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1 Chapter 17 Data Analysis: Investigation of Association © 2005 Thomson/South-Western.

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Presentation on theme: "1 Chapter 17 Data Analysis: Investigation of Association © 2005 Thomson/South-Western."— Presentation transcript:

1 1 Chapter 17 Data Analysis: Investigation of Association © 2005 Thomson/South-Western

2 2 Figure 1: Scatter Diagrams of Sales vs. Marketing-Mix Variables Sales-Y ($000’s) TV Spots-X 1 Number of Salespersons-X 2 Sales-Y ($000’s)

3 3 Figure 1 continued Wholesaler Efficiency Index-X 3 Sales-Y ($000’s)

4 4 Figure 2: Relationship between Y and X 1 in the Probabilistic Model Y YiYi YiYi ^ eiei Y i = α 1 + β 1 X 1i ^ ^ ^ X 1i X1X1

5 5 Figure 3: Plot of Equation Relating Sales to TV Spots Sales ($000’s) TV Spots Y=135.4+25.3X 1

6 6 Figure 4: Rectangular Distribution of Error Term Frequency Y X

7 7 Figure 5: Scatter of Points for Sample of n Observations X Y y x yiyi xixi P

8 8 Figure 6: Sample Scatter Diagrams and Their Correlation Coefficients A: r =.95B: r =.60 E: r = -.40 C: r = 1.00 F: r = -1.00D: r = -.60 I: r =.00H: r =.00G: r =.00

9 9 Figure 7: Hypothetical Relationship between Sales and TV Spots and between TV Spots and Number of Sales Representatives TV Spots 200 175 150 125 100 75 50 25 1 2 3 4 5 6 7 8 9 10 Sales 987654321987654321 TV Spots Number of Salespersons 1 2 3 4 5 6 7 8 9 10

10 10 Territory Data for Click Ballpoint Pens Territory Sales (In Thousands) Y Advertising (TV Spots/Month) X 1 Number of Salespersons X 2 Wholesaler Efficiency Index X 3 005 019 033 039 061 082 091 101 115 118 133 149 162 164 178 187 189 205 260.3 286.1 279.4 410.8 438.2 315.3 565.1 570.0 426.1 315.0 403.6 220.5 343.6 644.6 520.4 329.5 426.0 343.2 5 7 6 9 12 8 11 16 13 7 10 4 9 17 19 9 11 8 353463784364487363353463784364487363 423414323411342243423414323411342243

11 11 Territory Data for Click Ballpoint Pens Territory Sales (In Thousands) Y Advertising (TV Spots/Month) X 1 Number of Salespersons X 2 Wholesaler Efficiency Index X 3 222 237 242 251 260 266 279 298 306 332 347 358 362 370 391 408 412 430 442 467 471 488 450.4 421.8 245.6 503.3 375.7 265.5 620.6 450.5 270.1 368.0 556.1 570.0 318.5 260.2 667.0 618.3 525.3 332.2 393.2 283.5 376.2 481.8 13 14 7 16 9 5 18 5 7 12 13 8 6 16 19 17 10 12 8 10 12 55465365367643887453555546536536764388745355 42433343221432224333424243334322143222433342

12 Sales vs. TV Spots Sales-Y Thousands of Dollars TV Spots-X 1

13 13 Sales vs. Number of Salespersons Sales-Y Thousands of Dollars Number of Salespersons-X 2

14 14 Sales vs. Wholesaler Efficiency Index Sales-Y Thousands of Dollars Wholesaler Efficiency Index-X 3

15 15 Computer Output of Regression of Sales Versus TV Spots Coefficient of Multiple Determination Coefficient of Multiple Correlation Standard Error of Estimate Constant135.433 TV Spots in25.3072.21411.430130.644.880 Analysis of Variance Summary Table Due to Regression Due to Residuals Total 463451.00 134802.01 598253.02 1 38 39 463451.01 3547.42 130.644 Sum of Squares Degrees of Freedom Mean Square F Ratio Sales.775.880 59.560 Dependent Variable Variable Regression Standard T- F- Partial Standardized Status Coefficient Error Value Level Correlation Coefficient

16 16 Plot of Equation Relating Sales to TV Spots Sales Thousands of Dollars TV Spots Y=135.4+25.3X 1

17 17 Computer Output of Sales Versus TV Spots and Number of Salespersons Coefficient of Multiple Determination Coefficient of Multiple Correlation Standard Error of Estimate Variable Regression Standard T- F- Partial Standardized Status Coefficient Error Value Level Correlation Coefficient Constant 69.328 TV Spots14.1562.6645.31528.246.658.492 Analysis of Variance Summary Table Due to Regression Due to Residuals Total 522778.45 75474.56 598253.02 2 37 39 261389.23 2039.85 128.410.141 Sum of Squares Degrees of Freedom Mean Square F Ratio Sales.874.935 45.165 Salespersons37.5316.9595.39329.084.663.500 Dependent Variable

18 18 Computer Output of Sales Versus TV Spots, Number of Salespersons and Wholesaler Efficiency Coefficient of Multiple Determination Coefficient of Multiple Correlation Standard Error of Estimate Variable Regression Standard T- F- Partial Standardized Status Coefficient Error Value Level Correlation Coefficient Constant31.150 TV Spots12.9682.7374.73822.446.620.451 Analysis of Variance Summary Table Due to Regression Due to Residuals Total 527209.08 71043.94 598253.02 3 36 39 175736.36 1973.44 89.050 Sum of Squares Degrees of Freedom Mean Square F Ratio.881.939 44.423 Salespersons41.2467.2805.66632.098.687.549 Wholeeff11.5247.6911.498 2.245.242.092 Sales Dependent Variable

19 19 Computer Output of Sales Versus TV Spots, # of Salespersons and Wholesaler Efficiency with Wholesaler Efficiency Expressed as a Dummy Variable Coefficient of Multiple Determination Coefficient of Multiple Correlation Standard Error of Estimate Constant44.211 TV Spots13.0632.9404.44319.738.606 Analysis of Variance Summary Table Due to Regression Due to Residuals Total 527235.24 71017.77 598253.02 5 34 39 105447.05 2088.76 50.483 Sum of Squares Degrees of Freedom Mean Square F Ratio Sales.881.939 45.703 Salespersons40.9488.0095.11326.143.659 Fairdist 8.399 25.378.331.110.057 Excldist32.92427.6711.190 1.416.200 Gooddist20.03128.770.696.485.119 Dependent Variable Variable Regression Standard T- F- Partial Standardized Status Coefficient Error Value Level Correlation Coefficient.454.545.033.123.077

20 20 Hypothetical Relationship Between Sales and TV Spots, & Between TV Spots and #of Salespersons 200 175 150 125 100 75 50 25 987654321987654321 1 2 3 4 5 6 7 8 9 10 TV Spots 1 2 3 4 5 6 7 8 9 10 TV Spots Number of Salespersons Sales

21 21  Measure of Linear Association between 2 Variables  Range:-1.00 < r xy < 1.00 Correlation Coefficient

22 22 y x r xy =-1.00 y x r xy =-.20 y x r xy =-.70 Relationship Between Scatterplots and Correlation Coefficients

23 23 y x r xy =.00 Nonlinear Relationship in the Data? “r” will be an approximation.

24 24 Effect of Multicollinearity

25 25 Predictions “Experts are sure the Dow will either rise or decline.” ‘Boy, business forecasting is an exact science, isn’t it?’ (Headlines, compiled by Jay Leno) A safe prediction for the market is the time of the closing bell. (101 Corporate Haiku, W. Warriner)

26 26  Representation of Categorical Variables for Regressions  Ex/ Favorability rating of Auto prototype as function of: age, gender, nationality –X1=age –X2=gender: M=1, W=0 –X3=nationality: 1=Asian, 2=European, 3=U.S.  #dummy variables required = # categories -1  Use X3 and define: –If X3=1 then DV1=1, else DV1=0 –If X3=2 then DV2=1, else DV2=0 Dummy Variables Nationality X3 DV1 DV2 Asian110 European201 U.S.300

27 27 Source: Conjoint Measurement Understand how consumers make trade-offs Discover attributes most valued by consumers Implications of attribute values, combinations for product design

28 28 Respondent’s Ordering of Various Product Descriptions Source: Capacity Price 4 Cup $28 $32 $38 8 Cup $28 $32 $38 22 Cup $28 $32 $38 Brewing Time 3 Minutes 6 Minutes 9 Minutes 12 Minutes 17 15 6 16 12 5 9 8 3 4 2 1 30 26 24 29 25 22 21 20 8 14 13 7 36 34 28 35 33 27 32 31 23 19 18 11

29 29 Some Attribute Utility Values & the Resulting Utilities for the Alternatives Under an Additive Rule Capacity Price 4 Cup $28 $32 $38 8 Cup $28 $32 $38 22 Cup $28 $32 $38 Brewing Time 3 Minutes 6 Minutes 9 Minutes 12 Minutes 1.3 1.0 0.8 1.1 0.3 0.6 0.9 0.6 0.4 1.4 1.1 0.9 1.2 0.9 0.7 1.0 0.7 0.5 1.6 1.3 1.1 1.4 1.1 0.9 1.2 0.9 0.7 CapacityBrewing TimePrice 4 Cup.2 8 Cup.3 10 Cup.5 $28.6 $32.3 $38.1 3 Minutes.5 6 Minutes.3 9 Minutes.1 12 Minutes.1

30 30 Plot of Input Ranks Versus Derived Cell Values Input Ranks Derived Cell Values 40 30 20 10 0.5 1.0 1.5 2.0

31 31 Figure 1: Key Decisions when Conducting a Conjoint Analysis Select Attributes Determine Attribute Levels Select Form of Presentation of Stimuli and Nature of Judgments to Be Secured from Subjects Decide on Whether, and If Yes How, Judgments Will Be Aggregated Determine Attribute Combinations to Be Used Select Analysis Technique

32 32 Coke store brand $1.99 $2.99 Coke store $1.99 $2.99 1 24 3 Coke store $1.99 $2.99 1 34 2 Which consumer is price sensitive, and which values quality or brand names?: Using Conjoint to Determine Price Sensitivity and Brand Equity

33 33 Figure 2: Pair-wise Approach to Data Collection in Conjoint Analysis $28 $32 $38 4 8 10 Price Capacity (cups) 3 6 9 12 4 8 10 Brewing Time (mins) Capacity (cups) 3 6 9 12 $28 $32 $38 Brewing Time (mins) Price

34 34 Figure 3: Computer Administered Paired Comparison Choice Which would you prefer? Use the scale below to indicate your preference. 4-cup capacity 8-cup capacity 9-min.brewing time 3-min.brewing time $28 $38 Strongly Prefer 1 2 3 4 5 6 7 8 9 Prefer Left Right


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