ROCR - best sensitivity/specificity tradeoff?
On Apr 6, 2011, at 2:27 PM, Christian Meesters wrote:
Hi, My questions concerns the ROCR package and I hope somebody here on the list can help - or point me to some better place. When evaluating a model's performane, like this: pred1 <- predict(model, ..., type="response") pred2 <- prediction(pred1, binary_classifier_vector) perf <- performance(pred, "sens", "spec") (Where "prediction" and "performance" are ROCR-functions.) How can I then retrieve the cutoff value for the sensitivity/ specificity tradeoff with regard to the data in the model (e.g. model = glm(binary_classifier_vector ~ data, family="binomial", data=some_dataset)? Perhaps I missed something in the manual?
Or perhaps in your learning phase regarding decision theory perhaps? You have not indicated that you understand the need to assign a cost to errors of either type before you can talk about a preferred cutoff value.
Or do I need an entirely different approach for this? Or is there an alternative solution? Thanks, Christian
David Winsemius, MD West Hartford, CT