Belle's Ecom - Multiple Linear Regression - Estimation

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Effect of additional regressors on R-squared

R-squared ALWAYS rises when regressors are added to the regression unless the estimated coefficient on a regressor is exactly 0 (rare) - R-squared will either go up or not change w/ additional regressors We often work with adjusted R-squared as it does not necessarily increase when a new regressor is added

Imperfect multicollinearity

Arises when one of the regressors is highly correlated, but not perfectly correlated, with other regressors This results in regression coefficients being estimate imprecisely and having large standard errors, and therefore statistically insignificant regression coeffcients This makes it hard to disentangle their individual impacts on the dependent variable in the regression

Implications of OVB

As n gets large, beta1_hat does not get close to beta with high probability

Signing OVB

Correlation between Y and OV, and X and OV

Distribution of OLS estimators in multiple linear regression

Different samples produce different values for the OLS estimators These estimators are random variables with a distribution OLS estimators are unbiased and consistent estimators of their population true values

Heteroskedasticity

Error term in the regression is homoskedastic if the variance condition on all of the regressors is constant Otherwise, the error term is heteroskedastic

Standard error of the regression (SER)

Estimates the standard deviation of the error term u_i:

Magnitude of the OLS estimate

If beta1_hat < beta1: estimate of the relationship will be too large relative to the true value of beta

Omitted Variable Bias (OVB)

If the regressor is correlated w/ a variable that has been omitted from the analysis AND that determines, in part, the dependent variable, the OLS estimator of the effect of interest will suffer from OVB

Dummy variable trap/perfect multicollinearity (3)

Multicollinearity arises when multiple dummy variables are used as regressors When a group of dummy variables add up to always equal another dummy variable (or the constant regressor, which is uncommon) This can be avoided by dropping one of the dummy variables or the constant

Multiple linear regression

Multiple linear regression model extends the single linear regression model to include additional variables as regressors Model allows us to estimate the effect on Y of changing one variable while holding other regressors constant (or fixed)

OVB and OLS Assumption #1

OVB means the first least square assumption fails.

When does OVB occur (2)

Occurs when the omitted variable satisfies two conditions: 1. Correlated with the included regressor 2. Helps determine the dependent variable If OVB exists, the estimate of beta1 is now biased

Population regression model with k regressors

Regressors may be any combination of continuous or dummy variables

Impacts of adding additional regressors

Rich and richer regressions allows us to control for many other variables that predict Y in avoiding OVB to isolate relationships More variables on the RHS means more stuff we're taking out of the variable term (less subject to OVB)

Fixing OVB

Taking a sub-sample and plot for this sub-sample Can determine whether the relationship is driven by a direct or indirect relationship

OLS estimation with multiple linear regression

The OLS estimator aims to find the regression coefficients that together minimise the mistakes the model makes in predicting the dependent Y given the k regressors

Perfect multicollinearity

Two regressors exhibit perfect multicollinearity if one regressor is a perfect linear combination of other regressors Assumption 4 (no perfect multicollinearity) requires that no regressors exhibit perfect multicollinearity

Control variables

Variables that are held fixed to estimate the effect of Y by changing another variable (eliminates OVB)

Coefficient interpretation and partial effect

When interpreting, we imagine changing only one regressor at a time, leaving the others fixed


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