1: Multiple Regression Flashcards
1
Q
Non constant variance of the error term is unrelated to Independent Variables
A
Unconditional Heteroskedacity
ignore (doesn’t cause issues)
2
Q
Evaluating regression models:
AIC measures
A
Lower AIC = Better forecast
3
Q
Evaluating regression models: BIC
A
Lower BIC= Better Fit
4
Q
Assumptions of Linear Regression
A
- Linear relationship between X & Y
- No exact linear relationship between any X
- X is not random
- Residuals are normally distributed
- Variance of residuals is constant (homoskedacity)
- The error term is uncorrelated across observations
- Expected value of the error term =0
5
Q
Cook’s Distance detects:
A
influential data points
6
Q
F-test is used for evaluating overall:
A
model fit
not adjusted R2