1、Chapter 3 多元线性回归模型(Multiple linear regression model),You are required to get familiar with matrix algebra for mastering this chapter!,Classical Multiple linear regression model(CMLRM):1.model 2.random sample,Matrix form:,3.Model assumption:1.2.3.is non-random.4.5.Normality assumption,assumptions 1 a
2、nd 5 imply that the errors areIndependent.As in the case of the univariate linear regression models,we can estimate the regression coefficients of the multiple linear regression models by using the ordinary least squares procedure.In matrix form,the OLSE is,4.OLSE for the CMLRM5.Properties of the OL
3、SE for the CMLRM1.2.3.The Gauss-Markov theorem is still true:The OLSE for the CMLRM is the BLUE.,6.Residual and Estimation of the population variance 1.Residual 1)P is idempotent(幂等的)2)3)4),2.Estimator for,7.Goodness-of-fit testing 1.1)Total sum of squares:2)Explained sum of squares:2.Coefficient of
4、 determination:,3.Adjusted R-squared:,8.Hypothesis testing 1.Significance test for the population regression equation 1)Hypothesis:2)F-statistic:,3)Testing Given a significance level,pick up the critical value.if,reject.otherwise,accept it.2.Significance test for a single parameter 1)Hypothesis:2)t-statistic:,9.Forecasting 1.Point forecast:Given,then a predictor 2.Interval forecast:Let then,Let Then Homework:,