# Pattern recognition, maximum likelihood, naive Bayes classifier

I am given 2 classes ("class1.dat" and "class2.dat") that consist of rows, and each row is a vector of 20 characteristics (20 values).

I take 10, arrange them with the fisher ratio and keep the best 5 results, then estimate the value of each normal distribution (assuming they are normally distributed) with maximum likelihood and the calculate the error with the naive Bayes classifier.

This is my code:

``````% i take 10 random characteristics

C1= class_1(:,1:10)
C2= class_2(:,1:10)
% FDR matrix initialize

FDR=zeros(1,10);
%Calculate fisher ratio
%[t]=Fisher(x,y) where t:fisher ratio,x:data vector of first class,y: ...of second class

for i=1:10
FDR(i)=Fisher(C1(i,:),C2(i,:));
end
%i find that the highest fisher ratio are 1,3,4,5,7 so i save them in a new matrix X

X1=[C1(:,1),C1(:,3),C1(:,4),C1(:,5),C1(:,7)];
X2=[C2(:,1),C2(:,3),C2(:,4),C2(:,5),C2(:,7)];
X=[X1;X2];
%Calculate the Gaussian ml estimate
%[m,S]=Gaussian_ML_estimate(X) where X:LxN matrix m:L dimensional estimate of mean and %S:LxL dimensional estimate of convariance

[C1mean_mle, C1cov_mle]=Gaussian_ML_estimate(C1');
[C2mean_mle, C2cov_mle]=Gaussian_ML_estimate(C2');
%I put together the estimates to use them in the last function, the naive bayes

Cmean_mle(:,1)=C1mean_mle;
Cmean_mle(:,2)=C2mean_mle;
Ccov_mle(:,:,1)=C1cov_mle;
Ccov_mle(:,:,2)=C2cov_mle;
``````

I am troubled as to what I do next. I have a function:

``````[z] = bayes_classifier(m,S,P,X)
``````

INPUT ARGUMENTS: m: lxc matrix, whose j-th column is the mean of the j-th class.
S: lxlxc matrix, where S(:,:,j) corresponds to the covariance matrix of the normal distribution of the j-th class.
P: c-dimensional vector, whose j-th component is the a priori probability of the j-th class.
X: lxN matrix, whose columns are the data vectors to be classified.

OUTPUT ARGUMENTS:
z: N-dimensional vector, whose i-th element is the label of the class where the i-th data vector is classified.

and this function:

``````[clas_error] = compute_error(y,t_est)
``````

computes the error of a classifier based on a data set.

INPUT ARGUMENTS:
y: N-dimensional vector containing the class labels of the N vectors of a data set.
t_est: N-dimensional vector containing the labels of the classes to which each one of the vectors of X has been assigned according to a classification rule.
OUTPUT
clas_error: the classification error.

I know it was a long post so thanks for reading those who read :)

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Hi, and welcome to StackOverflow! Unfortunately, like you said, this long post contains way too much info. Please reduce the question and keep only the relevant parts to your question, because quite frankly... I never found a question, I got lost. –  Eitan T Dec 26 '12 at 15:31