The properties of the OLS estimator in the static model

Summary

Setup:

  • The linear regression model with the GM assumptions

\[y_t=β_1+β_2x_{t,2}+...+β_kx_{t,k}+ε_t , t=1,…,T\]

  • \(b_1,b_2,…,b_k\) are the OLS estimators of \(β_1,β_2,…,β_k\)

Result:

  • The OLS estimator is unbiased.
  • The OLS estimator is consistent (under weak assumptions).
  • The OLS estimator is BLUE
  • The OLS standard errors are consistent.
  • Inference is correct if error terms are normal, approximately correct if \(T\) is large.