SlideShare a Scribd company logo
1 of 7
Download to read offline
Structural Equation Modelling
(SEM)
An Introduction (Part 1)
What is Structural Equation Modelling?
• SEM is a general statistical modelling technique used to establish relationship among
variables.
• SEM is a confirmatory data analysis technique, i.e.

 it tests models that are conceptually derived, beforehand
 it tests if the theory fits the data

• SEM can be thought of as a combination of factor analysis and multiple regression
 it can simultaneously test measurement and structural relationships

• SEM is a family of related procedures. It is alternately defined by the following terms

 Path Analysis, Path Modelling, Causal Modelling, Analysis of Covariance Structures, Latent
Variable Analysis, Linear Structural Relations
Covariance: At the Heart of SEM
• Covariance is a measure of how much two random variables change
together. Alternately, it can be defined as the strength of association
between the two variables and their variabilities.
𝑛
𝑖=1(𝑋 𝑖 −

𝑋)(𝑌 𝑖 − 𝑌)

𝑁−1

OR

𝑐𝑜𝑣 𝑥𝑦 = 𝑟 𝑥𝑦 𝑆𝐷 𝑥 𝑆𝐷 𝑦

• The basic statistic of SEM
 Understanding patterns of correlations among a set of variables
 Explain as much of their variance as possible with the model specified
Logic of SEM
• Every theory (model) implies a set of correlations
 And why variables are correlated
• Necessary (but insufficient) condition for the validity of the theory is
that it should be able to reproduce the correlations that are actually
observed
 i.e., the implied covariance matrix should = the actual covariance
matrix
Why SEM over Regression?
• Regression allows for only a single dependent variable,
whereas SEM allows for multiple dependent variables.
• SEM allows for variables to correlate, whereas regression
adjusts for other variables in the model.
• Regression assumes perfect measurement, whereas SEM
accounts for measurement error.
USES OF SEM
• Theory testing
 Strength of prediction/association in models with multiple DVs
 Model fit
• Mediation/tests of indirect effects
• Group differences
 Multiple-sample analysis
• Longitudinal models
• Multilevel nested models
Looking for Online SEM
Training?
Contact us: info@costarch.com

Visit: http://tinyurl.com/costarch-sem
www.costarch.com

More Related Content

What's hot

Basics of Structural Equation Modeling
Basics of Structural Equation ModelingBasics of Structural Equation Modeling
Basics of Structural Equation Modelingsmackinnon
 
Multiple Linear Regression II and ANOVA I
Multiple Linear Regression II and ANOVA IMultiple Linear Regression II and ANOVA I
Multiple Linear Regression II and ANOVA IJames Neill
 
Research Methology -Factor Analyses
Research Methology -Factor AnalysesResearch Methology -Factor Analyses
Research Methology -Factor AnalysesNeerav Shivhare
 
Factor Analysis in Research
Factor Analysis in ResearchFactor Analysis in Research
Factor Analysis in ResearchQasim Raza
 
Structural equation modeling in amos
Structural equation modeling in amosStructural equation modeling in amos
Structural equation modeling in amosBalaji P
 
Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)
Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)
Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)Ali Asgari
 
Cannonical correlation
Cannonical correlationCannonical correlation
Cannonical correlationdomsr
 
Moderation and Mediation | Dissertation Webinar
Moderation and Mediation | Dissertation WebinarModeration and Mediation | Dissertation Webinar
Moderation and Mediation | Dissertation WebinarStatistics Solutions
 
Multivariate data analysis
Multivariate data analysisMultivariate data analysis
Multivariate data analysisSetia Pramana
 

What's hot (20)

Basics of Structural Equation Modeling
Basics of Structural Equation ModelingBasics of Structural Equation Modeling
Basics of Structural Equation Modeling
 
Factor analysis
Factor analysisFactor analysis
Factor analysis
 
Causal Models and Structural Equations
Causal Models and Structural EquationsCausal Models and Structural Equations
Causal Models and Structural Equations
 
Sem with amos ii
Sem with amos iiSem with amos ii
Sem with amos ii
 
Multiple Linear Regression II and ANOVA I
Multiple Linear Regression II and ANOVA IMultiple Linear Regression II and ANOVA I
Multiple Linear Regression II and ANOVA I
 
Research Methology -Factor Analyses
Research Methology -Factor AnalysesResearch Methology -Factor Analyses
Research Methology -Factor Analyses
 
Confirmatory Factor Analysis
Confirmatory Factor AnalysisConfirmatory Factor Analysis
Confirmatory Factor Analysis
 
Factor Analysis in Research
Factor Analysis in ResearchFactor Analysis in Research
Factor Analysis in Research
 
Structural equation modeling in amos
Structural equation modeling in amosStructural equation modeling in amos
Structural equation modeling in amos
 
SEM
SEMSEM
SEM
 
Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)
Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)
Introduction to Structural Equation Modeling Partial Least Sqaures (SEM-PLS)
 
Analysis of Variance
Analysis of VarianceAnalysis of Variance
Analysis of Variance
 
Cannonical correlation
Cannonical correlationCannonical correlation
Cannonical correlation
 
Multiple Regression Analysis (MRA)
Multiple Regression Analysis (MRA)Multiple Regression Analysis (MRA)
Multiple Regression Analysis (MRA)
 
SEM
SEMSEM
SEM
 
Moderation and Mediation | Dissertation Webinar
Moderation and Mediation | Dissertation WebinarModeration and Mediation | Dissertation Webinar
Moderation and Mediation | Dissertation Webinar
 
Multivariate data analysis
Multivariate data analysisMultivariate data analysis
Multivariate data analysis
 
Manova
ManovaManova
Manova
 
Multivariate Analysis
Multivariate AnalysisMultivariate Analysis
Multivariate Analysis
 
Correlation and partial correlation
Correlation and partial correlationCorrelation and partial correlation
Correlation and partial correlation
 

Similar to Structural Equation Modelling (SEM) Part 1

rzStructural_Equation_Modeling.ppt ok this is AMOS
rzStructural_Equation_Modeling.ppt ok this is AMOSrzStructural_Equation_Modeling.ppt ok this is AMOS
rzStructural_Equation_Modeling.ppt ok this is AMOSbusinessresearchbox
 
Terms for smartPLS.pptx
Terms for smartPLS.pptxTerms for smartPLS.pptx
Terms for smartPLS.pptxkinmengcheng1
 
Psy-524 - lecture - 23 - SEM -123456.ppt
Psy-524 - lecture - 23 - SEM -123456.pptPsy-524 - lecture - 23 - SEM -123456.ppt
Psy-524 - lecture - 23 - SEM -123456.pptyummyrecipes6688
 
Slides sem on pls-complete
Slides sem on pls-completeSlides sem on pls-complete
Slides sem on pls-completeDr Hemant Sharma
 
what is Correlations
what is Correlationswhat is Correlations
what is Correlationsderiliumboy
 
Implementation of SEM Partial Least Square in Analyzing the UTAUT Model
Implementation of SEM Partial Least Square in Analyzing the UTAUT ModelImplementation of SEM Partial Least Square in Analyzing the UTAUT Model
Implementation of SEM Partial Least Square in Analyzing the UTAUT ModelAJHSSR Journal
 
Factor Analysis - Statistics
Factor Analysis - StatisticsFactor Analysis - Statistics
Factor Analysis - StatisticsThiyagu K
 
Mba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendixMba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendixStephen Ong
 
Multivariate Variate Techniques
Multivariate Variate TechniquesMultivariate Variate Techniques
Multivariate Variate TechniquesDr. Keerti Jain
 
Introduction to data analysis
Introduction to data analysisIntroduction to data analysis
Introduction to data analysisRajaKrishnan M
 
Econometrcis-Multivariate Time Series Analysis.pptx
Econometrcis-Multivariate Time Series Analysis.pptxEconometrcis-Multivariate Time Series Analysis.pptx
Econometrcis-Multivariate Time Series Analysis.pptxjbhandari1
 
Econometric model ing
Econometric model ingEconometric model ing
Econometric model ingMatt Grant
 

Similar to Structural Equation Modelling (SEM) Part 1 (20)

rzStructural_Equation_Modeling.ppt ok this is AMOS
rzStructural_Equation_Modeling.ppt ok this is AMOSrzStructural_Equation_Modeling.ppt ok this is AMOS
rzStructural_Equation_Modeling.ppt ok this is AMOS
 
Terms for smartPLS.pptx
Terms for smartPLS.pptxTerms for smartPLS.pptx
Terms for smartPLS.pptx
 
Psy-524 - lecture - 23 - SEM -123456.ppt
Psy-524 - lecture - 23 - SEM -123456.pptPsy-524 - lecture - 23 - SEM -123456.ppt
Psy-524 - lecture - 23 - SEM -123456.ppt
 
Slides sem on pls-complete
Slides sem on pls-completeSlides sem on pls-complete
Slides sem on pls-complete
 
Lei&wu
Lei&wuLei&wu
Lei&wu
 
Regression
RegressionRegression
Regression
 
what is Correlations
what is Correlationswhat is Correlations
what is Correlations
 
Implementation of SEM Partial Least Square in Analyzing the UTAUT Model
Implementation of SEM Partial Least Square in Analyzing the UTAUT ModelImplementation of SEM Partial Least Square in Analyzing the UTAUT Model
Implementation of SEM Partial Least Square in Analyzing the UTAUT Model
 
Unit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdfUnit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdf
 
Unit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdfUnit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdf
 
Unit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdfUnit-3 Data Analytics.pdf
Unit-3 Data Analytics.pdf
 
12
1212
12
 
Factor Analysis - Statistics
Factor Analysis - StatisticsFactor Analysis - Statistics
Factor Analysis - Statistics
 
Mba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendixMba2216 week 11 data analysis part 03 appendix
Mba2216 week 11 data analysis part 03 appendix
 
Multivariate Variate Techniques
Multivariate Variate TechniquesMultivariate Variate Techniques
Multivariate Variate Techniques
 
Panel Data Models
Panel Data ModelsPanel Data Models
Panel Data Models
 
Introduction to data analysis
Introduction to data analysisIntroduction to data analysis
Introduction to data analysis
 
Econometrcis-Multivariate Time Series Analysis.pptx
Econometrcis-Multivariate Time Series Analysis.pptxEconometrcis-Multivariate Time Series Analysis.pptx
Econometrcis-Multivariate Time Series Analysis.pptx
 
ders 7.1 VAR.pptx
ders 7.1 VAR.pptxders 7.1 VAR.pptx
ders 7.1 VAR.pptx
 
Econometric model ing
Econometric model ingEconometric model ing
Econometric model ing
 

More from COSTARCH Analytical Consulting (P) Ltd. (12)

Hospitality Analytics: Learn More About Your Customers
Hospitality Analytics: Learn More About Your CustomersHospitality Analytics: Learn More About Your Customers
Hospitality Analytics: Learn More About Your Customers
 
Dedh Ishqia: Social Sentiments
Dedh Ishqia: Social SentimentsDedh Ishqia: Social Sentiments
Dedh Ishqia: Social Sentiments
 
Karle Pyaar Karle: Social Sentiments
Karle Pyaar Karle: Social SentimentsKarle Pyaar Karle: Social Sentiments
Karle Pyaar Karle: Social Sentiments
 
Logistic Regression Analysis
Logistic Regression AnalysisLogistic Regression Analysis
Logistic Regression Analysis
 
Student's T-Test
Student's T-TestStudent's T-Test
Student's T-Test
 
Dyadic Data Analysis
Dyadic Data AnalysisDyadic Data Analysis
Dyadic Data Analysis
 
Sexiest of the Sexiest Job Profile: Sports Analyst
Sexiest of the Sexiest Job Profile: Sports AnalystSexiest of the Sexiest Job Profile: Sports Analyst
Sexiest of the Sexiest Job Profile: Sports Analyst
 
Functional Data Analysis
Functional Data AnalysisFunctional Data Analysis
Functional Data Analysis
 
Within and Between Analysis (WABA).
Within and Between Analysis (WABA).Within and Between Analysis (WABA).
Within and Between Analysis (WABA).
 
Digital Marketing
Digital MarketingDigital Marketing
Digital Marketing
 
Data mining and its applications!
Data mining and its applications!Data mining and its applications!
Data mining and its applications!
 
Approaches to the_analysis_of_survey_data
Approaches to the_analysis_of_survey_dataApproaches to the_analysis_of_survey_data
Approaches to the_analysis_of_survey_data
 

Recently uploaded

ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfVanessa Camilleri
 
MS4 level being good citizen -imperative- (1) (1).pdf
MS4 level   being good citizen -imperative- (1) (1).pdfMS4 level   being good citizen -imperative- (1) (1).pdf
MS4 level being good citizen -imperative- (1) (1).pdfMr Bounab Samir
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesVijayaLaxmi84
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfChristalin Nelson
 
ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6Vanessa Camilleri
 
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxBIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxSayali Powar
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptxmary850239
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfPatidar M
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management systemChristalin Nelson
 
Q-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITWQ-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITWQuiz Club NITW
 
Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17Celine George
 
Using Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea DevelopmentUsing Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea Developmentchesterberbo7
 
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptxDIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptxMichelleTuguinay1
 
Textual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSTextual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSMae Pangan
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptxmary850239
 
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnvESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnvRicaMaeCastro1
 
ARTERIAL BLOOD GAS ANALYSIS........pptx
ARTERIAL BLOOD  GAS ANALYSIS........pptxARTERIAL BLOOD  GAS ANALYSIS........pptx
ARTERIAL BLOOD GAS ANALYSIS........pptxAneriPatwari
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxlancelewisportillo
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxkarenfajardo43
 

Recently uploaded (20)

ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdf
 
MS4 level being good citizen -imperative- (1) (1).pdf
MS4 level   being good citizen -imperative- (1) (1).pdfMS4 level   being good citizen -imperative- (1) (1).pdf
MS4 level being good citizen -imperative- (1) (1).pdf
 
prashanth updated resume 2024 for Teaching Profession
prashanth updated resume 2024 for Teaching Professionprashanth updated resume 2024 for Teaching Profession
prashanth updated resume 2024 for Teaching Profession
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their uses
 
Indexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdfIndexing Structures in Database Management system.pdf
Indexing Structures in Database Management system.pdf
 
ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6
 
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxBIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
 
4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx4.16.24 21st Century Movements for Black Lives.pptx
4.16.24 21st Century Movements for Black Lives.pptx
 
Active Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdfActive Learning Strategies (in short ALS).pdf
Active Learning Strategies (in short ALS).pdf
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management system
 
Q-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITWQ-Factor General Quiz-7th April 2024, Quiz Club NITW
Q-Factor General Quiz-7th April 2024, Quiz Club NITW
 
Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17Tree View Decoration Attribute in the Odoo 17
Tree View Decoration Attribute in the Odoo 17
 
Using Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea DevelopmentUsing Grammatical Signals Suitable to Patterns of Idea Development
Using Grammatical Signals Suitable to Patterns of Idea Development
 
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptxDIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
DIFFERENT BASKETRY IN THE PHILIPPINES PPT.pptx
 
Textual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHSTextual Evidence in Reading and Writing of SHS
Textual Evidence in Reading and Writing of SHS
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx
 
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnvESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
ESP 4-EDITED.pdfmmcncncncmcmmnmnmncnmncmnnjvnnv
 
ARTERIAL BLOOD GAS ANALYSIS........pptx
ARTERIAL BLOOD  GAS ANALYSIS........pptxARTERIAL BLOOD  GAS ANALYSIS........pptx
ARTERIAL BLOOD GAS ANALYSIS........pptx
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
 

Structural Equation Modelling (SEM) Part 1

  • 2. What is Structural Equation Modelling? • SEM is a general statistical modelling technique used to establish relationship among variables. • SEM is a confirmatory data analysis technique, i.e.  it tests models that are conceptually derived, beforehand  it tests if the theory fits the data • SEM can be thought of as a combination of factor analysis and multiple regression  it can simultaneously test measurement and structural relationships • SEM is a family of related procedures. It is alternately defined by the following terms  Path Analysis, Path Modelling, Causal Modelling, Analysis of Covariance Structures, Latent Variable Analysis, Linear Structural Relations
  • 3. Covariance: At the Heart of SEM • Covariance is a measure of how much two random variables change together. Alternately, it can be defined as the strength of association between the two variables and their variabilities. 𝑛 𝑖=1(𝑋 𝑖 − 𝑋)(𝑌 𝑖 − 𝑌) 𝑁−1 OR 𝑐𝑜𝑣 𝑥𝑦 = 𝑟 𝑥𝑦 𝑆𝐷 𝑥 𝑆𝐷 𝑦 • The basic statistic of SEM  Understanding patterns of correlations among a set of variables  Explain as much of their variance as possible with the model specified
  • 4. Logic of SEM • Every theory (model) implies a set of correlations  And why variables are correlated • Necessary (but insufficient) condition for the validity of the theory is that it should be able to reproduce the correlations that are actually observed  i.e., the implied covariance matrix should = the actual covariance matrix
  • 5. Why SEM over Regression? • Regression allows for only a single dependent variable, whereas SEM allows for multiple dependent variables. • SEM allows for variables to correlate, whereas regression adjusts for other variables in the model. • Regression assumes perfect measurement, whereas SEM accounts for measurement error.
  • 6. USES OF SEM • Theory testing  Strength of prediction/association in models with multiple DVs  Model fit • Mediation/tests of indirect effects • Group differences  Multiple-sample analysis • Longitudinal models • Multilevel nested models
  • 7. Looking for Online SEM Training? Contact us: info@costarch.com Visit: http://tinyurl.com/costarch-sem www.costarch.com