Partial least square structural equation modeling of Likert scale on smartPLS 4

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  • Опубликовано: 11 сен 2024
  • Prediction
    Theory building
    Latent variables
    Observed variables
    Measurement Model: The part of the PLS-SEM that deals with the relationship between latent variables and their indicators. It involves assessing reliability and validity (e.g., Cronbach’s alpha, Composite Reliability, Average Variance Extracted).
    Structural Model: Represents the hypothesized relationships between latent variables. It is assessed using path coefficients, R-squared values, and effect sizes.
    Bootstrapping: A non-parametric resampling procedure used to assess the reliability of the path coefficients and other estimates in the model.
    Path Coefficients: Indicate the strength and significance of the relationships between latent variables in the structural model.
    R-squared (R²): A measure of the amount of variance in a dependent variable explained by independent variables in the model.
    Mediation Analysis: Investigates whether a third variable (mediator) carries the effect of an independent variable to a dependent variable.
    Formative vs. Reflective Models: Reflective Models: Manifest variables are reflections of the latent construct. Formative Models: Manifest variables form or contribute to the latent construct.
    Goodness of Fit: In PLS-SEM, traditional goodness-of-fit measures are not typically used. Instead, model evaluation focuses on the predictive capabilities and relevance of the model (e.g., predictive relevance Q²).
    Cross-Validated Redundancy: A measure used in PLS-SEM to assess the predictive relevance of the model for reflective endogenous constructs.
    Importance-Performance Map Analysis (IPMA): Extends PLS-SEM by adding a dimension of importance to the performance values of latent variables.
    📌 For assistance with data analysis, kindly contact me via this email: datanalysis93@gmail.com or WhatsApp: +212619398603 / wa.link/l6jvny / t.me/DrBenhima
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    🟨 Get Your Research Model Template for Research Proposals using Surveys! 📊🔬
    👉📄✏: ✔ redev.gumroad....
    Likert scale questionnaire design, validation, and analysis based on the Literature: TAM, UTAUT and other models
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    ✨Social media:
    Email: datanalysis93@gmail.com
    WhatsApp: +212619398603 / wa.link/l6jvny
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    📚🔍 Get Your Research Model Template for Reliability and Validity! 📊🔬
    👉 redev.gumroad....
    1️⃣ Literature review with references
    2️⃣ TAM, ETAM, UTAUT, FoMO templates
    3️⃣ Research variables: Independent, dependent, moderator, mediator, control
    4️⃣ Hypothesis development
    5️⃣ Research procedures flowchart
    6️⃣ Validity and reliability measures
    7️⃣ Preliminary analysis: collinearity, common method bias
    8️⃣ Confirmatory factor analysis: Chi-square, CFI, RMSEA, GFI with cutoffs
    9️⃣ Structural Equation Modelling (SEM)
    🔢 Measurement model: Factor loadings, AVE, HTMT, Cronbach’s Alpha (α) reliability
    📈 Structural model: Path coefficients (beta) with p-values
    📑 References and cut-off values
    📒 Appendix: Likert scales questionnaire + Google Forms

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