I am using R (RStudio Version 0.98.1017) to train a binary classifier using Naive Bayes algorithm and do a 5-fold cross validation. Here is the code I am using:
library(caret)
dataset <- read.table("dataFile.csv", header=TRUE, sep = ",")
attributes = dataset[,-3]
labels = as.factor(dataset$Class)
model = train(attributes, labels, method='nb', trControl=trainControl(method='repeatedcv', number=5))
confusionMatrixResults<-table(predict(model$finalModel,attributes)$class,labels)
confusionMatrix(confusionMatrixResults)
Here is a sample data of dataFile.csv file (only first 10 lines):
firstName,lastName,Class
ayah,salat,0
abdulahi,youssif,1
yara,abshir,0
sawda,alanazi,1
abubaker,farah,1
yusaira,aden,1
mohammad,okash,0
farhia,alossehy,1
mais,alom,0
The code works perfectly fine if the file contains 2001 lines (1 header and 2000 records) and it generates the following confusion matrix and results:
labels
0 1
0 991 2
1 17 990
Accuracy : 0.9905
95% CI : (0.9852, 0.9943)
No Information Rate : 0.504
P-Value [Acc > NIR] : < 2.2e-16
Kappa : 0.981
Mcnemar's Test P-Value : 0.001319
Sensitivity : 0.9831
Specificity : 0.9980
Pos Pred Value : 0.9980
Neg Pred Value : 0.9831
Prevalence : 0.5040
Detection Rate : 0.4955
Detection Prevalence : 0.4965
Balanced Accuracy : 0.9906
'Positive' Class : 0
But if I add even only 1 extra line, it will generate very poor results (No errors or warnings though):
labels
0 1
0 596 78
1 413 914
Accuracy : 0.7546
95% CI : (0.7352, 0.7733)
No Information Rate : 0.5042
P-Value [Acc > NIR] : < 2.2e-16
Kappa : 0.5106
Mcnemar's Test P-Value : < 2.2e-16
Sensitivity : 0.5907
Specificity : 0.9214
Pos Pred Value : 0.8843
Neg Pred Value : 0.6888
Prevalence : 0.5042
Detection Rate : 0.2979
Detection Prevalence : 0.3368
Balanced Accuracy : 0.7560
'Positive' Class : 0
My question is: How is it possible that one additional record lead to such a different results. It worth to mention that I have tried couple of random tests with different records and in all of them the problem was independent to a specific record and it occurred when the files had more than 2001 lines.
My guess is that there must be some limitations in regard to memory size, or the Naive Bayes library.
Here is the file if you want to try it (I renamed the attributes to keep them confidential): https://www.dropbox.com/s/7z39wzxilblo2bm/dataFile.csv removing the last line will improve the results significantly!