The most widely used model in multivariate analysis of survival data is proportional hazards model proposed by Cox. While it is easy to get and interpret the results of the model, the basic assumption of proportional hazards model is that independent variables assumed to remain constant throughout the observation period. Model can give biased results in cases which this assumption is violated. One of the methods used modelling the hazard ratio in the cases that the proportional hazard assumption is not met is to add a time-dependent variable showing the interaction between the predictor variable and a parametric function of time. In this study, we investigate the factors that affect the survival time of the firms and the time depe...
The Cox proportional hazards model is the most commonly used method when analyzing the impact of cov...
AbstractInternal (the consumer itself) and external factors influence the consumer to buy a product....
The Cox regression model, which is widely used for the analysis of treat-ment and prognostic e®ects ...
Cox proportional hazards model assumes that independent variables remain constant throughout the ob...
Time-varying covariance occurs when a covariate changes over time during the follow-up period. Such ...
The contribution deals with the application of statistical survival analysis with the intensity desc...
The Cox regression model is a cornerstone of modern survival analysis and is widely used in many oth...
Thesis (Ph.D.)--University of Washington, 2016-12Time-varying covariates are often encountered in su...
The Cox proportional-hazards regression model has achieved widespread use in the analysis of time-to...
The most widely used model in multivariate analysis of survival data is proportional hazards model ...
In recent years, flexible hazard regression models based on penalized splines have been developed th...
Statistical modeling of lifetime data, or survival analysis, is studied in many fields, including me...
The aim of this study is to analyze the effect of assumption of hazard function. Recently evaluation...
This vignette covers 3 different but interrelated concepts: An introduction to time dependent covar...
The application of survival analysis has extended the importance of statistical methods for time to ...
The Cox proportional hazards model is the most commonly used method when analyzing the impact of cov...
AbstractInternal (the consumer itself) and external factors influence the consumer to buy a product....
The Cox regression model, which is widely used for the analysis of treat-ment and prognostic e®ects ...
Cox proportional hazards model assumes that independent variables remain constant throughout the ob...
Time-varying covariance occurs when a covariate changes over time during the follow-up period. Such ...
The contribution deals with the application of statistical survival analysis with the intensity desc...
The Cox regression model is a cornerstone of modern survival analysis and is widely used in many oth...
Thesis (Ph.D.)--University of Washington, 2016-12Time-varying covariates are often encountered in su...
The Cox proportional-hazards regression model has achieved widespread use in the analysis of time-to...
The most widely used model in multivariate analysis of survival data is proportional hazards model ...
In recent years, flexible hazard regression models based on penalized splines have been developed th...
Statistical modeling of lifetime data, or survival analysis, is studied in many fields, including me...
The aim of this study is to analyze the effect of assumption of hazard function. Recently evaluation...
This vignette covers 3 different but interrelated concepts: An introduction to time dependent covar...
The application of survival analysis has extended the importance of statistical methods for time to ...
The Cox proportional hazards model is the most commonly used method when analyzing the impact of cov...
AbstractInternal (the consumer itself) and external factors influence the consumer to buy a product....
The Cox regression model, which is widely used for the analysis of treat-ment and prognostic e®ects ...