# Naive Bayse Classifier for Multiclass: Getting Same Error Rate

I have implemented the Naive Bayse Classifier for multiclass but problem is my error rate is same while I increase the training data set. I was debugging this over an over but wasn't able to figure why its happening. So I thought I ll post it here to find if I am doing anything wrong.

``````%Naive Bayse Classifier
%This function split data to 80:20 as data and test, then from 80
%We use incremental 5,10,15,20,30 as the test data to understand the error
%rate.
%Goal is to compare the plots in stanford paper
%http://ai.stanford.edu/~ang/papers/nips01-discriminativegenerative.pdf

function[tPercent] = naivebayes(file, iter, percent)
for i=1:iter

%Getting the index common to test and train data
idx = randperm(size(dm.data,1))

%Using same idx for data and labels
shuffledMatrix_data = dm.data(idx,:);
shuffledMatrix_label = dm.labels(idx,:);

percent_data_80 = round((0.8) * length(shuffledMatrix_data));

%Doing 80-20 split
train = shuffledMatrix_data(1:percent_data_80,:);

test = shuffledMatrix_data(percent_data_80+1:length(shuffledMatrix_data),:);

%Getting the label data from the 80:20 split
train_labels = shuffledMatrix_label(1:percent_data_80,:);

test_labels = shuffledMatrix_label(percent_data_80+1:length(shuffledMatrix_data),:);

%Getting the array of percents [5 10 15..]
percent_tracker = zeros(length(percent), 2);

for pRows = 1:length(percent)

percentOfRows = round((percent(pRows)/100) * length(train));
new_train = train(1:percentOfRows,:);
new_train_label = train_labels(1:percentOfRows);

%get unique labels in training
numClasses = size(unique(new_train_label),1);
classMean = zeros(numClasses,size(new_train,2));
classStd = zeros(numClasses, size(new_train,2));
priorClass = zeros(numClasses, size(2,1));

% Doing the K class mean and std with prior
for kclass=1:numClasses
classMean(kclass,:) = mean(new_train(new_train_label == kclass,:));
classStd(kclass, :) = std(new_train(new_train_label == kclass,:));
priorClass(kclass, :) = length(new_train(new_train_label == kclass))/length(new_train);
end

error = 0;

p = zeros(numClasses,1);

% Calculating the posterior for each test row for each k class
for testRow=1:length(test)
c=0; k=0;
for class=1:numClasses
temp_p = normpdf(test(testRow,:),classMean(class,:), classStd(class,:));
p(class, 1) = sum(log(temp_p)) + (log(priorClass(class)));
end
%Take the max of posterior
[c,k] = max(p(1,:));
if test_labels(testRow) ~= k
error = error +  1;
end
end
avgError = error/length(test);
percent_tracker(pRows,:) = [avgError percent(pRows)];
tPercent = percent_tracker;
plot(percent_tracker)
end
end
end
``````

Here is the dimentionality of my data

``````x =

data: [768x8 double]
labels: [768x1 double]
``````

I am using Pima data set from UCI

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And btw: it is Bayes, not Bayse. –  Thomas Jungblut Oct 7 '12 at 10:48