# Percentage of false postive in R

Does anyone know an algorithms that I can use to calculate the percentage of false positive in a two column list.

Take my situation for instance . I have a clustering vector showing me groups a cluster belongs to and I have the correct label by the side on another column. I know some classifications are wrong from them not mapping to their labels which is most occurring. How can I finding the percentage of false positive for all labels . I am implementing this in R.

``````Cluster_vector   |    Labels
1              5
3              5
1              5
1              5
6              5
``````
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You may want to expand your perspective to include getting a confusion matrix out of this. –  Iterator Sep 2 '11 at 19:04
You really ought to include an example for which the "false positive" result is not undefined. How can you calculate a FP for being in "5" when there are no predicted "5"'s? You should also clarify which of these columns represent "truth" or "gold-standard". At the moment I cannot tell for sure. I would assume it is "Labels" given R coding conventions, but your text makes me wonder if that is how you see it. –  IShouldBuyABoat Sep 2 '11 at 20:27
thanks the Labels represent the gold standard and I have collected them myself. But you know how clusters vectors are in R you cannot get the same numbers as my labels . –  damola Sep 3 '11 at 12:40
Are you just looking for the proportion of mismatches, like `mean(x[,1] != x[,2])`?
You can get the confusion matrix by `table(x[,1] != x[,2])/nrow(x)`.