We investigate kernel estimators of multivariate density derivative functions using general (or unconstrained) bandwidth matrix selectors. These density derivative estimators have been relatively less well researched than their density estimator analogues. A major obstacle for progress has been the intractability of the matrix analysis when treating higher order multivariate derivatives. With an alternative vectorization of these higher order derivatives, mathematical intractabilities are surmounted in an elegant and unified framework. The finite sample and asymptotic analysis of squared errors for density estimators are generalized to density derivative estimators. Moreover, we are able to exhibit a closed form expression for a normal scal...
Employing the "small-bandwidth" asymptotic framework of Cattaneo, Crump, and Jansson (2009), this pa...
Kernel spectrum estimates are used for the estimation of integrals of various squared derivatives of...
This paper gives asymptotically best data based choices of the bandwidth of the kernel density estim...
AbstractProgress in selection of smoothing parameters for kernel density estimation has been much sl...
Abstract. This note derives the general form of the approximate mean integrated squared error for th...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Estimators for derivatives associated with a density function can be useful in identifying its modes...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
This paper proposes (apparently) novel standard error formulas for the density-weighted average deri...
Abstract. This paper proposes (apparently) novel standard error for-mulas for the density-weighted a...
Based on a random sample of size n from an unknown density f on the real line, several data-driven m...
The best mean square error that the classical kernel density estimator achieves if the kernel is non...
This paper proposes (apparently) novel standard error formulas for the density-weighted average deri...
This paper gives asymptotically best data based choices of the bandwidth of the kernel density estim...
This paper presents a new data-driven bandwidth selector compatible with the small bandwidth asympto...
Employing the "small-bandwidth" asymptotic framework of Cattaneo, Crump, and Jansson (2009), this pa...
Kernel spectrum estimates are used for the estimation of integrals of various squared derivatives of...
This paper gives asymptotically best data based choices of the bandwidth of the kernel density estim...
AbstractProgress in selection of smoothing parameters for kernel density estimation has been much sl...
Abstract. This note derives the general form of the approximate mean integrated squared error for th...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Estimators for derivatives associated with a density function can be useful in identifying its modes...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
This paper proposes (apparently) novel standard error formulas for the density-weighted average deri...
Abstract. This paper proposes (apparently) novel standard error for-mulas for the density-weighted a...
Based on a random sample of size n from an unknown density f on the real line, several data-driven m...
The best mean square error that the classical kernel density estimator achieves if the kernel is non...
This paper proposes (apparently) novel standard error formulas for the density-weighted average deri...
This paper gives asymptotically best data based choices of the bandwidth of the kernel density estim...
This paper presents a new data-driven bandwidth selector compatible with the small bandwidth asympto...
Employing the "small-bandwidth" asymptotic framework of Cattaneo, Crump, and Jansson (2009), this pa...
Kernel spectrum estimates are used for the estimation of integrals of various squared derivatives of...
This paper gives asymptotically best data based choices of the bandwidth of the kernel density estim...