Binomial Logistic regression & the posterior probability

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Hi everyone! I have a question regarding a logistic regression model and the prediction of the posterior probability. I have the matrix of A, where the column 2 and 3 are the predictors, and the last column 4 is the target variable. I'm trying to apply the logistic regression model to get the coefficients, and then to use it to predict the posterior probability. In my case, using the model I did, I get 7.6060 which is wrong. Can anyone point out on my mistake? P.S. I believe that the model glm is incorrect since the estimates seem to be wrong.
student_ID = {'5003','5190','5090','5670'}';
hours_studied = [4.85 8.62 5.43 9.21]';
hours_slept = [9.63 3.23 8.23 6.34]';
passed = [1 0 1 0]';
T = table(student_ID, hours_studied, hours_slept, passed);
A = table2array(T(:,2:4));
XX = double(A(:,[1,2]));
YY = logical(A(:,3));
%Fit a logistic regression model using the data
glm = GeneralizedLinearModel.fit(XX,YY,'linear','Distribution','binomial','link','logit');
Xpred = [6.5 2];
ppred = glm.predict(Xpred) %the answer is 7.6060

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