How to calculate LogLikelihood between real data and predicted data?
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Hey everyone!
I have used an AR-model to predict a time series and now I would like to calculate the LogLikelihood between my predicted datapoints and real datapoints to determine what set-up of my AR is the best by using the Akaika and Bayesian Information Criteria. On the internet I found the following idea:
LogL=sum(log(pdf(pd,x)))
I cannot use this command though because matlab tells me it needs to know what kind of probability density function the pdf command should use. How can I solve this problem?
I tried this:
LogL=sum(log(pdf('norm',pd,x,0,1)))
to try out what happens if I use a normal density function but my result is simply NaN...
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