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Chapter 12 Simple Regression Statistika.  Analisis regresi adalah analisis hubungan linear antar 2 variabel random yang mempunyai hub linear,  Variabel.

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Presentation on theme: "Chapter 12 Simple Regression Statistika.  Analisis regresi adalah analisis hubungan linear antar 2 variabel random yang mempunyai hub linear,  Variabel."— Presentation transcript:

1 Chapter 12 Simple Regression Statistika

2  Analisis regresi adalah analisis hubungan linear antar 2 variabel random yang mempunyai hub linear,  Variabel bebas (variabel pengaruh)  Variabel respon (variabel terpengaruh)  Regression analysis is used to:  Predict the value of a dependent variable (Y) based on the value of at least one independent variable (X)  Explain the impact of changes in an independent variable on the dependent variable Dependent variable: the variable we wish to explain Independent variable: the variable used to explain the dependent variable Introduction to Regression Analysis

3  The relationship between X and Y is described by a linear function  Changes in Y are assumed to be caused by changes in X  Linear regression population equation model  Where  0 and  1 are the population model coefficients and will be estimated from data  and  is a random error term. Linear Regression Model

4 Linear component Simple Linear Regression Model The population regression model: Population Y intercept Population Slope Coefficient Random Error term Dependent Variable Independent Variable Random Error component

5 Random Error for this X i value Y X Observed Value of Y for X i Predicted Value of Y for X i XiXi Slope = β 1 Intercept = β 0 εiεi Simple Linear Regression Model

6  b 0 and b 1 are obtained by finding the values of b 0 and b 1 that minimize the sum of the squared differences between y and : Least Squares Estimators Differential calculus is used to obtain the coefficient estimators b 0 and b 1 that minimize SSE

7  The slope coefficient estimator is  And the constant or y-intercept is  The regression line always goes through the mean x, y Least Squares Estimators

8 The simple linear regression equation provides an estimate of the population regression line Simple Linear Regression Equation Estimate of the regression intercept Estimate of the regression slope Estimated (or predicted) y value for observation i Value of x for observation i The individual random error terms e i have a mean of zero

9  The coefficients b 0 and b 1, and other regression results in this chapter, will be found using a computer  Hand calculations are tedious (boring)  Statistical routines are built into Excel  Other statistical analysis software can be used Finding the Least Squares Equation

10  b 0 is the estimated average value of y when the value of x is zero (if x = 0 is in the range of observed x values)  b 1 is the estimated change in the average value of y as a result of a one- unit change in x Interpretation of the Slope and the Intercept

11  A real estate agent wishes to examine the relationship between the selling price of a home and its size (measured in square feet)  A random sample of 10 houses is selected  Dependent variable (Y) = house price in $1000s  Independent variable (X) = square feet Simple Linear Regression Example

12 Sample Data for House Price Model House Price in $1000s (Y) Square Feet (X) 2451400 3121600 2791700 3081875 1991100 2191550 4052350 3242450 3191425 2551700

13 Graphical Presentation  House price model: scatter plot  From the scatter plot there is a linear trend

14  Tools / Data Analysis / Regression Regression Using Excel

15 Excel Output Regression Statistics Multiple R0.76211 R Square0.58082 Adjusted R Square0.52842 Standard Error41.33032 Observations10 ANOVA dfSSMSFSignificance F Regression118934.9348 11.08480.01039 Residual813665.56521708.1957 Total932600.5000 CoefficientsStandard Errort StatP-valueLower 95%Upper 95% Intercept98.2483358.033481.692960.12892-35.57720232.07386 Square Feet0.109770.032973.329380.010390.033740.18580 The regression equation is:

16  House price model: scatter plot and regression line Graphical Presentation Slope = 0.10977 Intercept = 98.248

17  b 0 is the estimated average value of Y when the value of X is zero (if X = 0 is in the range of observed X values)  Here, no houses had 0 square feet, so b 0 = 98.24833 just indicates that, for houses within the range of sizes observed, $98,248.33 is the portion of the house price not explained by square feet Interpretation of the Intercept, b 0 House price = 98.24833 + 0.10977*(squarefeet)

18  b 1 measures the estimated change in the average value of Y as a result of a one-unit change in X  Here, b 1 =.10977 tells us that the average value of a house increases by.10977($1000) = $109.77, on average, for each additional one square foot of size Interpretation of the Slope Coefficient, b 1 House price = 98.24833 + 0.10977*(squarefeet)


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