This article is the first of a series devoted to providing a way to correctly explore stock market data through kernel smoothingmethods. Here, we are mainly interested in kernel density smoothing,our approach revolves around introducing and testing the goodness offit of some non-classical kernels based on probability density functionsand orthogonal polynomials, the latter ones are of interest to us whenthey are of order two and above. For each kernel, we use a modified version of the “rules of thumb” principle in order to compute a smoothing parameter that would offer optimal smoothingfor a reasonable computational cost. Compared to the Gaussiankernel, some of the tested kernels have provided a better Chi-square statistic, especially the ke...
Density estimation plays a fundamental role in many areas including statistics and machine learning....
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...
One of the fundamental data analytics tools in statistical estimation is the non-parametric kernel m...
This article is the first of a series devoted to providing a way to correctly explore stock market d...
Kernel smoothing refers to a general methodology for recovery of underlying structure in data sets. ...
We discuss the application of orthogonal polynomials to the estimation of probability density functi...
This is the first book to provide an accessible and comprehensive introduction to a newly developed ...
Kernel density estimation is a technique for estimation of probability density function that is a mu...
Often analysts must conduct risk analysis based on a small number of observations. This paper descri...
In this work, three extensions of univariate nonparametric probability density estimators into two d...
There are various methods for estimating a density. A group of methods which estimate the density as...
Abstract. Some linkages between kernel and penalty methods of density estimation are explored. It is...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
Nonparametric density estimation is of great importance when econometricians want to model the prob...
Kernel density estimation is one of the main methods available for univariate density estimation. T...
Density estimation plays a fundamental role in many areas including statistics and machine learning....
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...
One of the fundamental data analytics tools in statistical estimation is the non-parametric kernel m...
This article is the first of a series devoted to providing a way to correctly explore stock market d...
Kernel smoothing refers to a general methodology for recovery of underlying structure in data sets. ...
We discuss the application of orthogonal polynomials to the estimation of probability density functi...
This is the first book to provide an accessible and comprehensive introduction to a newly developed ...
Kernel density estimation is a technique for estimation of probability density function that is a mu...
Often analysts must conduct risk analysis based on a small number of observations. This paper descri...
In this work, three extensions of univariate nonparametric probability density estimators into two d...
There are various methods for estimating a density. A group of methods which estimate the density as...
Abstract. Some linkages between kernel and penalty methods of density estimation are explored. It is...
Kernel density estimators have been studied in great detail. In this note a new family of kernels, d...
Nonparametric density estimation is of great importance when econometricians want to model the prob...
Kernel density estimation is one of the main methods available for univariate density estimation. T...
Density estimation plays a fundamental role in many areas including statistics and machine learning....
In this lecture, we discuss kernel estimation of probability density functions (PDF). Nonparametric ...
One of the fundamental data analytics tools in statistical estimation is the non-parametric kernel m...