This paper develops alternative asymptotic results for a large class of two-step semiparametric estimators. The first main result is an asymptotic distribution result for such estimators and differs from those obtained in earlier work on classes of semiparametric two-step estimators by accommodating a non-negligible bias. A noteworthy feature of the assumptions under which the result is obtained is that reliance on a commonly employed stochastic equicontinuity condition is avoided. The second main result shows that the bootstrap provides an automatic method of correcting for the bias even when it is non-negligible
We propose a generalized smooth bootstrap scheme for estimating the bias By and mean square error My...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...
We propose and study a class of regression models, in which the mean function is specified parametri...
Abstract. This paper develops alternative asymptotic results for a large class of two-step semiparam...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/144290/1/ecta1774.pdfhttps://deepblue....
Consider M-estimation in a semiparametric model that is charac-terized by a Euclidean parameter of i...
We revisit a semiparametric procedure for density estimation based on a convex combination of a nonp...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
In general it is desirable to have unbiased estimators for parameters of a probability distribution ...
We provide easy to verify sufficient conditions for the consistency and asymptotic normality of a cl...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
Semiparametric models are characterized by a finite- and infinite-dimensional (functional) component...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
This paper develops a concrete formula for the asymptotic distribution of two-step, possibly non-smo...
We propose a generalized smooth bootstrap scheme for estimating the bias By and mean square error My...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...
We propose and study a class of regression models, in which the mean function is specified parametri...
Abstract. This paper develops alternative asymptotic results for a large class of two-step semiparam...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/144290/1/ecta1774.pdfhttps://deepblue....
Consider M-estimation in a semiparametric model that is charac-terized by a Euclidean parameter of i...
We revisit a semiparametric procedure for density estimation based on a convex combination of a nonp...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
In general it is desirable to have unbiased estimators for parameters of a probability distribution ...
We provide easy to verify sufficient conditions for the consistency and asymptotic normality of a cl...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
Semiparametric models are characterized by a finite- and infinite-dimensional (functional) component...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...
We consider semiparametric asymmetric kernel density estimators when the unknown density has support...
This paper develops a concrete formula for the asymptotic distribution of two-step, possibly non-smo...
We propose a generalized smooth bootstrap scheme for estimating the bias By and mean square error My...
In a number of semiparametric models, smoothing seems necessary in order to obtain estimates of the ...
We propose and study a class of regression models, in which the mean function is specified parametri...