Asymptotics
Oh, Hyunzi. (email: wisdom302@naver.com)
Korea University, Graduate School of Economics.
2024 Spring, instructed by prof. Kim, Dukpa.
Main References
In Inferences in Linear RegressionInferences in Linear Regression, we have assumed that the residuals given the regressors is multivariate normal, i.e.
Let
Proof. Note that since
Now, recall Convergence of Random Variables > ^7f35f5Convergence of Random Variables > Definition 12 (convergence in probability), then
Define
Proof.By the assumption that
Let
Let
Proof.From Convergence of Random Variables > ^af289aConvergence of Random Variables > Definition 7 (almost surely converges),
Note that
Assuming
Let
Here, LLN assumes the three types of regularity conditions:
Let
Before proving ^0968deTheorem 8 (Lindeberg-Levy CLT), remark the definition.
The moment-generating function (MGF) of a random variable
Finally, we formally prove the Central Limit Theorem (CLT).
Let
Proof.Define
Using Introductory Analysis > ^38dc05Introductory Analysis > Theorem 18 (Taylor's Approximation), we have
Thus, we have
Note that we can alternatively use Statistical Proof > ^49c76aStatistical Proof > Definition 14 (characteristic function) to prove ^0968deTheorem 8 (Lindeberg-Levy CLT), since MGF may not exists for some random variables (while CF always exists for any random variables).
More compact version of ^0968deTheorem 8 (Lindeberg-Levy CLT) is:
Let
However,
Let
Let the
Proof.Using Normal Distribution Theory > ^46ff8aNormal Distribution Theory > Proposition 11 (normal and chi-squared distribution), for
Let
Let
Let
Proof.Using Introductory Analysis > ^38dc05Introductory Analysis > Theorem 18 (Taylor's Approximation), we have
For the sequence of random variables
Let
If
Proof.Assume
For the sequence of random variables
We have