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WORKING PAPER
Time Series Models for Discrete Data: solutions to a problem with quantitative studies of international conflict
Jackman, Simon
Abstract
Discrete dependent variables with a time series structure occupy
something of a statistical limbo for even well-trained political
scientists, prompting awkward methodological compromises and dubious
substantive conclusions. An important example is the use of binary
response models in the analysis of longitudinal data on
international conflict: researchers understand that the data are not
independent, but lack any way to model serial dependence in the
data. Here I survey methods for modeling categorical data with a
serial structure. I consider a number of simple models that enjoy
frequent use outside of political science (originating in
biostatistics), as well as a logit model with an autoregressive
error structure (the latter model is fit via Bayesian simulation
using Markov chain Monte Carlo methods). I illustrate these models
in the context of international conflict data. Like other
re-analyses of these data addressing the issue of serial dependence,
citeaffixed{beck:btscs}{e.g.,}, I find economic interdependence
does not lessen the chances of international conflict. Other
findings include a number of interesting asymmetries in the effects
of covariates on transitions from peace to war (and vice versa).
Any reasonable model of international conflict should take into
account the high levels of persistence in the data; the models I
present here suggest a number of methods for doing so.
Keywords
categorical time series democratic peace dependent binary data international conflict latent autoregressive process Markov Chain Monte Carlo Markov regression models
File
Uploaded
07-21-1998
Document ID Number
308
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