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)
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.
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.
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.
clas_error: the classification error.
I know it was a long post so thanks for reading those who read :)