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Replication Data for: Separation and Rare Events

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2020

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Zusammenfassung

When separation is a problem in binary dependent variable models many researchers use Firth’s penalised maximum likelihood in order to obtain finite estimates (Firth, 1993; Zorn, 2005; Rainey, 2016). In this paper I show that this approach can lead to inferences in the opposite direction of the separation when the number of observations are sufficiently large and both the dependent and independent variables are rare events. As large datasets with rare events are frequently used in political science, such as dyadic data measuring interstate relations, a lack of awareness of this problem may lead to inferential issues. Simulations and an empirical illustration show that the use of independent “weakly-informative” prior distributions centred at zero, for example the Cauchy prior suggested by Gelman et al. (2008), can avoid this issue. More generally, the results caution researchers to be aware of how the choice of prior interacts with the structure of their data, when estimating models in the presence of separation.

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Fachgebiet (DDC)
320 Politik

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Social Sciences

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Publikation
Zeitschriftenartikel
Separation and Rare Events
(2022) Beiser-McGrath, Liam F.
Erschienen in: Political Science Research and Methods. Cambridge University Press. 2022, 10(2), S. 428-437. ISSN 2049-8470. eISSN 2049-8489. Verfügbar unter: doi: 10.1017/psrm.2020.46
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ISO 690BEISER-MCGRATH, Liam F., 2020. Replication Data for: Separation and Rare Events
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