We propose estimating equations whose unknown parameters are the values taken by a circular density and its derivatives at a point. Specifically, we solve equations which relate local versions of population trigonometric moments with their sample counterparts. Major advantages of our approach are: higher order bias without asymptotic variance inflation, closed form for the estimators, and absence of numerical tasks. We also investigate situations where the observed data are dependent. Theoretical results along with simulation experiments are provided
We consider the problem of nonparametrically estimating a circular density from data contaminated by...
We discuss nonparametric density estimation and regression for astrophysics problems. In particular,...
International audienceWe consider X 1 ,. .. , X n a sample of data on the circle S 1 , whose distrib...
We propose estimating equations whose unknown parameters are the values taken by a circular density ...
The conditional density offers the most informative summary of the relationship between explanatory ...
This paper introduces a new non-parametric approach to the modeling of circular data, based on the ...
We present a non-parametric approach for the estimation of the bivariate distribution of two circul...
I few years ago, while I was working on kernel based density estimation on compact support distribut...
The application of nonparametric probability density function estimation for the purpose of data ana...
Nearest neighbour methods traditionally used to estimate density of a sessile biological population ...
This paper aims to introduce an estimation algorithm for the joint densityof a circular-circular ran...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
Until now the problem of estimating circular densities when data are observed with errors has been m...
This paper introduces a new, semi-parametric model for circular data, based on mixtures of shifted,...
The circular kernel density estimator, with the wrapped Cauchy kernel, is derived from the empirical...
We consider the problem of nonparametrically estimating a circular density from data contaminated by...
We discuss nonparametric density estimation and regression for astrophysics problems. In particular,...
International audienceWe consider X 1 ,. .. , X n a sample of data on the circle S 1 , whose distrib...
We propose estimating equations whose unknown parameters are the values taken by a circular density ...
The conditional density offers the most informative summary of the relationship between explanatory ...
This paper introduces a new non-parametric approach to the modeling of circular data, based on the ...
We present a non-parametric approach for the estimation of the bivariate distribution of two circul...
I few years ago, while I was working on kernel based density estimation on compact support distribut...
The application of nonparametric probability density function estimation for the purpose of data ana...
Nearest neighbour methods traditionally used to estimate density of a sessile biological population ...
This paper aims to introduce an estimation algorithm for the joint densityof a circular-circular ran...
The problems arising when there are outliers in a data set that follow a circular distribution are c...
Until now the problem of estimating circular densities when data are observed with errors has been m...
This paper introduces a new, semi-parametric model for circular data, based on mixtures of shifted,...
The circular kernel density estimator, with the wrapped Cauchy kernel, is derived from the empirical...
We consider the problem of nonparametrically estimating a circular density from data contaminated by...
We discuss nonparametric density estimation and regression for astrophysics problems. In particular,...
International audienceWe consider X 1 ,. .. , X n a sample of data on the circle S 1 , whose distrib...