SlideShare une entreprise Scribd logo
1  sur  13
Télécharger pour lire hors ligne
Structural Equation Modelling
(SEM)
An Introduction (Part 3)
CFA Models: Important Steps
• Model Specification
• Model Identification
• Model Estimation
• Assessment of Model Fit
• Model Re-specification
Step 1: Model Specification
• SEM is a confirmatory technique and it
Needs a model that delineates the relationships among variables
Requires a model that is based on theory (Bollen & Long, 1993)
Step 1: Model Specification
• Exogenous variables
• Variables whose causes are unknown and/or not included in the
model
• Variables that explain other variables in the model (i.e. independent
variables (IVs))
• Endogenous variables
• Variables that serve as DVs in a model
• May also serve as IVs
Step 2: Model Identification
• Model must be specified so that there are enough pieces of information to give unique
estimates for all parameters
• SEM involves estimating unknown parameters (e.g., factor loadings, path coefficients)
based on known parameters (i.e., covariances)

• Identification involves whether a unique solution for a model can be obtained
• Requires more known vs. unknown parameters
• Identification is a property of the model, not the data
 Does not depend on sample size
 i.e., if a model is not identified, it remains so regardless of whether the sample size is
100, 1000, 10,000, etc.
Step 3: Model Estimation
• Over-identified models have infinite # of solutions.
• Parameters need to be estimated based on a mathematical criterion.
• Goal is to minimize differences between the observed and implied covariance
matrices.
• Process begins with initial estimates- start values.
• Is an iterative process – will stop when a minimum fitting criterion is
reached.
 When the difference between the observed and implied covariance
matrices are minimized
Step 4: Assessing Model Fit
• Absolute fit
• Relative (Comparative) fit
Common Absolute Fit Indices
• Model X2*
• Non-significant X2 (p>0.05) indicates good fit
• Root Mean Squared Error of Approximation (RMSEA)
• Acceptable fit < 0.10; good fit < 0.05
• Goodness of Fit (GFI)
• > 0.90 is considered good fit
Common Relative Fit Indices
• Normed Fit Index (NFI)
• Incremental Fit Index (IFI)
• Comparative Fit Index (CFI)

• All range 0-1
• Generally, >0.90 is considered good
SEM Model Fit: Rules of Thumb
• Will often see/hear reference to 0.90 or above indicating acceptable model
fit, for indices such as GFI, CFI, NFI, etc.
 Typically cite Bentler & Bonett (1980) for this assertation
• Basis for this is rather thin (Lance et al., 2006)
• What Bentler and Bonett (1980) actually said:
 “experience will be required to establish values of the indices that are
associated with various degrees of meaningfulness of results. In our
experience, models with overall fit indices of less than 0.90 can usually
be improved substantially” (Bentler & Bonett, 1980, p. 600).
Step 5: Model Re-specification/Modification
• Goal is to improve model fit – changing the model to fit the data
• Caveats
 Modifications are post hoc & capitalize on chance!
• General guidelines
 Must be theoretically consistent
 Must be replicated with new data
Evaluating Your Model
• Theoretical/clinical meaning
 Guiding principle
• Residuals and implied correlations
 Discrepancies between sample covariance matrix and those implied
by the model
• Tests of path coefficients
 Direction, magnitude
• Absence of numerical problems
 Direction and magnitude of residuals
 Pattern of standardized residuals (z-scores)
Looking for Online SEM
Training?
Contact us: info@costarch.com

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

Contenu connexe

Tendances

Factor analysis
Factor analysisFactor analysis
Factor analysis
saba khan
 
Linear correlation
Linear correlationLinear correlation
Linear correlation
Tech_MX
 
Confirmatory Factor Analysis Presented by Mahfoudh Mgammal
Confirmatory Factor Analysis Presented by Mahfoudh MgammalConfirmatory Factor Analysis Presented by Mahfoudh Mgammal
Confirmatory Factor Analysis Presented by Mahfoudh Mgammal
Dr. Mahfoudh Hussein Mgammal
 
Estimators for structural equation models of Likert scale data
Estimators for structural equation models of Likert scale dataEstimators for structural equation models of Likert scale data
Estimators for structural equation models of Likert scale data
Nick Stauner
 
Factor Analysis in Research
Factor Analysis in ResearchFactor Analysis in Research
Factor Analysis in Research
Qasim Raza
 

Tendances (20)

Basics of Structural Equation Modeling
Basics of Structural Equation ModelingBasics of Structural Equation Modeling
Basics of Structural Equation Modeling
 
Structural equation-models-introduction-kimmo-vehkalahti-2013
Structural equation-models-introduction-kimmo-vehkalahti-2013Structural equation-models-introduction-kimmo-vehkalahti-2013
Structural equation-models-introduction-kimmo-vehkalahti-2013
 
Confirmatory Factor Analysis
Confirmatory Factor AnalysisConfirmatory Factor Analysis
Confirmatory Factor Analysis
 
Key ideas, terms and concepts in SEM
Key ideas, terms and concepts in SEMKey ideas, terms and concepts in SEM
Key ideas, terms and concepts in SEM
 
Exploratory factor analysis
Exploratory factor analysisExploratory factor analysis
Exploratory factor analysis
 
Sem lecture
Sem lectureSem lecture
Sem lecture
 
Sem with amos ii
Sem with amos iiSem with amos ii
Sem with amos ii
 
Factor analysis
Factor analysisFactor analysis
Factor analysis
 
Factor analysis
Factor analysis Factor analysis
Factor analysis
 
Slides sem on pls-complete
Slides sem on pls-completeSlides sem on pls-complete
Slides sem on pls-complete
 
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)
 
Linear correlation
Linear correlationLinear correlation
Linear correlation
 
Confirmatory Factor Analysis Presented by Mahfoudh Mgammal
Confirmatory Factor Analysis Presented by Mahfoudh MgammalConfirmatory Factor Analysis Presented by Mahfoudh Mgammal
Confirmatory Factor Analysis Presented by Mahfoudh Mgammal
 
Estimators for structural equation models of Likert scale data
Estimators for structural equation models of Likert scale dataEstimators for structural equation models of Likert scale data
Estimators for structural equation models of Likert scale data
 
Linear regression
Linear regression Linear regression
Linear regression
 
SmartPLS presentation
SmartPLS presentationSmartPLS presentation
SmartPLS presentation
 
Multicollinearity
MulticollinearityMulticollinearity
Multicollinearity
 
Factor Analysis in Research
Factor Analysis in ResearchFactor Analysis in Research
Factor Analysis in Research
 
Factor analysis
Factor analysisFactor analysis
Factor analysis
 

Similaire à Structural Equation Modelling (SEM) Part 3

LPP application and problem formulation
LPP application and problem formulationLPP application and problem formulation
LPP application and problem formulation
Karishma Chaudhary
 

Similaire à Structural Equation Modelling (SEM) Part 3 (20)

FE3.ppt
FE3.pptFE3.ppt
FE3.ppt
 
LPP application and problem formulation
LPP application and problem formulationLPP application and problem formulation
LPP application and problem formulation
 
validation and verification part 2.pptx
validation and verification part 2.pptxvalidation and verification part 2.pptx
validation and verification part 2.pptx
 
Evaluating tests
Evaluating testsEvaluating tests
Evaluating tests
 
'A critique of testing' UK TMF forum January 2015
'A critique of testing' UK TMF forum January 2015 'A critique of testing' UK TMF forum January 2015
'A critique of testing' UK TMF forum January 2015
 
Model validation
Model validationModel validation
Model validation
 
Building theoretical models using structured equation modeling
Building theoretical models using structured equation modelingBuilding theoretical models using structured equation modeling
Building theoretical models using structured equation modeling
 
From measurement model to structural model
From  measurement model to structural modelFrom  measurement model to structural model
From measurement model to structural model
 
Specification Errors | Eonomics
Specification Errors | EonomicsSpecification Errors | Eonomics
Specification Errors | Eonomics
 
Implementing decision rule made simple
Implementing decision rule made simpleImplementing decision rule made simple
Implementing decision rule made simple
 
Testing begins with requirements - Presentation to BCS SIGiST jun15
Testing begins with requirements - Presentation to BCS SIGiST jun15Testing begins with requirements - Presentation to BCS SIGiST jun15
Testing begins with requirements - Presentation to BCS SIGiST jun15
 
QT final.pptx
QT final.pptxQT final.pptx
QT final.pptx
 
Dowhy: An end-to-end library for causal inference
Dowhy: An end-to-end library for causal inferenceDowhy: An end-to-end library for causal inference
Dowhy: An end-to-end library for causal inference
 
Macroeconomic modelling using Eviews
Macroeconomic modelling using EviewsMacroeconomic modelling using Eviews
Macroeconomic modelling using Eviews
 
TCI in primary care - SEM (2006)
TCI in primary care - SEM (2006)TCI in primary care - SEM (2006)
TCI in primary care - SEM (2006)
 
Macroeconomic modelling
Macroeconomic modellingMacroeconomic modelling
Macroeconomic modelling
 
Feature selection
Feature selectionFeature selection
Feature selection
 
2 statistics, measurement, graphical techniques
2 statistics, measurement, graphical techniques2 statistics, measurement, graphical techniques
2 statistics, measurement, graphical techniques
 
Day 1_ Introduction.pptx
Day 1_ Introduction.pptxDay 1_ Introduction.pptx
Day 1_ Introduction.pptx
 
Software Testing
Software Testing Software Testing
Software Testing
 

Plus de COSTARCH Analytical Consulting (P) Ltd.

Plus de 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
 

Dernier

Gardella_PRCampaignConclusion Pitch Letter
Gardella_PRCampaignConclusion Pitch LetterGardella_PRCampaignConclusion Pitch Letter
Gardella_PRCampaignConclusion Pitch Letter
MateoGardella
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
heathfieldcps1
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
QucHHunhnh
 
Making and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdfMaking and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdf
Chris Hunter
 

Dernier (20)

PROCESS RECORDING FORMAT.docx
PROCESS      RECORDING        FORMAT.docxPROCESS      RECORDING        FORMAT.docx
PROCESS RECORDING FORMAT.docx
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
Introduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The BasicsIntroduction to Nonprofit Accounting: The Basics
Introduction to Nonprofit Accounting: The Basics
 
Unit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptxUnit-V; Pricing (Pharma Marketing Management).pptx
Unit-V; Pricing (Pharma Marketing Management).pptx
 
Gardella_PRCampaignConclusion Pitch Letter
Gardella_PRCampaignConclusion Pitch LetterGardella_PRCampaignConclusion Pitch Letter
Gardella_PRCampaignConclusion Pitch Letter
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..
 
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
 
Holdier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfHoldier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdf
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17How to Give a Domain for a Field in Odoo 17
How to Give a Domain for a Field in Odoo 17
 
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
Key note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdfKey note speaker Neum_Admir Softic_ENG.pdf
Key note speaker Neum_Admir Softic_ENG.pdf
 
Making and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdfMaking and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdf
 
Unit-IV; Professional Sales Representative (PSR).pptx
Unit-IV; Professional Sales Representative (PSR).pptxUnit-IV; Professional Sales Representative (PSR).pptx
Unit-IV; Professional Sales Representative (PSR).pptx
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Class 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfClass 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdf
 
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
 

Structural Equation Modelling (SEM) Part 3

  • 2. CFA Models: Important Steps • Model Specification • Model Identification • Model Estimation • Assessment of Model Fit • Model Re-specification
  • 3. Step 1: Model Specification • SEM is a confirmatory technique and it Needs a model that delineates the relationships among variables Requires a model that is based on theory (Bollen & Long, 1993)
  • 4. Step 1: Model Specification • Exogenous variables • Variables whose causes are unknown and/or not included in the model • Variables that explain other variables in the model (i.e. independent variables (IVs)) • Endogenous variables • Variables that serve as DVs in a model • May also serve as IVs
  • 5. Step 2: Model Identification • Model must be specified so that there are enough pieces of information to give unique estimates for all parameters • SEM involves estimating unknown parameters (e.g., factor loadings, path coefficients) based on known parameters (i.e., covariances) • Identification involves whether a unique solution for a model can be obtained • Requires more known vs. unknown parameters • Identification is a property of the model, not the data  Does not depend on sample size  i.e., if a model is not identified, it remains so regardless of whether the sample size is 100, 1000, 10,000, etc.
  • 6. Step 3: Model Estimation • Over-identified models have infinite # of solutions. • Parameters need to be estimated based on a mathematical criterion. • Goal is to minimize differences between the observed and implied covariance matrices. • Process begins with initial estimates- start values. • Is an iterative process – will stop when a minimum fitting criterion is reached.  When the difference between the observed and implied covariance matrices are minimized
  • 7. Step 4: Assessing Model Fit • Absolute fit • Relative (Comparative) fit
  • 8. Common Absolute Fit Indices • Model X2* • Non-significant X2 (p>0.05) indicates good fit • Root Mean Squared Error of Approximation (RMSEA) • Acceptable fit < 0.10; good fit < 0.05 • Goodness of Fit (GFI) • > 0.90 is considered good fit
  • 9. Common Relative Fit Indices • Normed Fit Index (NFI) • Incremental Fit Index (IFI) • Comparative Fit Index (CFI) • All range 0-1 • Generally, >0.90 is considered good
  • 10. SEM Model Fit: Rules of Thumb • Will often see/hear reference to 0.90 or above indicating acceptable model fit, for indices such as GFI, CFI, NFI, etc.  Typically cite Bentler & Bonett (1980) for this assertation • Basis for this is rather thin (Lance et al., 2006) • What Bentler and Bonett (1980) actually said:  “experience will be required to establish values of the indices that are associated with various degrees of meaningfulness of results. In our experience, models with overall fit indices of less than 0.90 can usually be improved substantially” (Bentler & Bonett, 1980, p. 600).
  • 11. Step 5: Model Re-specification/Modification • Goal is to improve model fit – changing the model to fit the data • Caveats  Modifications are post hoc & capitalize on chance! • General guidelines  Must be theoretically consistent  Must be replicated with new data
  • 12. Evaluating Your Model • Theoretical/clinical meaning  Guiding principle • Residuals and implied correlations  Discrepancies between sample covariance matrix and those implied by the model • Tests of path coefficients  Direction, magnitude • Absence of numerical problems  Direction and magnitude of residuals  Pattern of standardized residuals (z-scores)
  • 13. Looking for Online SEM Training? Contact us: info@costarch.com Visit: http://tinyurl.com/costarch-sem www.costarch.com