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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)
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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
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.

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You model:

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

2 predictions based on your model:


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)}


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