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Theory and Evidence in International Conflict: A Response to de Marchi, Gelpi, and Grynaviski

Published online by Cambridge University Press:  21 June 2004

NATHANIEL BECK
Affiliation:
New York University
GARY KING
Affiliation:
Harvard University
LANGCHE ZENG
Affiliation:
George Washington University

Abstract

In this article, we show that de Marchi, Gelpi, and Grynaviski's substantive analyses are fully consistent with our prior theoretical conjecture about international conflict. We note that they also agree with our main methodological point that out-of-sample forecasting performance should be a primary standard used to evaluate international conflict studies. However, we demonstrate that all other methodological conclusions drawn by de Marchi, Gelpi, and Gryanaviski are false. For example, by using the same evaluative criterion for both models, it is easy to see that their claim that properly specified logit models outperform neural network models is incorrect. Finally, we show that flexible neural network models are able to identify important empirical relationships between democracy and conflict that the logit model excludes a priori; this should not be surprising since the logit model is merely a limiting special case of the neural network model.

Type
FORUM
Copyright
© 2004 by the American Political Science Association

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