Tuesday, October 22, 2019
Final Exam Essay
Final Exam Essay   Final Exam Essay  Chapter 11 ââ¬â Simple linear regression    Types of Regression Models (Sec. 11-1)    Linear Regression:        	  - Outcome of Dependent Variable (response) for ith  experimental/sampling unit   	  - Level of the Independent (predictor) variable for ith  experimental/sampling unit  	  - Linear (systematic) relation between Yi and Xi  (aka conditional mean)  	  - Mean of Y when X=0 (Y-intercept)  	  - Change in mean of Y when X increases by 1 (slope)  	   -  Random error term    Note that   and   are unknown parameters. We estimate them by the least squares method.    Polynomial (Nonlinear) Regression:      This model allows for a curvilinear (as opposed to straight line) relation. Both linear and polynomial regression are susceptible to problems when predictions of Y are made outside the range of the X values used to fit the model. This is referred to as extrapolation.    Least Squares Estimation (Sec. 11-2)    1.	Obtain a sample of n pairs (X1,Y1)â⬠¦(Xn,Yn).  2.	Plot the Y values on the vertical (up/down) axis versus their corresponding X values on the horizontal (left/right) axis.  3.	Choose the line   that minimizes the sum of squared vertical distances from observed values (Yi) to their fitted values ( )   Note:    4.	b0  is the Y-intercept for the estimated regression equation  5.	b1  is the slope of the estimated regression equation    Measures of Variation (Sec. 11-3)    Sums of Squares    ï⠧	Total sum of squares = Regression sum of squares + Error sum of squares  ï⠧	Total variation = Explained variation + Unexplained variation  ï⠧	 Total sum of squares (Total Variation):    ï⠧	Regression sum of squares (Explained Variation):    ï⠧	Error sum of squares (Unexplained Variation):       Coefficients of Determination and Correlation     Coefficient of Determination    ï⠧	Proportion of variation in Y  ââ¬Å"explainedâ⬠ by the regression on X   ï⠧	     Coefficient of Correlation    ï⠧	Measure of the direction and strength of the linear association between Y and X  ï⠧	     Standard Error of the Estimate (Residual Standard Deviation)     ï⠧	Estimated standard    
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