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So I have a glm that is defined like this

oring.glm = glm($Damaged ~$Temp, data =, family=binomial)

The data looks like this

Oring   Temp
1        15
0        20
1        30

I want to predict what happens to the Oring at a specific temperature

I've tried doing this

logodds = predict(oring.glm, list(Temp=31))

But this gives me a list of values, as opposed to a single odds value.

How do I get that?

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If you adjust the formula to be Damaged~Temp, you'll get the expected behavior. –  josilber Mar 14 '14 at 2:58
Check the example in ?predict.glm to see how to set up newdata argument. –  Roman Luštrik Mar 14 '14 at 8:17

1 Answer 1

If I'm correct to assume that you DV is dichotomous, then I'd use the logit link function, and access the predicted value of my fit using simple indexing:

g=glm(y~x,family=binomial("logit")) #fit
predict(g)[1234] # gives the predicted value of y for the x=1234.
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