Title: The Simple Linear Regression Model Specification and Estimation
1The Simple Linear Regression Model Specification
and Estimation
2Expenditure by households of a given income on
food
3Economic Model
- Assume that the relationship between income and
food expenditure is linear - But, expenditure is random
- Known as the regression function.
4Econometric model
5Econometric model
- Combines the economic model with assumptions
about the random nature of the data. - Dispersion.
- Independence of yi and yj.
- xi is non-random.
6Writing the model with an error term
- An observation can be decomposed into a
systematic part - the mean
- and a random part
7Properties of the error term
8Assumptions of the simple linear regression model
9The error term
- Unobservable (we never know E(y))
- Captures the effects of factors other than income
on food expenditure - Unobservered factors.
- Approximation error as a consequence of the
linear function. - Random behaviour.
10Fitting a line
11The least squares principle
- Fitted regression and predicted values
- Estimated residuals
- Sum of squared residuals
12The least squares estimators
13Least Squares Estimates
- When data are used with the estimators, we obtain
estimates. - Estimates are a function of the yt which are
random. - Estimates are also random, a different sample
with give different estimates. - Two questions
- What are the means, variances and distributions
of the estimates. - How does the least squares rule compare with
other rules.
14Expected value of b2
Estimator for b2 can be written
Taking expectations
15Variances and covariances
16Comparing the least squares estimators with other
estimators
Gauss-Markov Theorem Under the assumptions
SR1-SR5 of the linear regression model the
estimators b1 and b2 have the smallest variance
of all linear and unbiased estimators of ?1 and
?2. They are the Best Linear Unbiased Estimators
(BLUE) of ?1 and ?2
17The probability distribution of least squares
estimators
- Random errors are normally distributed
- estimators are a linear function of the errors,
hence they a normal too. - Random errors not normal but sample is large
- asymptotic theory shows the estimates are
approximately normal.
18Estimating the variance of the error term
19Estimating the variances and covariances of the
LS estimators