normal distribution from data
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is there a more efficient way to derive a normal distribution.
% Deriving Normal Distribution From the Data
x=0:1:12;
m=mean(Data);
s=std(Data);
p=(1/(s*sqrt(2*pi)))*exp((-(x-m).^2)/(2*s^2));
5 commentaires
Roger Stafford
le 10 Sep 2013
Image Analyst, it isn't 'x' that Harley is stating has the normal distribution. It is 'data' which isn't being specified here. The 'x' is the independent variable in the hypothesized normal distribution. A plot of
plot(x,p)
would give the theoretical normal distribution pdf values as functions of x for the mean and std which have been computed from 'data'.
Réponse acceptée
Youssef Khmou
le 10 Sep 2013
Here is another suggestion:
y=pdf('Normal',x,m,s);
plot(x,y);
2 commentaires
Image Analyst
le 10 Sep 2013
It's fewer characters, so it's simpler to look at, but I doubt it's faster or more efficient (since there is more than one line of code inside that function), but I doubt he really wanted/needed more efficiency or speed anyway.
Youssef Khmou
le 11 Sep 2013
Yes Mr @Image Analyst, the advantage i see is that this function gives a choice for other laws besides the Gaussian,
Plus de réponses (2)
Shashank Prasanna
le 10 Sep 2013
Modifié(e) : Shashank Prasanna
le 10 Sep 2013
Since this is normal distribution, the mean and std of the data are the maximum likelihood estimates for the normal distribution from the data.
Once you have the PDF, like you have in the last line of code as 'p', you could plot the PDF using x to span -4*sigma to +4*sigma:
x = -4*s:0.01:4*s
p=(1/(s*sqrt(2*pi)))*exp((-(x-m).^2)/(2*s^2));
plot(x,p)
You could use a wider range if you wanted to.
0 commentaires
Roger Stafford
le 10 Sep 2013
You might try the Statistics Toolbox function 'normplot' to see how closely your 'data' comes to a normal distribution.
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