Analysis of recurrent event data with incomplete observation gaps using piecewise models
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초록

In a longitudinal study, subjects can experience same type of events repeatedly. Also, there may exist intermittent dropouts resulting in repeated observation gaps during which no recurrent events are observed. Furthermore, when such observation gaps have incomplete forms caused by the unknown termination times of observation gaps, ordinary approaches result in biased estimates. In this study, we investigate the effect of ignoring observation gaps and propose methods to overcome this problem. For estimating the distribution of unknown termination times, an interval-censored mechanism is applied and two cases are considered. Simulation studies are carried out to evaluate the performance of the proposed method. Conviction data of young drivers with several suspensions are analyzed to illustrate the suggested approach.

키워드

Interval-censored dataobservation gapspiecewise-constant modelrecurrent event dataYTOP
제목
Analysis of recurrent event data with incomplete observation gaps using piecewise models
저자
김양진
DOI
10.7465/jkdi.2014.25.5.1117
발행일
2014-09
저널명
한국데이터정보과학회지
25
5
페이지
1117 ~ 1125