Suppose the random vector (X; Y ) satises the regression model Y = m(X) + σ(X)ε, where m(.) = E(Y|.) belongs to some parametric class {mθ(∙) ∶θ∈Θ} of regression functions, σ2(∙) = Var(Y|∙) is unknown, and ε is independent of X. The response Y is subject to random right censoring, and the covariate X is completely observed. A new estimation procedure for the true, unknown parameter vector θ0 is proposed, that extends the classical least squares procedure for nonlinear regression to the case where the response is subject to censoring. The consistency and asymptotic normality of the proposed estimator are established. The estimator is compared via simulations with an estimator proposed by Stute in 1999, and both methods are also applied to a f...
Consider a random vector (T-1, T-2), and assume that both T-1 and T-2 are subject to random right ce...
Let (X, Y ) be a random vector, where Y denotes the variable of interest, possibly subject to random...
We propose three new estimation procedures in the linear regression model with randomly-right censor...
Suppose that the random vector (X, Y) satisfies the regression model Y = m(X) + sigma(X)epsilon, whe...
Suppose the random vector (X,Y) satisfies the regression model Y=m(X)+sigma(X)*varepsilon, where m...
International audienceThe problem of estimating a nonlinear regression model, when the dependent var...
Consider the polynomial regression model Y = β0 + β1 X +...+ βp Xp + σ(X)ε, where σ2 (X) = Var(Y|X) ...
[[abstract]]This paper proposes a method for estimation of a class of partially linear single-index ...
A noniterative method of estimation is presented in a simple linear regression model where the indep...
AbstractThis paper proposes a method for estimation of a class of partially linear single-index mode...
In this thesis, we consider the problem of estimating the regression function in location-scale regr...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
[[abstract]]The ordinary least squares (OLS) method is popular for analyzing linear regression model...
In this work we study the effect of several covariates X on a censored response variable T with unkn...
Let $ (T_i)_{i }$ be a sequence of independent identically distributed (i.i.d.) random variables (r...
Consider a random vector (T-1, T-2), and assume that both T-1 and T-2 are subject to random right ce...
Let (X, Y ) be a random vector, where Y denotes the variable of interest, possibly subject to random...
We propose three new estimation procedures in the linear regression model with randomly-right censor...
Suppose that the random vector (X, Y) satisfies the regression model Y = m(X) + sigma(X)epsilon, whe...
Suppose the random vector (X,Y) satisfies the regression model Y=m(X)+sigma(X)*varepsilon, where m...
International audienceThe problem of estimating a nonlinear regression model, when the dependent var...
Consider the polynomial regression model Y = β0 + β1 X +...+ βp Xp + σ(X)ε, where σ2 (X) = Var(Y|X) ...
[[abstract]]This paper proposes a method for estimation of a class of partially linear single-index ...
A noniterative method of estimation is presented in a simple linear regression model where the indep...
AbstractThis paper proposes a method for estimation of a class of partially linear single-index mode...
In this thesis, we consider the problem of estimating the regression function in location-scale regr...
International audienceIn this article, we propose some new generalizations of M-estimation procedure...
[[abstract]]The ordinary least squares (OLS) method is popular for analyzing linear regression model...
In this work we study the effect of several covariates X on a censored response variable T with unkn...
Let $ (T_i)_{i }$ be a sequence of independent identically distributed (i.i.d.) random variables (r...
Consider a random vector (T-1, T-2), and assume that both T-1 and T-2 are subject to random right ce...
Let (X, Y ) be a random vector, where Y denotes the variable of interest, possibly subject to random...
We propose three new estimation procedures in the linear regression model with randomly-right censor...