Loading Events

« All Events

  • This event has passed.

Mplus: A beginner’s course in SEM

10th September 2018 @ 8:00 am - 16th September 2018 @ 5:00 pm

£790

Organised by CambridgeSEM, Selwyn College, Cambridge
Presenter Dr Gabriela Roman
Date 10/09/2018 – 16/09/2018
Venue Selwyn College, University of Cambridge, Grange Road, Cambridge
Map View in Google Maps  (CB3 9DQ)
Contact Gabriela: [email protected]
Description This 7-day course is a beginner’s course in SEM with Mplus. It is hosted at Selwyn College, University of Cambridge. The first 3 days are focused on cross-sectional data analysis and include: path analysis, factor analysis, multiple-group analysis (including measurement invariance tests) and moderated-mediation. The fourth day is a day of break, where you are encouraged to explore the city and relax. The last 3 days are focused on longitudinal data analysis and include auto-regressive models, longitudinal factor analysis, latent growth models and growth mixture models. You can find further details here: https://mpluscambridge.com/
Level Entry (no or almost no prior knowledge)
Cost £790
Website and registration
Region East of England
Keywords Regression Methods, Linear regression, Logistic regression, Probit regression, Ordinal regression, Longitudinal Data Analysis, Cross-lagged panel models, Growth curve models, Growth mixture models, Latent class growth analysis, Latent Variable Models, Latent class analysis, Factor analysis, Confirmatory factor analysis, Structural equation models
Related publications and presentations Regression Methods
Linear regression
Logistic regression
Probit regression
Ordinal regression
Longitudinal Data Analysis
Cross-lagged panel models
Growth curve models
Growth mixture models
Latent class growth analysis
Latent Variable Models
Latent class analysis
Factor analysis
Confirmatory factor analysis
Structural equation models

Details

Start:
10th September 2018 @ 8:00 am
End:
16th September 2018 @ 5:00 pm
Cost:
£790
Website:
https://mpluscambridge.com/
NINE DTP - a collaborative partnership funded by the ESRC