Prof. Janet M. Box-Steffensmeier
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The Ohio State University



Ohio State University logo Department of Political Science
Janet M. Box-Steffensmeier
Vernal Riffe Professor of Political Science and
Professor of Sociology
Director of the Program in Statistics and Methodology
Office: 2049S Derby Hall
154 N. Oval Mall
Columbus, Ohio 43210
(614) 292-9642
email: steffensmeier.2@osu.edu
Replication data for: Repeated Events Survival Models: The Conditional Frailty Model
Cataloging Information
Documentation, Data and Analysis
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Citation Information
How to Cite
Janet M. Box-Steffensmeier, 2007, "Replication data for: Repeated Events Survival Models: The Conditional Frailty Model", hdl:1902.1/10360 UNF:3:zyOlJBVkdWKZtwWCYl7rNA== Janet M. Box-Steffensmeier [Distributor]
Study Global Idhdl:1902.1/10360
AuthorsJanet M. Box-Steffensmeier (Department of Political Science, Ohio State University)
Production Date2006
DistributorJanet M. Box-Steffensmeier
Distributor Contactjboxstef+@osu.edu
Distribution Date2007
Deposit DateJune, 2007
Replication ForBox-Steffensmeier, Janet M., and Suzanna De Boef. 2006. “Repeated Events Survival Models: The Conditional Frailty Model.” Statistics in Medicine. 25(20, October): 3518-3533. article available here
Provenance
Abstract and Scope
Abstract

Repeated events processes are ubiquitous across a great range of important health, medical, and public policy applications, but models for these processes have serious limitations. Alternative estimators often produce different inferences concerning treatment effects due to bias and inefficiency. We recommend a robust strategy for the estimation of effects in medical treatments, social conditions, individual behaviors, and public policy programs in repeated events survival models under three common conditions: heterogeneity across individuals, dependence across the number of events, and both heterogeneity and event dependence. We develop a new model for repeated events processes that accurately accounts for the various conditions of heterogeneity and event dependence by using a frailty term, stratification, and gap time formulation of the risk set. We examine the performance of these models and others that are commonly used in applied work using Monte Carlo simulations, and apply the findings to data on chronic granulomatous disease and cystic.

Topic ClassificationPolitical Science
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