SlideShare a Scribd company logo
1 of 3
SPSS: Assignment 4
Presented to
Dr. Zahay
Database Marketing 455
Northern Illinois University
Prepared by
Aaron Burden
April 2, 2009
Model Summary
Step
-2 Log
likelihood
Cox & Snell R
Square
Nagelkerke R
Square
1 24153.991a
.117 .256
a. Estimation terminated at iteration number 6 because
parameter estimates changed by less than .001.
Analysis
Log likelihood in this model is 24153.991; smaller numbers are better, but this value is large.
What are the marketing implications for this model? Linear regression with higher value is better to measure
and compare models with different sets of predictors’ variables.
Nagelkerke R Square value indicates how well model fits the regression relationship of the selected variables. .
256 means that 25.6% of the times with the use of this model, one can predict a customer purchase of this
product. Therefore, approximately 74.4% of the variation is not explained by this model.
Classification Tablea
Observed
Predicted
Bought "Art History of Florence?"
No Yes
Percentage
Correct
Step 1 Bought "Art History of
Florence?"
No 45123 355 99.2
Yes 3838 684 15.1
Overall Percentage 91.6
a. The cut value is .500
Analysis
Classification table compares the predicted values for the dependent variable and the model. The table indicates
how the counts for the predictions are broken down. According to this model, 99.2% was correctly predicted of
the respondents who answer NO to purchasing the Art History of Florence versus on 15.1% of respondents who
answered YES. Overall, the percentage of the correct predictions was 91.6%. The marketing implications for
this data is it will enable marketers to forecast sales, and discontinue those products that are not selling
compared to other products.
Variables in the Equation
B S.E. Wald df Sig. Exp(B)
Step 1 last -.095 .003 1149.614 1 .000 .910
purch -.170 .017 99.486 1 .000 .844
gender1 .759 .036 450.627 1 .000 2.136
youth .073 .032 5.101 1 .024 1.076
cook -.083 .025 10.698 1 .001 .920
do_it -.352 .033 116.065 1 .000 .703
reference .420 .033 163.101 1 .000 1.522
art 1.341 .030 1964.156 1 .000 3.821
geog .760 .027 783.182 1 .000 2.139
Constant -2.189 .038 3281.961 1 .000 .112
Analysis
The variable with a (-) slope are the following:
Last: -.095
Purch: -.170
Cook: -.083
Do It: -.352
The slopes of these variables will decrease the value of the Dependent variable by the given amount. (The constant
value is -2.189).
Wald is a measure of the significance of the predictor variables, and the largest values are the following:
Art: 1964.156
Last: 1149.614
Gender 1: 450.627
The marketing implications for this model will assist marketing managers to determine which variables are the best in
the model. Also, it will enable CMO’S to adapt to any changes in a marketing strategy.
Ho: There is no relationship between the selected variables.
Ha: There is a relationship between the selected variables.
Test: Logistic Regression
Confident level: .95
Conclusion: Reject the null because there is a significant relationship between the selected variables.
Best Odd Analysis
The following values will assist marketers determine the probability of an event occurring. For example, the top five
variables had the highest ExpB value:
Art: 3.821
Geog: 2.139
Gender 1: 2.136
Reference: 1.522
Youth: 1.076
These five variables have higher odds of occurring in comparison to the remaining variables. This odds ratio is useful for
interpreting the effects of the predictor variables.

More Related Content

What's hot (8)

Kf units Electrolytic Cell Volt Regression
Kf units Electrolytic Cell Volt RegressionKf units Electrolytic Cell Volt Regression
Kf units Electrolytic Cell Volt Regression
 
Autumn Winter 2013
Autumn Winter 2013Autumn Winter 2013
Autumn Winter 2013
 
Global Warming - Myth or Reality
Global Warming - Myth or RealityGlobal Warming - Myth or Reality
Global Warming - Myth or Reality
 
Measurement
MeasurementMeasurement
Measurement
 
Dynamic Modelling of Gas Turbine Engines
Dynamic Modelling of Gas Turbine EnginesDynamic Modelling of Gas Turbine Engines
Dynamic Modelling of Gas Turbine Engines
 
Physics and physical measurement
Physics and physical measurementPhysics and physical measurement
Physics and physical measurement
 
Temperature measurement erdi karaçal
Temperature measurement erdi karaçalTemperature measurement erdi karaçal
Temperature measurement erdi karaçal
 
Report_EBACProject_BBP
Report_EBACProject_BBPReport_EBACProject_BBP
Report_EBACProject_BBP
 

Viewers also liked

Presencial 1 Blog Educativo
Presencial 1 Blog EducativoPresencial 1 Blog Educativo
Presencial 1 Blog Educativo
pautachiapas
 
Broken Deals - Lessons Learned
Broken Deals - Lessons LearnedBroken Deals - Lessons Learned
Broken Deals - Lessons Learned
Lawrence M. Chu
 
Personality development by mark hickey (slide show)
Personality development by mark hickey (slide show)Personality development by mark hickey (slide show)
Personality development by mark hickey (slide show)
loveinspirit
 
Scatterplots And Correlations.Output
Scatterplots And Correlations.OutputScatterplots And Correlations.Output
Scatterplots And Correlations.Output
aburden01
 

Viewers also liked (19)

More Strange Sculptures
More Strange SculpturesMore Strange Sculptures
More Strange Sculptures
 
Merimee
MerimeeMerimee
Merimee
 
Link Building
Link BuildingLink Building
Link Building
 
Chiec Cau Thang
Chiec Cau ThangChiec Cau Thang
Chiec Cau Thang
 
Military Toys
Military ToysMilitary Toys
Military Toys
 
SEO за блогъри
SEO за блогъриSEO за блогъри
SEO за блогъри
 
Presencial 1 Blog Educativo
Presencial 1 Blog EducativoPresencial 1 Blog Educativo
Presencial 1 Blog Educativo
 
Latest tech
Latest techLatest tech
Latest tech
 
Broken Deals - Lessons Learned
Broken Deals - Lessons LearnedBroken Deals - Lessons Learned
Broken Deals - Lessons Learned
 
Movalli
MovalliMovalli
Movalli
 
Какво е SEO
Какво е SEOКакво е SEO
Какво е SEO
 
Seo Vs Ppc
Seo Vs PpcSeo Vs Ppc
Seo Vs Ppc
 
Personality development by mark hickey (slide show)
Personality development by mark hickey (slide show)Personality development by mark hickey (slide show)
Personality development by mark hickey (slide show)
 
Sunu5
Sunu5Sunu5
Sunu5
 
Scatterplots And Correlations.Output
Scatterplots And Correlations.OutputScatterplots And Correlations.Output
Scatterplots And Correlations.Output
 
Community Helper Slides
Community Helper SlidesCommunity Helper Slides
Community Helper Slides
 
презентация Music
презентация Musicпрезентация Music
презентация Music
 
Process Book | Graduation Project
Process Book | Graduation ProjectProcess Book | Graduation Project
Process Book | Graduation Project
 
Look & Feel Guide Raw Tobacco
Look & Feel Guide Raw TobaccoLook & Feel Guide Raw Tobacco
Look & Feel Guide Raw Tobacco
 

Similar to Model Summary.Regressionlogit

Statistics project2
Statistics project2Statistics project2
Statistics project2
shri1984
 
InstructionsView CAAE Stormwater video Too Big for Our Ditches.docx
InstructionsView CAAE Stormwater video Too Big for Our Ditches.docxInstructionsView CAAE Stormwater video Too Big for Our Ditches.docx
InstructionsView CAAE Stormwater video Too Big for Our Ditches.docx
dirkrplav
 
Technical Report - Intensity Distribution and Light Output Ratio
Technical Report - Intensity Distribution and Light Output RatioTechnical Report - Intensity Distribution and Light Output Ratio
Technical Report - Intensity Distribution and Light Output Ratio
Martin Jesson
 
Cobb-douglas production function
Cobb-douglas production functionCobb-douglas production function
Cobb-douglas production function
Suniya Sheikh
 
Chem 101 week 2
Chem 101 week 2Chem 101 week 2
Chem 101 week 2
tdean1
 
Fyp presentation new
Fyp presentation newFyp presentation new
Fyp presentation new
Djamal Didane
 
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Neeraj Bhandari
 

Similar to Model Summary.Regressionlogit (20)

Statistics project2
Statistics project2Statistics project2
Statistics project2
 
TEM workshop 2013: Electron diffraction
TEM workshop 2013: Electron diffractionTEM workshop 2013: Electron diffraction
TEM workshop 2013: Electron diffraction
 
Penybr regression kymb
Penybr regression kymbPenybr regression kymb
Penybr regression kymb
 
InstructionsView CAAE Stormwater video Too Big for Our Ditches.docx
InstructionsView CAAE Stormwater video Too Big for Our Ditches.docxInstructionsView CAAE Stormwater video Too Big for Our Ditches.docx
InstructionsView CAAE Stormwater video Too Big for Our Ditches.docx
 
Durbin watson tables
Durbin watson tablesDurbin watson tables
Durbin watson tables
 
Table durbin watson tables
Table durbin watson tablesTable durbin watson tables
Table durbin watson tables
 
Transient three dimensional cfd modelling of ceilng fan
Transient three dimensional cfd modelling of ceilng fanTransient three dimensional cfd modelling of ceilng fan
Transient three dimensional cfd modelling of ceilng fan
 
Technical Report - Intensity Distribution and Light Output Ratio
Technical Report - Intensity Distribution and Light Output RatioTechnical Report - Intensity Distribution and Light Output Ratio
Technical Report - Intensity Distribution and Light Output Ratio
 
Cobb-douglas production function
Cobb-douglas production functionCobb-douglas production function
Cobb-douglas production function
 
Cobb-douglas production function
Cobb-douglas production functionCobb-douglas production function
Cobb-douglas production function
 
Physics (significant figures)
Physics (significant figures)Physics (significant figures)
Physics (significant figures)
 
Durbin watson tables unyu unyu bgt
Durbin watson tables unyu unyu bgtDurbin watson tables unyu unyu bgt
Durbin watson tables unyu unyu bgt
 
Chem 101 week 2
Chem 101 week 2Chem 101 week 2
Chem 101 week 2
 
An overview of statistics management with excel
An overview of statistics management with excelAn overview of statistics management with excel
An overview of statistics management with excel
 
Exploratory factor analysis
Exploratory factor analysisExploratory factor analysis
Exploratory factor analysis
 
Ch15
Ch15Ch15
Ch15
 
Fast, Sensitive, and Cost-effective Analysis of Trace Metals in Water by EPA ...
Fast, Sensitive, and Cost-effective Analysis of Trace Metals in Water by EPA ...Fast, Sensitive, and Cost-effective Analysis of Trace Metals in Water by EPA ...
Fast, Sensitive, and Cost-effective Analysis of Trace Metals in Water by EPA ...
 
Fyp presentation new
Fyp presentation newFyp presentation new
Fyp presentation new
 
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
Measure of dispersion by Neeraj Bhandari ( Surkhet.Nepal )
 
Chapter 02
Chapter 02Chapter 02
Chapter 02
 

Recently uploaded

Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
panagenda
 

Recently uploaded (20)

Platformless Horizons for Digital Adaptability
Platformless Horizons for Digital AdaptabilityPlatformless Horizons for Digital Adaptability
Platformless Horizons for Digital Adaptability
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
Emergent Methods: Multi-lingual narrative tracking in the news - real-time ex...
 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
 
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemkeProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
 
presentation ICT roal in 21st century education
presentation ICT roal in 21st century educationpresentation ICT roal in 21st century education
presentation ICT roal in 21st century education
 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
 
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
 
Why Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire businessWhy Teams call analytics are critical to your entire business
Why Teams call analytics are critical to your entire business
 
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering DevelopersWSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
 
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWEREMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
EMPOWERMENT TECHNOLOGY GRADE 11 QUARTER 2 REVIEWER
 
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​Elevate Developer Efficiency & build GenAI Application with Amazon Q​
Elevate Developer Efficiency & build GenAI Application with Amazon Q​
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
 
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data DiscoveryTrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
TrustArc Webinar - Unlock the Power of AI-Driven Data Discovery
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
 
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In PakistanCNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
 

Model Summary.Regressionlogit

  • 1. SPSS: Assignment 4 Presented to Dr. Zahay Database Marketing 455 Northern Illinois University Prepared by Aaron Burden April 2, 2009
  • 2. Model Summary Step -2 Log likelihood Cox & Snell R Square Nagelkerke R Square 1 24153.991a .117 .256 a. Estimation terminated at iteration number 6 because parameter estimates changed by less than .001. Analysis Log likelihood in this model is 24153.991; smaller numbers are better, but this value is large. What are the marketing implications for this model? Linear regression with higher value is better to measure and compare models with different sets of predictors’ variables. Nagelkerke R Square value indicates how well model fits the regression relationship of the selected variables. . 256 means that 25.6% of the times with the use of this model, one can predict a customer purchase of this product. Therefore, approximately 74.4% of the variation is not explained by this model. Classification Tablea Observed Predicted Bought "Art History of Florence?" No Yes Percentage Correct Step 1 Bought "Art History of Florence?" No 45123 355 99.2 Yes 3838 684 15.1 Overall Percentage 91.6 a. The cut value is .500 Analysis Classification table compares the predicted values for the dependent variable and the model. The table indicates how the counts for the predictions are broken down. According to this model, 99.2% was correctly predicted of the respondents who answer NO to purchasing the Art History of Florence versus on 15.1% of respondents who answered YES. Overall, the percentage of the correct predictions was 91.6%. The marketing implications for this data is it will enable marketers to forecast sales, and discontinue those products that are not selling compared to other products.
  • 3. Variables in the Equation B S.E. Wald df Sig. Exp(B) Step 1 last -.095 .003 1149.614 1 .000 .910 purch -.170 .017 99.486 1 .000 .844 gender1 .759 .036 450.627 1 .000 2.136 youth .073 .032 5.101 1 .024 1.076 cook -.083 .025 10.698 1 .001 .920 do_it -.352 .033 116.065 1 .000 .703 reference .420 .033 163.101 1 .000 1.522 art 1.341 .030 1964.156 1 .000 3.821 geog .760 .027 783.182 1 .000 2.139 Constant -2.189 .038 3281.961 1 .000 .112 Analysis The variable with a (-) slope are the following: Last: -.095 Purch: -.170 Cook: -.083 Do It: -.352 The slopes of these variables will decrease the value of the Dependent variable by the given amount. (The constant value is -2.189). Wald is a measure of the significance of the predictor variables, and the largest values are the following: Art: 1964.156 Last: 1149.614 Gender 1: 450.627 The marketing implications for this model will assist marketing managers to determine which variables are the best in the model. Also, it will enable CMO’S to adapt to any changes in a marketing strategy. Ho: There is no relationship between the selected variables. Ha: There is a relationship between the selected variables. Test: Logistic Regression Confident level: .95 Conclusion: Reject the null because there is a significant relationship between the selected variables. Best Odd Analysis The following values will assist marketers determine the probability of an event occurring. For example, the top five variables had the highest ExpB value: Art: 3.821 Geog: 2.139 Gender 1: 2.136 Reference: 1.522 Youth: 1.076 These five variables have higher odds of occurring in comparison to the remaining variables. This odds ratio is useful for interpreting the effects of the predictor variables.