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WORKING PAPER
Beyond Ordinary Logit: Taking Time Seriously in Binary Time-Series--Cross-Section Models
Beck, Nathaniel
Katz, Jonathan
Tucker, Richard
Abstract
Researchers typically analyze time-series--cross-section data with a
binary dependent variable (BTSCS) using ordinary logit or probit.
However, BTSCS observations are likely to violate the independence
assumption of the ordinary logit or probit statistical model. It is
well known that if the observations are temporally related that the
results of an ordinary logit or probit analysis may be misleading. In
this paper, we provide a simple diagnostic for temporal dependence and
a simple remedy. Our remedy is based on the idea that
BTSCS data is identical to grouped duration data. This remedy does
not require the BTSCS analyst to acquire any further methodological
skills and it can be easily implemented in any standard
statistical software package. While our approach is suitable for any
type of BTSCS data, we provide examples and applications from the
field of International Relations, where BTSCS data is frequently used.
We use our methodology to re-assess Oneal and Russett's (1997) findings
regarding the relationship between economic interdependence,
democracy, and peace. Our analyses show that 1) their finding that
economic interdependence is associated with peace is an artifact of
their failure to account for temporal dependence and 2)
their finding that democracy inhibits conflict is upheld even taking
duration dependence into account.
Keywords
binary time-series--cross-section data complementary log-log cubic spline democratic peace economic interdependence grouped duration models logit/probit temporal dependence war
File
Uploaded
08-22-1997
Document ID Number
404
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