Geometry of Least Squares Estimator
Oh, Hyunzi. (email: wisdom302@naver.com)
Korea University, Graduate School of Economics.
2024 Spring, instructed by prof. Kim, Dukpa.
Main References
In vector form, the model is
Equivalently, in matrix form, the model is
Consider a set of vectors
Let a linear model be
Given model
Proof.We first solve using the first order condition, and later we solve it using the concept of orthogonal complement, and the Method of Moments.
This completes the proof. □
Using ^6f53a3Proposition 3 (Ordinary Least Squares estimator of
The projection matrices
Proof.First we show that
Next we show that
For a matrix
Proof.Since
For
Proof.First,
The result of ^e7c63eRemark 6 (projection results) will be further analysed in the section Orthogonal ProjectionsOrthogonal Projections.
Let
Proof.The results comes trivially,
Let
Proof.First we prove
Next we prove
For the projection mappings
Proof.First we show
(
(
Next we show
(
(
Let
Proof.Since ^3faab5Lemma 9 (range space of projection mapping) shows that
Therefore,
The matrix
For the projection matrix
This Corollary is a direct result from Introductory Linear Algebra > ^83eef8Introductory Linear Algebra > Theorem 17 (eigenvalue decomposition of orthogonal projection).
Proof.From
Let
Proof.First we prove
Next, using ^a8c0c0Proposition 4 (symmetric and idempotent of projection matrices),
Let
Proof.Similarly,
Suppose two different matrices
Proof.From the previous result, and since
Let
Proof.We can derive the result directly.
Let
For given projection matrix
Proof.Note that