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.

I fitted a mixed model to Data A as follows:

model <- lme(Y~1+X1+X2+X3, random=~1|Class, method="ML", data=A)

Next, I want to see how the model fits Data B and also get the estimated residuals. Is there a function in R that I can use to do so?

(I tried the following method but got all new coefficients.)

model <- lme(Y~1+X1+X2+X3, random=~1|Class, method="ML", data=B)
share|improve this question
3  
Did you try predict(model,data_B) - data_B$Y or something like that? –  Gary Weissman Mar 4 '13 at 23:42
    
Not yet since I did not know about that. Thanks! –  Guess Gucci Mar 4 '13 at 23:45
    
You should use prediction with caution. Small changes to the model can lead to different outcome. –  Panos K. Mar 5 '13 at 0:47

2 Answers 2

up vote 5 down vote accepted

The reason you are getting new coefficients in your second attempt with data=B is that the function lme returns a model fitted to your data set using the formula you provide, and stores that model in the variable model as you have selected.

To get more information about a model you can type summary(model_name). the nlme library includes a method called predict.lme which allows you to make predictions based on a fitted model. You can type predict(my_model) to get the predictions using the original data set, or type predict(my_model, some_other_data) as mentioned above to generate predictions using that model but with a different data set.

In your case to get the residuals you just need to subtract the predicted values from observed values. So use predict(my_model,some_other_data) - some_other_data$dependent_var, or in your case predict(model,B) - B$Y.

share|improve this answer

You model:

model <- lme(Y~1+X1+X2+X3, random=~1|Class, method="ML", data=A)

2 predictions based on your model:

pred1=predict(model,newdata=A,type='response')
pred2=predict(model,newdata=B,type='response')

missed: A function that calculates the percent of false positives, with cut-off set to 0.5.
(predicted true but in reality those observations were not positive)

missed = function(values,prediction){sum(((prediction > 0.5)*1) != values)/length(values)}

missed(A,pred1)
missed(B,pred2)

share|improve this answer

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.