04 Sampling Distributions Flashcards
What is a sampling distribution?
The distribution of a statistic (such as the mean, standard deviation, proportion) calculated from all possible samples of a fixed size.
It tells you the number of possible samples which have a certain value for a statistic.
What do μ, σ, and p represent?
The mean, standard deviation and proportion of the whole population the sample is drawn from
What do x̄, s and p̂ represent?
The mean, standard deviation and proportion of a sample taken from the larger population.
How can a sample statistic (eg x̄, s2) provide an estimate of the population parameter?
We can calculate the mean of the statistic; eg the mean value of the x̄’s from all the different samples
If the mean of the sample statistic is equal to the true population parameter, the statistic is said to be…?
Unbiased
Which of x̄, s, s2 and p̂ are unbiased estimates of the population parameters?
x̄, s2 and p̂
What does the central limit theorem say?
If an SRS of size n is taken from a population, then x̄ and p̂ follow approximately normal distributions
- x̄ ~ N(μ, σ/√n)
- p̂ ~ N(p, √[p(1-p)/n])
When can the central limit theorem be applied?
- When np > 10 and np(1-p) > 10
- When the population size N > 10n
- When n > 30
If we have two samples, what do we know about the distribution of the differences between the two sample’s means and proportions?
- x̄1-x̄2 ~ N(μ1-μ2, √[σ21/n1-σ22/n2])
- (p̂1-p̂2) ~ N(p1-p2, √(p1(1-p1)/n1 + p2(1-p2)/n2)
- If np and n(1-p) > 10
- N > 10n
If we have an SRS of size n taken from a population with mean μ and standard deviation σ, what can we say about the distributions of x̄ and p̂?
- x̄ ~ N(μ, σ/√n)
- p̂ ~ N(p, √[p(1-p)/n]