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Title : MODEL REGRESI COX PROPORSIONAL HAZARD PADA DATA DURASI PROSES KELAHIRAN DENGAN TIES
Author :

TRIASTUTI WURYANDARI (1) Drs. Danardono, MPH., Ph.D. (2) Dr. Drs. Gunardi, M.Si. (3)

Date : 0 2021
Keyword : survival, coxph, ties, Breslow, Efron, Exact, partial likelihood survival, coxph, ties, Breslow, Efron, Exact, partial likelihood
Abstract : Survival data are usually found in the fields of health, insurance, epidemiology, demography, etc. Survival data is characterized by a response in the form of time, one example is the duration of the birth process. The duration of the birth process is thought to be influenced by several factors, including the baby's weight, baby's height, mother's age, gestational age, gender and the method used to birth process. One of the regression models for survival data is the Cox regression proportional hazard model. Parameter estimation in the Cox regression is based on partial likelihood. If two or more individuals have the same survival value, it is called ties. If there are ties, then the partial likelihood will have problems in determining the risk set, so it is necessary to modify the partial likelihood. Methods that can be used to overcome ties are the Breslow, Efron and Exact methods. This method is a modification of parameter estimation using maximum partial likelihood. Parameter estimation results are obtained by maximizing the partial likelihood function using Newton Raphson iteration. The case study in this paper is data on the duration of the birth process. The best model for the duration of the birth process with ties is the Exact method because it has the smallest AIC value
Group of Knowledge : Statistik
Original Language : Bahasa Indonesia
Level : Nasional
Status :
Published
Document
No Title Document Type Action
1 7653-21068-1-SM.pdf
Document Type : [PAK] Full Dokumen
[PAK] Full Dokumen View