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Back to the Future: Modeling Time Dependence in Binary Data

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TLDR
Monte Carlo analysis demonstrates that, for the types of hazards one often sees in substantive research, the polynomial approximation always outperforms time dummies and generally performs as well as splines or even more flexible autosmoothing procedures.
Abstract
Since Beck, Katz, and Tucker (1998), the standard method for modeling time dependence in binary data has been to incorporate time dummies or splined time in logistic regressions. Although we agree with the need for modeling time dependence, we demonstrate that time dummies can induce estimation problems due to separation. Splines do not suffer from these problems. However, the complexity of splines has led substantive researchers (1) to use knot values that may be inappropriate for their data and (2) to ignore any substantive discussion concerning temporal dependence. We propose a relatively simple alternative: including t, t 2 , and t 3 in the regression. This cubic polynomial approximation is trivial to implement—and, therefore, interpret—and it avoids problems such as quasi-complete separation. Monte Carlo analysis demonstrates that, for the types of hazards one often sees in substantive research, the polynomial approximation always outperforms time dummies and generally performs as well as splines or even more flexible autosmoothing procedures. Due to its simplicity, this method also accommodates nonproportional hazards in a straightforward way. We reanalyze Crowley and Skocpol (2001) using nonproportional hazards and find new empirical support for the historical-institutionalist perspective.

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Climate change, rainfall, and social conflict in Africa:

TL;DR: The authors examined the effect of deviations from normal rainfall patterns on various types of conflict, including civil war and insurgency, and found that extreme deviations in rainfall -particularly dry and wet years - are associated positively with all types of political conflict, though the relationship is strongest with respect to violent events.
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Estimating Dynamic State Preferences from United Nations Voting Data

TL;DR: The authors proposed a dynamic ordinal spatial model to estimate state ideal points from 1946-2012 on a single dimension that reflects state positions towards the U.S. led liberal order, and used information about the content of the UN's agenda to make estimates comparable across time.
Journal ArticleDOI

Who Learns from What in Policy Diffusion Processes

TL;DR: This paper used a directed dyadic approach and multilevel methods to analyze the policy and political consequences of retrenchment in OECD countries and found that right governments tend to be more sensitive to information on the electoral consequences of reforms, while left governments are more likely to be influenced by their policy effects.
Journal ArticleDOI

Estimating Dynamic State Preferences from United Nations Voting Data

TL;DR: This paper proposed a dynamic ordinal spatial model to estimate state ideal points from 1946 to 2012 on a single dimension that reflects state positions toward the US-led liberal order, using information about the content of the UN's agenda to make estimates comparable across time.
References
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Journal ArticleDOI

Generalized Additive Models.

MonographDOI

Microeconometrics: Methods and Applications

TL;DR: This chapter discusses models for making pseudo-random draw, which combines asymptotic theory, Bayesian methods, and ML and NLS estimation with real-time data structures.
OtherDOI

Generalized Additive Models

TL;DR: The generalized additive model (GA) as discussed by the authors is a generalization of the generalized linear model, which replaces the linear model with a sum of smooth functions in an iterative procedure called local scoring algorithm.
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