The estimation of probability density functions (PDFs) of a given random variable (r.v.) is involved in topics related to codification, speech or whenever a short record of data is available but a greater amount is needed. Existing methods go from the so-called minimum description-length method, up to others based on the maximisation of the differential entropy imposing constraints on the moments of the r.v. In this paper we propose to estimate a PDF function by means of spectral estimate methods, since the positiveness and the real character of any PDF function allow us to deal with it as a power spectrum density function. Particularly, the minimum variance method is focused on because it can be generalised to multidimensional problems, be...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
Recently Kadir et al. have proposed a method for estimating probability density functions (PDF) for ...
International audienceGaussian time-series models are often specified through their spectral density...
The estimation of probability density functions (PDFs) of a given random variable (r.v.) is involved...
4 eps figuresInternational audienceA parametric method similar to autoregressive spectral estimators...
Presented is a new algorithm for implementing the Relative Entropy method for estimating the probabi...
We develop an approach to the spectral estimation that has been advocated by [A. Ferrante et al., 'T...
We propose kernel type estimators for the density function of non negative random variables, where t...
Noting that the probability density function of a continuous random variable has similar properties ...
The aim of this reported work is to extend a recent, simple and effective algorithm for the estimati...
The paper deals with the problem of a statistical analysis of Markov chains connected with the spec...
Submitted by Ruth Quaresma de Freitas (ruth_quaresma@hotmail.com) on 2019-05-16T16:08:35Z No. of bit...
Gaussian time-series models are often specified through their spectral density. Such models present ...
International audienceIn statistics, it is usually difficult to estimate the probability density fun...
The density function of the limiting spectral distribution of general sample covariance matrices is ...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
Recently Kadir et al. have proposed a method for estimating probability density functions (PDF) for ...
International audienceGaussian time-series models are often specified through their spectral density...
The estimation of probability density functions (PDFs) of a given random variable (r.v.) is involved...
4 eps figuresInternational audienceA parametric method similar to autoregressive spectral estimators...
Presented is a new algorithm for implementing the Relative Entropy method for estimating the probabi...
We develop an approach to the spectral estimation that has been advocated by [A. Ferrante et al., 'T...
We propose kernel type estimators for the density function of non negative random variables, where t...
Noting that the probability density function of a continuous random variable has similar properties ...
The aim of this reported work is to extend a recent, simple and effective algorithm for the estimati...
The paper deals with the problem of a statistical analysis of Markov chains connected with the spec...
Submitted by Ruth Quaresma de Freitas (ruth_quaresma@hotmail.com) on 2019-05-16T16:08:35Z No. of bit...
Gaussian time-series models are often specified through their spectral density. Such models present ...
International audienceIn statistics, it is usually difficult to estimate the probability density fun...
The density function of the limiting spectral distribution of general sample covariance matrices is ...
A spectral density matrix estimator for stationary stochastic vector processes is studied, As the du...
Recently Kadir et al. have proposed a method for estimating probability density functions (PDF) for ...
International audienceGaussian time-series models are often specified through their spectral density...