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WORKING PAPER
Pattern Recognition of International Crises using Hidden Markov Models
Schrodt, Philip A.
Abstract
Event data are one of the most widely used indicators in quantitative
international relations research. To date, most of the models using event data
have constructed numerical indicators based on the characteristics of the events
measured in isolation and then aggregated. An alternative approach is to use
quantitative pattern recognition techniques to compare an existing sequence of
behaviors to a set of similar historical cases. This has much in common with
human reasoning by historical analogy while providing the advantages of
systematic and replicable analysis possible using machine-coded event data and
statistical models.
This chapter uses "hidden Markov models" Ñ- a recently developed sequence-
comparison technique widely used in computational speech recognition Ñ- to
measure similarities among international crises. The models are first estimated
using the Behavioral Correlates of War data set of historical crises, then
applied to an event data set covering political behavior in the contemporary
Middle East for the period April 1979 through February 1997.
A split-sample test of the hidden Markov models perfectly differentiates crises
involving war from those not involving war in the cases used to estimate the
models. The models also provide a high level of discrimination in a set of
test cases not used in the estimated, and most of the erroneously-classified
cases have plausible distinguishing features. The difference between the war
and nonwar models also correlates significantly with a scaled measure of
conflict in the contemporary Middle East. This suggests that hidden Markov
models could be used to develop conflict measures based on event similarities
to historical conflicts rather than on aggregated event scores.
Keywords
BCOW early warning event data hidden Markov models international crisis Middle East sequence analysis WEIS
File
Uploaded
06-30-1997
Document ID Number
435
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