In Mahout how can we make train vectors and test vectors for Naive Bayes Classifier manually instead of use
"--randomSelectionPct" option for split. According to my understanding I had built train vectors and test vectors manually as
bin/mahout seq2sparse -i TestSet0-seq -o TestSet0-vectors bin/mahout seq2sparse -i TrainSet0-seq -o TrainSet0-vectors /home/marvin1/hadoop-1.0.4/bin/hadoop fs -cp /user/marvin1/TestSet0-vectors/tfidf-vectors /user/marvin1/test-vectors /home/marvin1/hadoop-1.0.4/bin/hadoop fs -cp /user/marvin1/TrainSet0-vectors/tfidf-vectors /user/marvin1/train-vectors
But by this accuracy is just 1%. Here data was 90-10 split manually. But when I had passed complete data(train+test) to mahout and used
"--randomSelectionPct 10". Then it gives accuracy around 50%.
Please let me know what i had done wrong in this.