Designing longitudinal surveys to represent both longitudinal and cross-sectional populations
Présenté par Peter Lynn (Institute for Social & Economic Research, University of Essex, UK) - Discutant : Nicolas Razafindratsima (INED)
The presentation will discuss definitions of target populations
for longitudinal surveys and sample designs to achieve
representation of those populations. The primary aim of
longitudinal surveys is to enable study micro-level change of one
kind or another. By definition, such change takes place over time.
Therefore a sample of such changes, or of units experiencing such
changes, must represent a population defined in time. A fundamental
question for longitudinal studies is therefore how to incorporate
the time dimension into the population definition. A number of
options exist, each with different implications for analysis and
for survey design and implementation. We will discuss the merits
and implications of alternative designs. Some, but not all, of
these alternative designs require the survey sample to retain
cross-sectional representativeness over time. But even in the
absence of such a requirement, there is often pressure for a
longitudinal survey to be able to provide cross-sectional estimates
in addition to the core longitudinal analysis. Thus, a secondary
challenge for longitudinal surveys is to maintain cross-sectional
sample representativeness in the context of a dynamic population.
Key considerations include the need to correctly identify members
of the initial sample who leave the population and the need
periodically to add appropriate samples of people who join the
population. The samples to be added should have known selection
probabilities and should strike an appropriate balance between
precision of estimation and cost-efficiency of fieldwork.