Distributions derived from gaussian Flashcards
Define chi squared RV
A RV X is chi-squared with ν > 0 degrees of freedom iff X ∼ Ga (ν/2, 1/2)
What is the transformation to a standard normal RV to get a chi squared
The square of the standard normal RV gives chi squared
What distribution does a chi squared distribution have a relation with
Its a special case of gamma distribution
What does the mean and variance of an estimator tell us
Info on how well we are estimating the parameter of interest:
- The mean tells us if θ_estimate is centred around θ.
- The variance measures the uncertainty
What can be a problem with the sampling distribution of an estimator
However, since the sampling distribution of ˆθ may depend on θ, also its
moments may involve θ, which is unknown. So the uncertainty associated to an estimate for the sample mean may contain a variance or parameter of the population which is unknown.
What is the problem with the normal sample mean
It is Xbar is normally distributed and unbiased but the uncertainty of Xbar involves the variance of the population which is unknown.
Why do we estimate T - from student T distribution
Note: in a Gaussian random sample, the variance of T = Xbar −μ/ √S2/n does not
depend on σ.
What is the mgf of a student t distribtuion and why
Student’s t has no mgf because it does not have moments of all orders
(i.e. some moments are not finite)
What is significant about the moments of the student t distribution
If there are n − 1 = p degrees of freedom, the moments only up to
(including) degree p− 1 exist
So t1 has no mean and t2 has no variance
What is t1 distribution called
Cauchys distribution
What estimators can use cramer rao’s inequality
Unbiased estimators it will hold
How we can we tell a best unbiased estimator and what is it called
Consequence: the best unbiased estimator is the one attaining this lower
bound, the cramer rao bound.
This special estimator is called Minimum Variance Unbiased Estimator
(MVUE).
What should we do with all unbiased estimators
Whenever we have an unbiased estimator we should check if it attains the
CRLB
State cramer rao inequality
Let X1, . . . , Xn
IID ∼ fX (·|θ), and let us have an unbiased estimator of θ. Then,
under smoothness assumptions on Lx (θ), the following holds: Var(estimator)
≥ 1/ E [I (θ)]