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I am using multi-layer perceptron with 10 fold cross validation. I am getting confused on TP, FP, precision, recall, etc

=== Stratified cross-validation ===
=== Summary ===

Correctly Classified Instances 5997 99.95 %
Incorrectly Classified Instances 3 0.05 %
Kappa statistic 0.8569
Mean absolute error 0.0016
Root mean squared error 0.0227
Relative absolute error 38.1377 %
Root relative squared error 50.8969 %
Total Number of Instances 6000

=== Detailed Accuracy By Class ===

           TP Rate   FP Rate   Precision   Recall  F-Measure   ROC Area  Class
             0.75      0          1         0.75      0.857      0.997    fraud
             1         0.25       0.999     1         1          0.997    legit  
Weighted Avg.1         0.25       1         1         0.999      0.997

=== Confusion Matrix ===

a    b   <-- classified as
9    3 |    a = fraud
0 5988 |    b = legit
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What exactly are you confused about? –  Junuxx Dec 15 '13 at 14:10
    
I do not know what these means. I tried google but could not get the right idea for these. Mean absolute error 0.0016 Root mean squared error 0.0227 Relative absolute error 38.1377 % Root relative squared error 50.8969 % –  user3019485 Dec 31 '13 at 23:48

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