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I'm using Random Forest (RF) package in R,for the purpose of predicting the distances between proteins (regression model of RF) "for a homology modeling purposes" and I obtained quite good results. However, I need to have a confidence level to rank my predicted values and filter out the bad models, so I wonder if there is any possibility to calculate such confidence level, or any other way of measuring the certainty of the predictions? any suggestions or recommendations is highly appreciated

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One simple approach would be to simply treat the predictions from each tree in the forest as a sample of predictions, from which you can calculate a mean and standard error, just as if you were calculating a CI for a mean. – joran Jul 23 '13 at 14:25

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