The fully nonparametric model for nonlinear analysis of covariance, proposed in Akritas et al. (2000), is considered in the context of censored observations. Under this model, the distributions for each factor level combination and covariate value are not restricted to comply to any parametric or semiparametric model. The data can be continuous or ordinal categorical. The possibility of different shapes of covariate effect in different factor level combinations is also allowed. This generality is useful whenever modelling. assumptions such as additive risks, proportional hazards or proportional odds appear suspect. Test statistics are obtained for the nonparametric hypotheses of no main effect and of no interaction effect which adjusts for ...
Middle censoring refers to data that becomes unobservable if it falls within a random interval (L,R)...
AbstractIn this article, we consider a proportional odds model, which allows one to examine the exte...
A well-known and useful method for generalised regression analysis when a linear covariate x is avai...
The fully nonpaprametric model for nonlinear analysis of covariance, proposed in Akritas,Arnold & Du...
AbstractFully nonparametric analysis of covariance with two and three covariates is considered. The ...
Fully nonparametric analysis of covariance with two and three covariates is considered. The approach...
A noniterative method of estimation is presented in a simple linear regression model where the indep...
In nonparametric regression with censored data, the conditional distribution of the response given t...
A frequent problem that appears in practical survival data analysis is censoring. A censored observa...
Consider a regression model in which the responses are subject to random right censoring. In this mo...
In this work we study the effect of several covariates X on a censored response variable T with unkn...
We consider the problem of inference on the regression coefficient in the Cox's proportional hazards...
In this article we study the method of nonparametric regression based on a transformation model, und...
We propose a method for fitting semiparametric models such as the proportional hazards (PH), additiv...
In nonparametric regression with censored data, the conditional distribution of the response given t...
Middle censoring refers to data that becomes unobservable if it falls within a random interval (L,R)...
AbstractIn this article, we consider a proportional odds model, which allows one to examine the exte...
A well-known and useful method for generalised regression analysis when a linear covariate x is avai...
The fully nonpaprametric model for nonlinear analysis of covariance, proposed in Akritas,Arnold & Du...
AbstractFully nonparametric analysis of covariance with two and three covariates is considered. The ...
Fully nonparametric analysis of covariance with two and three covariates is considered. The approach...
A noniterative method of estimation is presented in a simple linear regression model where the indep...
In nonparametric regression with censored data, the conditional distribution of the response given t...
A frequent problem that appears in practical survival data analysis is censoring. A censored observa...
Consider a regression model in which the responses are subject to random right censoring. In this mo...
In this work we study the effect of several covariates X on a censored response variable T with unkn...
We consider the problem of inference on the regression coefficient in the Cox's proportional hazards...
In this article we study the method of nonparametric regression based on a transformation model, und...
We propose a method for fitting semiparametric models such as the proportional hazards (PH), additiv...
In nonparametric regression with censored data, the conditional distribution of the response given t...
Middle censoring refers to data that becomes unobservable if it falls within a random interval (L,R)...
AbstractIn this article, we consider a proportional odds model, which allows one to examine the exte...
A well-known and useful method for generalised regression analysis when a linear covariate x is avai...