Dodatkowe przykłady dopasowywane są do haseł w zautomatyzowany sposób - nie gwarantujemy ich poprawności.
To do this, two estimates are made of the population variance.
Now we face the problem of estimating the population variance.
First estimate the population mean and population variance based on the data.
For such small samples, a test of equality between the two population variances would not be very powerful.
The former can give an unbiased to estimate when the two groups share an equal population variance.
Mo et al. refined the idea by noting that the population variance of the feature should be taken into account.
The population variance therefore is the variance of the underlying probability distribution.
But this ν contains the population variances σ, and these are unknown.
So unless the sample happens to have the same mean as the population, this estimate will always underestimate the population variance.
For small samples, it is customary to use an unbiased estimator for the population variance.
Based on this sample, the estimated population mean is 10, and the unbiased estimate of population variance is 30.
Under a correct assumption of equal population variances a pooled estimate for σ is more precise.
Therefore, many statistical tests can be conveniently performed as approximate Z-tests if the sample size is large or the population variance known.
Unless population variances among congressional districts are shown to have resulted despite such effort, the State must justify each variance, no matter how small. .
The following estimate only replaces the population variances by the sample variances:
However, in the Behrens-Fisher problem, the two population variances are not known to be equal, nor is their ratio known.
It tests the null hypothesis that the population variances are equal (called homogeneity of variance or homoscedasticity).
The true distribution of the test statistic actually depends (slightly) on the two unknown population variances (see Behrens-Fisher problem).
Conversely, the sample variance is an unbiased estimate of the population variance, but is not Fisher consistent.
Population variance:
Several years ago, the correction commission began threatening to end the county's jail population variances if the county did not begin construction on a new jail soon.
A formula for calculating an unbiased estimate of the population variance from a finite sample of n observations is:
The assumption of homoscedasticity, also known as homogeneity of variance, assumes equality of population variances.
In other words, the expected value of the uncorrected sample variance does not equal the population variance σ, unless multiplied by a normalization factor.
The computational formula for the population variance follows in a straightforward manner from the linearity of expected values and the definition of variance: