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Curtis S. Signorino

Researcher at University of Rochester

Publications -  27
Citations -  3101

Curtis S. Signorino is an academic researcher from University of Rochester. The author has contributed to research in topics: Statistical model & Feature selection. The author has an hindex of 13, co-authored 26 publications receiving 2860 citations. Previous affiliations of Curtis S. Signorino include Harvard University.

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Back to the Future: Modeling Time Dependence in Binary Data

TL;DR: 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.
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Tau-b or Not Tau-b: Measuring the Similarity of Foreign Policy Positions

TL;DR: In this paper, an alternative measure of policy portfolio similarity, S, is proposed, which avoids many of the problems associated with τ b, and uses data on alliances among European states to compare S to τ b.
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Strategic Interaction and the Statistical Analysis of International Conflict

TL;DR: In this article, a discrete choice model of international conflict is proposed to capture the structure of the strategic interdependence implied by the theories of strategic interaction, and it is shown that logit provides estimates with incorrect substantive interpretations as well as fitted values that can be far from the true values.
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Structure and Uncertainty in Discrete Choice Models

TL;DR: In this paper, the authors generalize a broad class of statistical discrete choice models, with both well-known and new nonstrategic and strategic special cases, and demonstrate how to derive statistical models from theoretical discrete choice model and address the statistical implications of three sources of uncertainty.
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Strategic Misspecification in Regression Models

TL;DR: In this article, the authors show that common regression models are often structurally inconsistent with strategic interaction, and they characterize the extent of the specification error in terms of model parameters and the data and show that typical regression models can at times give exactly the opposite inferences versus the true strategic data-generating process.