# How to calculate sample and population variances in Matlab?

I have a vector `a`

``````a = [86 100 41 93 75 61 76 92 88 97]
``````

And I want to calculate the `std` and `mean` by myself:

``````>> mean(a)

ans =

80.9000

>> std(a)^2

ans =

335.2111
``````

But when I do it like that I get wrong variance:

``````>> avg = mean(a)

avg =

80.9000

>> var = sum(a.^2)/length(a) - avg^2

var =

301.6900
``````

What do I miss here ?

why `sum(a.^2)/length(a) - avg^2 != std(a)^2` ?

## 2 Answers

Try this:

``````var = sum(a.^2)/(length(a)-1) - (length(a))*mean(a)^2/(length(a)-1)

var =

335.2111
``````

`var` is computed as (unbiased) sample, not population variance.

For a complete explanation you can read here.

From the matlab documentation,

VAR normalizes Y by N-1, where N is the sample size. This is an unbiased estimator of the variance of the population from which X is drawn, as long as X consists of independent, identically distributed samples.

but

Y = VAR(X,1) normalizes by N and produces the second moment of the sample about its mean. VAR(X,0) is the same as VAR(X).

so that

``````>> var(a,1)

ans =

301.6900
``````

An unbiased sample variance is given by:

``````>> 1/(length(a)-1) * sum((a-mean(a)).^2)

ans =

335.2111
`````` 