(mod)
se           <- coef(summary(mod))[,2]
intercept    <- as.numeric(coefficients[1] + c(-2*se[1], 0, 2*se[1]))
slope        <- as.numeric(coefficients[2] + c(-2*se[2], 0, 2*se[2]))
lci          <- intercept[1]+slope[1]*df$pop1
    uci          <- intercept[3]+slope[3]*df$pop1

Does anyone have an idea how to solve this?

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  • Your approach for calculating the intervals is flawed. It doesn't even consider correlation between the parameter estimates. You could try jackknife or bootstrap approaches instead (although I'm not 100 % sure that they play well with a robust GLM). However, I can't get your code to run without errors. – Roland Mar 15 '16 at 12:08
  • Your pop2 is just a fraction. You are using the binomial family, which requires the number of 'successes' & the number of 'failures'. I've never tried glmRob, but it may be able to work with a weights argument (as glm does) that would indicate the total number of Bernoulli trials. Do you have that information? Have you tried incorporating it? Can you paste it in here? – gung Mar 15 '16 at 15:12
  • Yes, this is also something that I tried but it gives the same error. For every value in my table the number of 'trials' is 1685. I appended a column with the weights to the table (by cbind(df, c(rep(1685, 18)) and ran glmRob with that column specified as weights. The model is created successfully again but the calculation of the confidence intervals gives either an error or the range [0,1] depending on the code used. – Tubeman Mar 15 '16 at 16:39

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