Instructor: Elena Erosheva C 14C, Padelford Hall (CSSS) elena at stat.washington.edu |
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Understanding
changes, including those that result from targeted interventions, is central
to much empirical research in the social and behavioral sciences. The goal of
this seminar is to explore how research questions about change (and event
occurrences) can be addressed with longitudinal data analysis. During the
first half of the seminar, we will follow Part I of Singer and Willett’s Applied Longitudinal Data Analysis to
learn why study change, what are the minimum data requirements for
investigating change over time, what techniques are available for exploratory
analysis specific to longitudinal data, and what statistical models are
appropriate. We will focus on fundamental models for longitudinal analysis
that have been variously known as individual growth models, random
coefficient models, growth curve models, multilevel models, mixed effects
models and hierarchical linear models. During
the second part of the course, we will discuss longitudinal data analysis
topics that will be selected by the seminar participants. These include but are not limited to: ·
Modeling
discontinuous and nonlinear change over time. ·
Reconciling
terminology across mixed effects, hierarchical and multilevel modeling
traditions. ·
Mixture
models for life course data (i.e., variations on growth mixture and
group-based trajectory models). ·
Assessing
effectiveness of interventions. ·
Dynamic
treatment regimes. ·
Latent
variable models for change. ·
Age,
period, and cohort effects. ·
Accelerated
longitudinal designs. ·
Power
analysis for longitudinal data. ·
Dealing
with missing data in longitudinal analysis. |
Applied Longitudinal Data Analysis: Modeling Change and Event Occurrence (2003) Singer, J.D. and Willett, J. B. |
· To investigate how research questions about change can be addressed with longitudinal data. · To study multilevel, growth curve and hierarchical modeling in application to longitudinal data. · To provide an open forum for scholarly exchange on the longitudinal data analysis issues of interest to the class participants. |
The textbook
has a companion web site that presents data sets and computer code in
a wide variety of software packages that include R, Stata,
SPSS and Mplus: http://www.ats.ucla.edu/stat/examples/alda.htm Participants will be free to use a package of their choice for presentations (literature review presentations are not required to include a computing code component). |
SOC
504-505-506 or equivalent. Solid knowledge of linear regression. |
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If
you would like to request academic accommodations due to a disability, please
contact Disabled Student Services, 448 Schmitz, 543-8924 (V/TTY). If
you have a letter from Disabled Student Services indicating you have a
disability that requires academic accommodations, please present the letter
to me so we can discuss the accommodations you might need for this class. |