EQUATION 4.1 Relationship Between One Dependent and One Independent Variable: Simple Regression Analysis.

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Presentation transcript:

EQUATION 4.1 Relationship Between One Dependent and One Independent Variable: Simple Regression Analysis

FIGURE 4.1 Hypothetical Demand for Oranges.

TABLE 4.1 Simple Regression Analysis Results

EQUATION 4.2 Simple Regression Analysis

EQUATION 4.3 Simple Regression Analysis

FIGURE 4.2 Simple Regression Analysis Actual Versus Predicted Results

EQUATION 4.4 Simple Regression Analysis

TABLE 4.2 Multiple Regression Analysis Results

EQUATION 4.5 Relationship Between One Dependent and Multiple Independent Variables: Multiple Regression Analysis

EQUATION 4.6 Relationship Between One Dependent and Multiple Independent Variables: Multiple Regression Analysis

EQUATION 4.7, 4.8 Relationship Between One Dependent and Multiple Independent Variables: Multiple Regression Analysis

FIGURE 4.3 Multiple Regression Analysis, Fit of Price Variable

FIGURE 4.4 Multiple Regression Analysis, Fit of Advertising Variable

FIGURE 4.5 Log-Linear Demand Curve

EQUATION 4.9 Other Functional Forms

TABLE 4.3 The Demand for Automobiles

TABLE 4.4 Automobile Demand Elasticities

FIGURE 4.E1 Demand for Potatoes, 1989–1998