AbstractUntil now the problem of estimating circular densities when data are observed with errors has been mainly treated by Fourier series methods. We propose kernel‐based estimators exhibiting simple construction and easy implementation. Specifically, we consider three different approaches: the first one is based on the equivalence between kernel estimators using data corrupted with different levels of error. This proposal appears to be totally unexplored, despite its potential for application also in the Euclidean setting. The second approach relies on estimators whose weight functions are circular deconvolution kernels. Due to the periodicity of the involved densities, it requires ad hoc mathematical tools. Finally, the third one is bas...
Given angular data θ1,…,θn[0,2π) a common objective is to estimate the density. In case that a kerne...
This paper aims to introduce an estimation algorithm for the joint densityof a circular-circular ran...
Circular data analysis is a particular branch of statistics that sits somewhere between the analysis...
Until now the problem of estimating circular densities when data are observed with errors has been m...
We consider the problem of nonparametrically estimating a circular density from data contaminated by...
We study the problem of estimating a regression function when the predictor and/or the response are ...
The circular kernel density estimator, with the wrapped Cauchy kernel, is derived from the empirical...
We propose estimating equations whose unknown parameters are the values taken by a circular density ...
Kernel density estimation for multivariate, circular data has been formulated only when the sample s...
The conditional density offers the most informative summary of the relationship between explanatory ...
In this paper we derive asymptotic expressions for the mean integrated squared error of a class of d...
We consider a circular deconvolution problem, where the density f of a circular random variable X ha...
We consider a circular deconvolution problem, where the density f of a cir-cular random variable X h...
I few years ago, while I was working on kernel based density estimation on compact support distribut...
Recursive filtering with multimodal likelihoods and transition densities on periodic manifolds is, d...
Given angular data θ1,…,θn[0,2π) a common objective is to estimate the density. In case that a kerne...
This paper aims to introduce an estimation algorithm for the joint densityof a circular-circular ran...
Circular data analysis is a particular branch of statistics that sits somewhere between the analysis...
Until now the problem of estimating circular densities when data are observed with errors has been m...
We consider the problem of nonparametrically estimating a circular density from data contaminated by...
We study the problem of estimating a regression function when the predictor and/or the response are ...
The circular kernel density estimator, with the wrapped Cauchy kernel, is derived from the empirical...
We propose estimating equations whose unknown parameters are the values taken by a circular density ...
Kernel density estimation for multivariate, circular data has been formulated only when the sample s...
The conditional density offers the most informative summary of the relationship between explanatory ...
In this paper we derive asymptotic expressions for the mean integrated squared error of a class of d...
We consider a circular deconvolution problem, where the density f of a circular random variable X ha...
We consider a circular deconvolution problem, where the density f of a cir-cular random variable X h...
I few years ago, while I was working on kernel based density estimation on compact support distribut...
Recursive filtering with multimodal likelihoods and transition densities on periodic manifolds is, d...
Given angular data θ1,…,θn[0,2π) a common objective is to estimate the density. In case that a kerne...
This paper aims to introduce an estimation algorithm for the joint densityof a circular-circular ran...
Circular data analysis is a particular branch of statistics that sits somewhere between the analysis...