Yaşam Çözümlemesinde Kümelenmiş Başarısızlık Süresi
Abstract
Survival analysis is a collection of statistical methods for analyzing data where the
outcome variable is the time until the occurrence of an event of interest. The time
is called "failure time" or "survival time". Here, the event of interest could be any
case of researcher's interest, such as death, illness, repetition, response to
treatment, deterioration.
Cox regression model is one of the most used models in survival analysis. The
Cox regression model, first considered by Cox in 1972, is a semi-parametric
method and is also known as a proportional hazards model.
Clustered failure time data occurs when failures of the units in the same cluster
tend to be related. Such data are often encountered in biomedical and
epidemiological studies. In classical statistical methods, units are assumed to be
independent from each other. However, in some applications, data may also be
correlated. In order to make an unbiased and effective prediction, it is necessary to
take into account the correlation between the units.
The Cox regression model is known as the standard model for classical clustered
failure time. In the analysis of the clustered failure time, there are two different
approaches, marginal models and conditional models, which gained popularity in
recent years.
In this study, the statistical techniques used for analyzing clustered failure times
were investigated. The methods in the literature were examined in detail and made
comparisons between the methods. An application was carried out by using the
tire data of big trucks used by Demir Export A.Ş. and obtained results were
interpreted.