1

When I calculate the measures with the Rose library I get measures for recall, precision and F1. The recall and precision measures differ however when I calculate them manually. How come?

install.packages("ROSE")
library(ROSE)
library(rpart)


s = sample(957,200)
training = data[-s,] 
test = data[s,] 

### Rose
treeimb <- rpart(Riskdrinker ~ ., data = training)
pred.treeimb <- predict(treeimb, newdata = test) 
accuracy.meas(test$Riskdrinker, pred.treeimb[,2])

Output

Call: accuracy.meas(response = test$Riskdrinker, predicted = pred.treeimb[, 2])

Examples are labelled as positive when predicted is greater than 0.5

precision: 0.919 recall: 0.943 F: 0.465

However when I calculate this measures like this I get other results for precision and recall.

treeimb <- rpart(Riskdrinker ~ ., data = training)
pred.treeimb <- predict(treeimb, newdata = test) 
pred <- predict(treeimb, newdata = test, type="class")
confMat <- table(test$Riskdrinker, pred)

#Precision
message("Precision: ", specify_decimal(confMat[1,1] / (confMat[1,1] + confMat[2,1])*100, 1), " %")


#Recall
message("Recall: ", specify_decimal(confMat[1] / (confMat[1] + confMat[1,2])*100, 1), " %")

#Accuracy
message("Accuracy: ", specify_decimal((confMat[1]+confMat[2,2]) / (confMat[1] + confMat[1,2] + confMat[2,1] + confMat[2,2])*100, 1), " %")

Or like this. Same same.

accuracy <- sum(diag(confMat))/sum(confMat)

This results in:

  • Precision: 76.9 %
  • Recall: 69.8 %
  • Accuracy: 89.0 %

The main difference from the codes are that I use type="class" in one of the cases, but what makes that for difference? Can you get a matrix from Rose aswell? I would say that this is a reproducible example unless I give away my dataset ofc.

1

I have done some experiments with the Rose package and found that they indeed did it wrong.

Here is some prints from their .meas function:

negatives: 21.8284728768508
n.negatives 45
postives 135.677199132703
n.positives 155
TP: 143
FP 16
TN 29
FN 12

Compares to my table a confusion matrix

pred <- predict(treeimb, newdata = test, type="class")
confMat <- table(pred, test$Riskdrinker)

          Reference
Prediction  Ja Nej
       Ja   29  12
       Nej  16 143

What we can see is that their TP and TN is wrong.

0

Looks like the ROSE library has a bug then:

precision: 0.919 recall: 0.943 F: 0.465

is clearly inconsistent because max(p,r) >= f >= min(p,r)

Maybe you could fix the bug, and send a patch to the authors?

  • What do you mean with: max(p,r) >= f >= min(p,r)? – sockevalley May 11 '17 at 13:22
  • The F value must always be between the precision and recall; it cannot be smaller or larger than these two bounds. Therefore, at least one of the F value, the precision, and the recall reported by ROSE must be wrong. – Anony-Mousse May 11 '17 at 15:31
  • I have forked and commited a new version that is accurate. Awaiting answers from Nicola right now. – sockevalley May 11 '17 at 17:10
  • Hey Anony, I got these results with logreg. 93 in precision, 88 in recall and 45 in F score. Are they consistent with F-score? I calculated the F-score as such: F <- RECALL*PRECISION/(RECALL+PRECISION) Just like it said in ROSE – sockevalley May 17 '17 at 19:28
  • Btw, 0.465* 2 is between 0.919 and 0.943 – sockevalley May 17 '17 at 19:38

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.