Pre-Conference Workshops 2022
The PIAAC workshops welcome researchers from different disciplines interested to work or already working with PIAAC data. It is expected that the participants have good empirical knowledge and experience in the respective statistical software. The workshop comprises lectures and practical sessions covering the following elements: (a) Theoretical and methodological input from the lecturers; (b) Opportunity for participants to present their own research or research ideas with PIAAC and/ or PIAAC-L data (optional); (c) Discussion of the questions outlined in the workshop regarding the data used and methods as well as specific feedback from the lecturers.
There will be no participation fees. The workshops will be limited to a maximum of 15 participants and will be conducted virtually. Please send your application with the respective subject "Workshop 2022 - Analyzing PIAAC data with SEM" OR "Workshop 2022 - Analyzing PIAAC data with R" to the PIAAC Research Data Center (fdz-piaac(at)gesis(dot)org) by March 15, 2022.
Workshop: Analyzing PIAAC data with structural equation modeling in Mplus |
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Lecturer: Ronny Scherer (Centre for Educational Measurement at the University of Oslo) Date: March 22-23, 2022 (Time: 4 am – 9 am EST/ Time: 9 am – 2 pm CET) Place: Virtual (Zoom) Content: Structural equation modeling (SEM) represents a statistical approach to disentangle the relationships among latent and/or manifest variables, across groups, over time, and at different analytical levels. The potential of SEM has been recognized in many areas, including educational sciences, sociology, psychology, and business. This workshop provides an introduction to the principles and procedures of basic and more advanced SEM in the context of the international large-scale assessment PIAAC. Specifically, the following topics are covered: (a) Principles of structural equation modeling (model specification, identification, estimation, and evaluation), (b) Measurement models and confirmatory factor analysis, (c) Measurement invariance testing with few and many groups (including multi-group CFA, multilevel CFA, and the alignment method), and (d) Structural regression and indirect effects models (including multi-group and multilevel SEM). Participants can also present their own research or research ideas using PIAAC data and receive feedback on how to improve the analysis (optional). Data: PIAAC Public Use Files Software: SPSS and Mplus Schedule: Agenda (266 kB) Recommended reading: Maehler, D. & Rammstedt, B. (2020). Large-scale cognitive assessment: Analyzing PIAAC data. Series: Methodology of Educational Measurement and Assessment (MEMA). Springer: Cham. https://link.springer.com/book/10.1007/978-3-030-47515-4
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For any questions please contact the RDC PIAAC (fdz-piaac@gesis.org).
Workshop: Analyzing PIAAC data using the R EdSurvey package |
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Dozenten: Paul Bailey1, Ting Zhang1, Saida Mamedova1, Emily Pawlowski1, Emmanuel Sikali2, Michael Lee1, Eric Buehler1, & Sinan Yavuz1 (1American Institutes for Research; 2National Center for Education Statistics) Datum: March 22, 2022 (Time: 10 am – 2 pm EST/ 3 pm – 7 pm CET) Ort: Virtual (Zoom) Abstract: This course will provide an overview of the PIAAC study and guidance in data analysis strategies, including the selection and use of appropriate plausible values, sampling weights, and variance estimation procedures. The course will train participants in the analysis of PIAAC data files using the R package EdSurvey, which was developed specifically to analyze large-scale assessment data with complex psychometric and sampling designs. Participants will learn how to
This course is designed for researchers and policy analysts across various sectors and organizations who are interested in learning how to analyze PIAAC data. Participants should have at least a basic knowledge of R software (e.g., have taken entry-level training in R programming), as well as of statistical techniques, including statistical inference and multiple regression. A working knowledge of plausible values and sampling theory would be helpful but is not required. Participants should bring a computer preloaded with the latest version of the R and RStudio software so that they can practice the analytical techniques covered in the lesson plan. Daten: PIAAC Public Use Files Software: R Agenda: Agenda (145 kB) Literaturempfehlung: Maehler, D. & Rammstedt, B. (2020). Large-scale cognitive assessment: Analyzing PIAAC data. Series: Methodology of Educational Measurement and Assessment (MEMA). Springer: Cham. https://link.springer.com/book/10.1007/978-3-030-47515-4 |