Log likelihood
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    Nuchto
      
 am 22 Mai 2012
  
    
    
    
    
    Kommentiert: Jessica Hopf
 am 3 Mär. 2023
            Hi!
I was wondering how to compute (which function to use) in Matlab the log likelihood but when the data is not normally distributed. Thanks!
Nuchto
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Akzeptierte Antwort
  Tom Lane
    
 am 24 Mai 2012
        If you have the most recent release of the Statistics Toolbox:
>> x = poissrnd(4,20,1);
>> pd = fitdist(x,'poisson');
>> pd.NLogL
ans =
   39.0221
If you do not:
>> mu = poissfit(x);
>> -sum(log(poisspdf(x,mu)))
ans =
   39.0221
12 Kommentare
  Tom Lane
    
 am 29 Mai 2012
				Sadly, it doesn't say much on its own. You could compare it to the likelihood of other fits.
  Jessica Hopf
 am 3 Mär. 2023
				Im curious where the documentation for pd.NLogL is? specifically, I can't find how you would know to do this without having found this answer
Weitere Antworten (2)
  the cyclist
      
      
 am 22 Mai 2012
        
      Bearbeitet: John Kelly
    
 am 26 Feb. 2015
  
      If you have the Statistics Toolbox, you can calculate the (negative) log likelihood for several functional forms.
For example, there is a betalike() function that will calculate the NLL for a beta function.
3 Kommentare
  the cyclist
      
      
 am 23 Mai 2012
				I'm not sure I understand what you mean. When you say you can't "find" them, do you mean they are not in your version of MATLAB? Do you have the Statistics Toolbox?
Or do you mean that you see all those functions, but none of them are for the distribution you are trying to use?
Or do you mean something else?
  Oleg Komarov
      
      
 am 24 Mai 2012
        You can try the following submission: http://www.mathworks.co.uk/matlabcentral/fileexchange/34943-fit-all-valid-parametric-probability-distributions-to-data
It will fit several distributions and should return the NLL (NegLogLik) for each.
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