If Z is a standard normal r.v., the distribution of U=Z2 is called the chi-square distribution with 1 degree of freedom.
If U1,U2... are independent chi-square r.v. with 1 degree of
freedom, the distribution of V=U1+U2+... is called the
chi-square distribution with n degrees of freedom and is denoted
by χn2
σ2(n−1)S2 has a χ2(n−1) distribution
t distribution
If Z∼N(0,1) and U∼χn2 and U are independent, then the distribution of U/nZ is called the t distribution with n degrees of freedom.
if X1,...,Xn are a random sample from a N(μ,σ2), we know that σ/nXˉ−μ∼N(0,1)
but if σ is unknown, we can use S to replace σ, and Sn/nXˉ−μ∼t(n−1)
t-distribution converges to a normal distribution if the freedom degree approaches to infinity.
Property
t(1)∼Cauchy
E(t(p))=0
Var(T(p))=p−2p
F distribution
Let U and V be independent χ2 r.v. with m and n degrees of freedom, respectively. The distribution of
W=V/nU/m
is call the F distribution with m and n degrees of freedom and is denoted by Fm,n
U=σx2(n−1)Sx2∼χ2(n−1)
V=σy2(n−1)Sy2∼χ2(m−1)
V/m−1U/n−1=Sy2/σy2Sx2/σx2∼F(m,n)
Property
A variance ratio may have an F distribution even if the parent populations are not normal. It is enough that their pdf are symmetry functions.