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Multiple Regression Analysis y = b0 + b1x1 + b2x2 + . . . bkxk + u 2. Hypothesis Testing 1 Variance of the OLS Estimators Now we know that the sampling distribution of our estimated coefficients are centered around the true parameters Want to know how accurate/reliable our estimators are This is called hypothesis testing 2 So far, we know that given the GaussMarkov assumptions, OLS is BLUE In order to do hypothesis testing, we need to add another assumption (beyond the Gauss-Markov assumptions) Assume that u is independent of x1, x2,…, xk and u is normally distributed with zero mean and variance s2: u ~ Normal(0,s2) 3 Classical Linear Model Under these assumptions, OLS is not only BLUE (best linear unbiased estimator), but is the minimum variance unbiased estimator (meaning most accurate among all possible models that give unbiased estimators) 4 Under these assumptions, bˆ j ~ Normal b j ,Var bˆ j , so that bˆ j b j sd bˆ j ~ Normal 0,1 5 Population vs Sample Mean Variance Standard Deviation True Parameter Sample mean Sample Variance Standard Error Coefficient Estimate 6 The t Test Under these assumptions bˆ b j j se bˆ j ~ tn k 1 Note this is a t distribution with degrees of freedom n k 1(vs normal) 2 ˆ because we have to estimate s by s 2 7 The t Test (cont) Start with a null hypothesis For example, H0: bj=0 This null says that xj has no incremental effect on y, beyond the effects from other x’s 8 The t Test (cont) (Important) To perform our test w e first need to form ˆ b " the" t statistic for bˆ j : t bˆ j j se bˆ j We will then use our t statistic along with a rejection rule to determine whether t o accept the null hypothesis , H 0 9 t Test Besides our null, H0, we need an alternative hypothesis, H1, and a significance level H1: bj 0 If we want to have only a 5% probability of rejecting H0 if it is really true, then we say our significance level is 5% 10 t Test If the sample is not too small (>30 observations), Reject the null if the magnitude(=absolute value) of our t statistic is greater than 2. If the magnitude of our t statistic is less than 2, then we fail to reject the null 11 If we reject the null, we say “xj is statistically significant at the 5% significance level”, or simply “xj is statistically significant” If we fail to reject the null, we say “xj is statistically insignificant at the 5% level”, or simply “xj is statistically insignificant”. 12 p-values An alternative to look up what percentile the t statistic is in the appropriate t distribution – this is the p-value. Roughly speaking, p-value is the probability that we would observe this t statistic (or more extreme values) if the null were true (no significant coefficient) 13 For example, if p-value=0.04, This means that, if the null were true (no significant coefficient), your chance of seeing the results that you have seen is just 4%. So the coefficient most likely is significant. 14 p-values Most computer packages will compute the p-value for you. If p-value is <0.05, the coefficient is significant, reject the null. 15