answersLogoWhite

0


Want this question answered?

Be notified when an answer is posted

Add your answer:

Earn +20 pts
Q: If a sample of 66 employees were taken from a population of 820 employees s2 could refer to the variance of how many of the employees salarues?
Write your answer...
Submit
Still have questions?
magnify glass
imp
Related questions

If a sample of 66 employees were taken from a population of 820 employees s2 could refer to the variance of how many of the employees salaries?

66


What does it mean to say that the sample variance provides an unbiased estimate of the population variance?

It means you can take a measure of the variance of the sample and expect that result to be consistent for the entire population, and the sample is a valid representation for/of the population and does not influence that measure of the population.


Is sample variance unbiased estimator of population variance?

No, it is biased.


How do you prove that the sample variance is equal to the population variance?

You cannot prove it because it is not true.The expected value of the sample variance is the population variance but that is not the same as the two measures being the same.


Show that in simple random sampling the sample variance is an unbiased estimator of population variance?

It is a biased estimator. S.R.S leads to a biased sample variance but i.i.d random sampling leads to a unbiased sample variance.


What does n-1 indicate in a calculation for variance?

The n-1 indicates that the calculation is being expanded from a sample of a population to the entire population. Bessel's correction(the use of n − 1 instead of n in the formula) is where n is the number of observations in a sample: it corrects the bias in the estimation of the population variance, and some (but not all) of the bias in the estimation of the population standard deviation. That is, when estimating the population variance and standard deviation from a sample when the population mean is unknown, the sample variance is a biased estimator of the population variance, and systematically underestimates it.


How much error between sample mean and population mean?

The answer depends on the underlying variance (standard deviation) in the population, the size of the sample and the procedure used to select the sample.


The sample variance is always smaller than the true value of the population variance is always larger than the true value of the population variance could be smaller equal to or?

yes, it can be smaller, equal or larger to the true value of the population varience.


When using the distribution of sample mean to estimate the population mean what is the benefit of using larger sample sizes?

The variance decreases with a larger sample so that the sample mean is likely to be closer to the population mean.


What does it means if the standard deviation is large?

that you have a large variance in the population and/or your sample size is too small


What is mean of any calculated number from a sample from the population is called statics such as the mean or the variance?

i mean conclucion


If the sample mean is 10 the hypothesized population mean is 9 and the population standard deviation is 4 compute the test value needed for the z test?

n = sample sizen1 = sample 1 sizen2 = sample 2 size= sample meanμ0 = hypothesized population meanμ1 = population 1 meanμ2 = population 2 meanσ = population standard deviationσ2 = population variance