In this paper we discuss the problem on parametric and non parametric estimation of the distributions generated by the Marshall-Olkin copula. This copula comes from the Marshall-Olkin bivariate exponential distribution used in reliability analysis. We generalize this model by the copula and different marginal distributions to construct several bivariate survival functions. The cumulative distribution functions are not absolutely continuous and they unknown parameters are often not be obtained in explicit form. In order to estimate the parameters we propose an easy procedure based on the moments. This method consist in two steps: in the first step we estimate only the parameters of marginal distributions and in the second step we estimate on...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...
In this paper we discuss the problem on parametric and non parametric estimation of the distribution...
In this paper we discuss the problem on parametric and non parametric estimation of the distribution...
In this paper we discuss the problem on parametric and non parametric estimation of the distributio...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics and ...
This paper presents copula functions as a method to derive bivariate distributions. Copula functions...
In this dissertation we solve the nonidentifiability problem of Archimedean copula models based on d...
<div><p></p><p>Bivariate survival function can be expressed as the composition of marginal survival ...
The aim of this paper is the derivation of the maximum likelihood estimators of the Marshal-Olkin co...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions (S1, ...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions (S1, ...
In multivariate survival analyses, understanding and quantifying the association between survival ti...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...
In this paper we discuss the problem on parametric and non parametric estimation of the distribution...
In this paper we discuss the problem on parametric and non parametric estimation of the distribution...
In this paper we discuss the problem on parametric and non parametric estimation of the distributio...
Thesis (Ph.D.)--University of Rochester. School of Medicine & Dentistry. Dept. of Biostatistics and ...
This paper presents copula functions as a method to derive bivariate distributions. Copula functions...
In this dissertation we solve the nonidentifiability problem of Archimedean copula models based on d...
<div><p></p><p>Bivariate survival function can be expressed as the composition of marginal survival ...
The aim of this paper is the derivation of the maximum likelihood estimators of the Marshal-Olkin co...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions (S1, ...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions (S1, ...
In multivariate survival analyses, understanding and quantifying the association between survival ti...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...
Bivariate, semi-competing risk data are survival endpoints where a terminal event can censor a non-...
The paper proposes a new nonparametric prior for two-dimensional vectors of survival functions . The...