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# calculate accuracy and precision of confusion matrix in R

Is there any tool / R package available to calculate accuracy and precision of confusion matrix in R ?

The formula and data structure are here

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possible duplicate stackoverflow.com/questions/6619853/… – agstudy Nov 25 '12 at 4:04
That thread talks about creating confusion matrix. My question is to calculate accuracy and precision on top of a confusion matrix. – Ajay Singh Nov 25 '12 at 4:39
I found a R package which helps to do this. cran.r-project.org/web/packages/caret/caret.pdf – Ajay Singh Nov 25 '12 at 4:39

yes, you can calculate Accuracy and precision in R with confusion matrix. It uses Caret package.

Here is the example :

``````lvs <- c("normal", "abnormal")
truth <- factor(rep(lvs, times = c(86, 258)),
levels = rev(lvs))
pred <- factor(
c(
rep(lvs, times = c(54, 32)),
rep(lvs, times = c(27, 231))),
levels = rev(lvs))

xtab <- table(pred, truth)
# load Caret package for computing Confusion matrix
library(caret)
confusionMatrix(xtab)
``````

And Confusion Matrix for xtab would be like this :

``````Confusion Matrix and Statistics

truth
pred       abnormal normal
abnormal      231     32
normal         27     54

Accuracy : 0.8285
95% CI : (0.7844, 0.8668)
No Information Rate : 0.75
P-Value [Acc > NIR] : 0.0003097

Kappa : 0.5336
Mcnemar's Test P-Value : 0.6025370

Sensitivity : 0.8953
Specificity : 0.6279
Pos Pred Value : 0.8783
Neg Pred Value : 0.6667
Prevalence : 0.7500
Detection Rate : 0.6715
Detection Prevalence : 0.7645

'Positive' Class : abnormal
``````

So here is everything, that you want.

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how to programatically find precision and recall after results of confusionMatrix(xtab) are got? – Harsh Trivedi Mar 3 '15 at 3:54
Thanks Nishu. Just one extra information I want to add. confusionMatrix(xtab) has dependency on "e1071" package, so installation of this package may be required. – Rupesh Oct 5 '15 at 17:35
@Rupesh: yeah, that's required. – Nishu Tayal Feb 16 at 5:57

@Harsh Trivedi

byClass allows you to pull out the precision and recall from the summary. PPV is precision. Sensitivity is recall. https://en.wikipedia.org/wiki/Precision_and_recall

``````library(caret)

result <- confusionMatrix(prediction, truth)
precision <- result\$byClass['Pos Pred Value']
recall <- result\$byClass['Sensitivity']
``````

I imagine you want to pull out the precision and recall to calculate the f-measure so here it goes.

``````f_measure <- 2 * ((precision * recall) / (precision + recall))
``````

I also found this handy online calculator for sanity check. http://www.marcovanetti.com/pages/cfmatrix/?noc=2

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