t-distribution
t-distribution is...
flatter and fatter
sample standard deviation
s
the larger n is...
the closer the t-distribution looks to the z distribution
t-test
used when sigma is not known
t n-1
value on the t-distribution with n-1 degrees of freedom
A confidence interval is narrower if you use t than if you use Z. (Assume all else is the same.)
false
population must have...
a normal distribution or at least symmetric distribution
If you don't know the population standard deviation, what do you use as a substitute in your test statistic?
s
95% confidence intervals based on the t-distribution are generally WIDER than confidence intervals based on the Z-distribution (if everything else stays the same.)
true
The larger n is, the closer the t distribution looks to the Z distribution.
true
The t distribution is taller and thinner (more concentrated around the mean) than the Z distribution.
false
t- distribution: penalty
a value that is usually bigger than z, making the interval wider
Suppose a 95% confidence interval for the mean is (10, 12) when you know the value of the population standard deviation (sigma). If you HAD NOT known the value of sigma, would your confidence interval have been wider, narrower, or the same?
true
You must use a t instead of a Z in your confidence interval formula for a mean when you don't know the value of sigma. (Assume you have a normal distribution.)
true