Kernel smoothing is one of the most widely used non-parametric data smoothing techniques. We introduce a new R package ks for multivariate kernel smoothing. Currently it contains functionality for kernel density estimation and kernel discriminant analysis. It is a comprehensive package for bandwidth matrix selection, implementing a wide range of data-driven diagonal and unconstrained bandwidth selectors
Kernel density estimation (KDE) is the most widely-used practical method for accurate nonparametric ...
The bandwidth that minimizes the mean integrated square error of a kernel density estimator may not ...
Exploratory data analysis (EDA) is important, yet often overlooked in the social and behavioral scie...
Kernel smoothing is one of the most widely used non-parametric data smoothing techniques. We introdu...
Kernel density estimation is a popular tool for visualising the distribution of data. See Simonoff (...
Kernel smoothing is one of the most widely used non-parametric data smoothing tech-niques. We introd...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
We review the extensive recent literature on automatic, data-based selection of a global smoothing p...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Nonparametric density estimation is of great importance when econometricians want to model the prob...
The univariate kernel density estimator requires one smoothing parameter while the bivariate and oth...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Poszukiwanie funkcji gęstości może sprawiać duże problemy, szczególnie wtedy, gdy dane mają specyfic...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Kernel density estimation (KDE) is the most widely-used practical method for accurate nonparametric ...
The bandwidth that minimizes the mean integrated square error of a kernel density estimator may not ...
Exploratory data analysis (EDA) is important, yet often overlooked in the social and behavioral scie...
Kernel smoothing is one of the most widely used non-parametric data smoothing techniques. We introdu...
Kernel density estimation is a popular tool for visualising the distribution of data. See Simonoff (...
Kernel smoothing is one of the most widely used non-parametric data smoothing tech-niques. We introd...
Nonparametric kernel density estimation method makes no assumptions on the functional form of the cu...
We review the extensive recent literature on automatic, data-based selection of a global smoothing p...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Nonparametric density estimation is of great importance when econometricians want to model the prob...
The univariate kernel density estimator requires one smoothing parameter while the bivariate and oth...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Recently, much progress has been made on understanding the bandwidth selection problem in kernel den...
Poszukiwanie funkcji gęstości może sprawiać duże problemy, szczególnie wtedy, gdy dane mają specyfic...
Kernel density estimation is a well known method involving a smoothing parameter (the bandwidth) tha...
Kernel density estimation (KDE) is the most widely-used practical method for accurate nonparametric ...
The bandwidth that minimizes the mean integrated square error of a kernel density estimator may not ...
Exploratory data analysis (EDA) is important, yet often overlooked in the social and behavioral scie...