The Generalization in the Generalized Event Count Model, with Comments on Achen, Amato, and Londregan
Author(s) -
Gary King,
Curtis S. Signorino
Publication year - 1996
Publication title -
political analysis
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.953
H-Index - 69
eISSN - 1476-4989
pISSN - 1047-1987
DOI - 10.1093/pan/6.1.225
Subject(s) - analogy , generalization , event (particle physics) , computer science , econometrics , rendering (computer graphics) , statistics , mathematics , artificial intelligence , epistemology , mathematical analysis , philosophy , physics , quantum mechanics
We use an analogy with the normal distribution and linear regression to demonstrate the need for the Generalize Event Count (GEC) model. We then show how the GEC provides a unified framework within which to understand a diversity of distributions used to model event counts, and how to express the model in one simple equation. Finally, we address the points made by Christopher Achen, Timothy Amato, and John Londregan. Amato's and Londregan's arguments are consistent with ours and provide additional interesting information and explanations. Unfortunately, the foundation on which Achen built his paper turns out to be incorrect, rendering all his novel claims about the GEC false (or in some cases irrelevant).
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