# Select data based on a distribution in matlab

I have a set of data in a vector. If I were to plot a histogram of the data I could see (by clever inspection) that the data is distributed as the sum of three distributions;

One normal distribution centered around x_1 with variance s_1; One normal distribution centered around x_2 with variance s_2; Once lognormal distribution.

My data is obviously a subset of the 'real' data.

What I would like to do is to take a random subset of my data away from my data ensuring that the resulting subset is a reasonable representative sample of the original data.

I would like to do this as easily as possible in matlab but am new to both statistics and matlab and am unsure where to start.

Thank you for any help :)

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Perhaps belongs to Cross Validated? –  Phonon Apr 8 '13 at 20:26
What do you mean by "ensure it is a reasonable representative sample"? If you just sampled randomly from your data set, in what way would that not be "reasonably representative"? (Not a rhetorical question - I'd like you to answer it so that I can be sure what you're asking!) –  Chris Taylor Apr 8 '13 at 20:57
I agree with @ChrisTaylor. If your subset is large enough, usually you can assume that the distribution is the same. You can apply `randperm` function to randomly select data subset without replacements. –  yuk Apr 8 '13 at 21:17
@ChrisTaylor Let's say that my problem is more trivial and I knew my data should represent a normal distribution however if i plot a histogram of my data i can see that some of the bins may be under or over subscribed. I cannot take out too many of the points accidentally from and under subscribed bin (as it will corrupt the data) and I prefer not to take too many points from an over subscribed bin. –  user1132726 Apr 10 '13 at 0:57