The Dictionary of Human Geography

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new norms into the international system and
thereby added a further dimension to multilat-
eralism (see alsocosmopolitanism). Argu-
ments about humanitarian intervention in the
face of state failure and environmental disas-
ters have suggested a more activist stance for
international institutions in the face of human
suffering, and in the process challenged the
UN norm of non-intervention. Advocates
insist that all states have a responsibility to
protect their citizens and that, in extreme
cases when they obviously fail to do so, inter-
vention from abroad is justified (International
Commission on Intervention and State
Sovereignty, 2001): a claim that is controver-
sial precisely because it overrides the territorial
integrity principle of the UN.
Simultaneously, in the aftermath of 11 Sep-
tember 2001, the Bush administration in the
USA frequently preferred to act alone in a
unilateral manner, and refused multilateral
co-operation on such matters as the Inter-
national Criminal Court and the Kyoto Proto-
col on climate change. This stance makes
multilateral action more difficult on many
issues, and yet, given the increasing number
of international agreements on numerous mat-
ters, multilateralism as a foreign policy ap-
proach has now become a widely accepted
and routine diplomatic practice. But in the
process territorial sovereignty has become a
more fluid principle ininternational rela-
tions(Agnew, 2005b). sd

Suggested reading
Ruggie (1993).

multi-level models quantitative methods
that can analyse research problems with a
complex data structure. In a hierarchical
structure, the lower-level unit is nested in
one and only one unit – for example, people
in neighbourhoods in a two-level structure,
and people in neighbourhoods inregionsin
a three-level structure. Other examples are
repeated measures of individuals as in a panel
study (cf.longitudinal data analysis) and a
multivariate design when there is more than
one response variable, so that it is possible to
model several aspects of individual behaviour
simultaneously. There are two types of non-
hierarchical structure. In a cross-classified de-
sign, lower units may nest within more than
one set of higher-level units, so that pupil per-
formance may be affected by individual,
school and neighbourhood characteristics (cf.
neighbourhood effect). Both schools and
neighbourhoods are higher-level units, but

they are not nested within each other. The
remaining type is a multiple membership
model in which lower-level units are affected
by more than one higher-level unit, so that
people’s voting behaviour may be affected by
the different households and neighbour-
hoods they have been members of, with a
weight proportional to the relative time spent
in each. It is possible to combine these struc-
tures in a rich fashion, so that spatialmodels
(e.g.geographically weighted regression)
can have a hierarchical structure in which in-
dividuals are affected by the area they live in,
and a multiple membership relation by which
they are affected by spillover effects from
nearby neighbourhoods (seeecometrics).
Such models can handle continuous and
categorical data responses and variables
and, indeed, interactions between predictor
variables at each level of the structure (cf.
measurement). In terms of specification, in
addition to the usualregressioncoefficients
that estimate the mean (or fixed) relationship
across all structures, there is considerable de-
velopment of the random stochastic part of the
model (seestochastic process) so that it is
possible to separate between-individual from
between-neighbourhood variation and, in-
deed, to allow a variable to have a differential
effect on the outcome in different neighbour-
hoods. Because of this specification, these are
also known as random coefficient or mixed
models (fixed and random).
Multi-level models are increasingly being
used in social science research, as they have a
number of advantages. Technically, they can
model complex data dependencies, including
spatial and temporalcorrelation, and there-
by give correct standard errors for the fixed
estimates; this is particularly important for
variables measured at the higher level. They
also allow explicit modelling of heterosce-
dasticity at any level of the model. Substan-
tively, by modelling simultaneously at the
micro- and macro-levels, they overcome the
atomistic fallacy of modelling individuals and
ignoring context, as well as theecological
fallacy,of not modelling at the individual
level. Most importantly, they can incorporate
an element of context so that there does not
have to be a single relationship fitted for all
times and places, so that the class effects on
individual voting can be allowed to vary from
place to place (Jones, Johnston and Pattie,
1992). kj

Suggested reading
Jones (1991); Jones and Duncan (1998).

Gregory / The Dictionary of Human Geography 9781405132879_4_M Final Proof page 483 1.4.2009 3:19pm

MULTI-LEVEL MODELS
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