gmdistribution.fit and gmdistribution help needed
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I tried to model a multivariate gaussian density with just a data set to estimate the mean, covariance and mixing parameter using gmdistribution.fit. But i dont know whether its correct. Here is my code:
function Ecc = Econtrol(O,K,m,T,n,q1,p2)
x = reshape(O(1:2*n),2,n);
U1 = reshape(O(2*n+1:q1),1,p2);
x=x';
obju = gmdistribution.fit(U1',K,'SharedCov',true,'CovType','diagonal');
objx = gmdistribution.fit(x,K,'SharedCov',true,'CovType','diagonal');
px=0;
for k=1:m
px = log(pdf(objx,x(k,:))+pdf(objx,x(k,:)))+px;
end
pu=0;
for k=1:T-m
pu = log(pdf(obju,U1(:,k))+pdf(obju,U1(:,k)))+pu;
end
Ecc = -px -pu;
end
below is the equation i wanna model. is it correct?
%
1 commentaire
Daniel Shub
le 28 Nov 2012
Closed as doit4me, please show your what you have tried and where you are stuck.
Réponse acceptée
Tom Lane
le 28 Nov 2012
I don't know if your code is correct, but:
1. The text seems not to declare that the covariance is diagonal, and does use notation to suggested that it may not be shared across mixture components.
2. Unless I'm just not seeing something, you seem to compute pdf(objx,x(k,:)) twice inside the log, and the same for U, but I don't know why you would want that.
3. Your text describes U as multivariate, but you seem to create U1 with just one row and index into it repeatedly, getting scalar values each time.
4. It may be possible to avoid the loops and compute the pdf on an entire array in one call, then sum the log of the result.
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Wei Cai Law
le 29 Nov 2012
4 commentaires
Tom Lane
le 12 Déc 2012
I don't understand. The variable g represents both components. pdf(g,x) compute the sum over both. Are you asking how to get at each one individually?
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