A Bayesian Split Population Survival Model for Duration Data With Misclassified Failure Events

Author:

Bagozzi Benjamin E.,Joo Minnie M.,Kim Bomin,Mukherjee Bumba

Abstract

We develop a new Bayesian split population survival model for the analysis of survival data with misclassified event failures. Within political science survival data, right-censored survival cases are often erroneously misclassified as failure cases due to measurement error. Treating these cases as failure events within survival analyses will underestimate the duration of some events. This will bias coefficient estimates, especially in situations where such misclassification is associated with covariates of interest. Our split population survival estimator addresses this challenge by using a system of two equations to explicitly model the misclassification of failure events alongside a parametric survival process of interest. After deriving this model, we use Bayesian estimation via slice sampling to evaluate its performance with simulated data, and in several political science applications. We find that our proposed “misclassified failure” survival model allows researchers to accurately account for misclassified failure events within the contexts of civil war duration and democratic survival.

Publisher

Cambridge University Press (CUP)

Subject

Political Science and International Relations,Sociology and Political Science

Reference38 articles.

1. Carter, D. B. , and C. S. Signorino . 2013. “Good Times, Bad Times: Left Censoring in Grouped Binary Duration Data.” Presented at the Meeting of the International Studies Association, 3–6 April, 2013.

2. On the Duration of Civil War

3. Proper Specification of Nonproportional Hazards Corrections in Duration Models

4. Geography, Rebel Capability, and the Duration of Civil Conflict

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