# skew normal distribution

we have skew normal distribution with location=0, scale =1 and shape =0 then it is same as standard normal distribution with mean 0 and variance 1.but if we change the shape parameter say shape=5 then mean and variance also changes.how can we fix mean and variance with different values of shape parameter

-
I think you'd get a better response on math.stackexchange.com –  Tom Medley Jan 11 '11 at 10:52
You might ask this on stats.stackexchange.com. But if you do, please add more detail and ask a specific question. –  John D. Cook Jan 11 '11 at 11:42

Just look after how the mean and variance of a skew normal distribution can be computed and you got the answer! Knowing that the mean looks like:

and

You can see, that with a xi=0 (location), omega=1 (scale) and alpha=0 (shape) you really get a standard normal distribution (with mean=0, standard deviation=1):

If you only change the alpha (shape) to 5, you can except the mean will differ a lot, and will be positive. If you want to hold the mean around zero with a higher alpha (shape), you will have to decrease other parameters, e.g.: the omega (scale). The most obvious solution could be to set it to zero instead of 1. See:

Mean is set, we have to get a variance equal to zero with a omega set to zero and shape set to 5. The formula is known:

With our known parameters:

Which is insane :) That cannot be done this way. You may also go back and alter the value of xi instead of omega to get a mean equal to zero. But that way you might first compute the only possible value of omega with the formula of variance given.

Then the omega should be around 1.605681 (negative or positive).

Getting back to mean:

So, with the following parameters you should get a distribution you was intended to:

location = 1.256269 (negative or positive), scale = 1.605681 (negative or positive) and shape = 5.

Please, someone test it, as I might miscalculated somewhere with the given example.

-
Ok, I could not help doing the tests also in R (with `sn` package), and looks like everything is just fine with the given parameters (location and scale should have opposite sign): mean=0, var=1 and looks skew (with a skewness around 0.8619845)! –  daroczig Jan 11 '11 at 23:42
i did not understand the meaning of your last statement about test in R.can u elaborate it one more time?thanks –  Amber Jan 12 '11 at 2:55
if we have 3 equation of mean,variance and skewness then how can we fix location, scale and shape parameter.can u explain about it? –  Amber Jan 12 '11 at 3:33
@Amber: I did some tests to see if my computation was right, you have nothing to do with it. But about your other comment: you really should read about the subject, as I think there is no sense in speaking about a subject you are not familiar with. You might start with wikipedia: en.wikipedia.org/wiki/Skew_normal_distribution or with any basic statistics book. –  daroczig Jan 12 '11 at 8:28
how did u calculate the skew parameter(with a skewness around 0.8619845)?because i am not getting the same as u got?i understand the article but i m not figuring out it? –  Amber Jan 13 '11 at 5:58