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Final Report to the EPA on Multilevel Models for Generalization
Jan de Leeuw, UCLA Department of Statistics
Richard Berk, UCLA Department of Statistics
ABSTRACT: Multilevel statistical models are characterized by analyses undertaken simultaneously
at different levels of aggregation or spatial/temporal scales.
For example, one might study several reaches in a stream for a number of
different research sites. Or one might study several transects in each of
several forests. The basic idea in multilevel models is to have a regression
equation characterizing relationships at the smaller, or micro, level and
then have one or more of the regression coefficients at the micro level a
function of predictors at the macro level. At the micro level, for instance,
taxa richness may be a function of stream velocity (and other things). Then
at the macro level, the regression coefficient linking stream velocity to taxa
richness may be a function of proximity of the stream to land used for agriculture.
Thus, one can address how the relationship between stream velocity
and taxa richness varies (or not) in different locations, here with locale
characterized by proximity to land use for agriculture. That is, one can learn
when to generalize over sites and when not to generalize over sites. One can
also learn how different temporal and/or spatial scales are linked.
SUGGESTED CITATION: Jan de Leeuw and Richard Berk,
"Final Report to the EPA on Multilevel Models for Generalization"
(January 1, 2003).
Department of Statistics, UCLA.
Department of Statistics Papers.
Paper 2003010118.
http://repositories.cdlib.org/uclastat/papers/2003010118
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