This paper addresses the problem of calculating the multidimensional probability density functions (PDFs) of statistics derived from known many-to-one transformations of independent random variables (RVs) with known distributions. The statistics covered in the paper include reflection coefficients, autocorrelation estimates, cepstral coefficients, and general linear functions of independent RVs. Through PDF transformation, these results can be used for general PDF approximation, detection, classification, and model order selection. A model order selection example that shows significantly better performance than the Akaike and MDL method is included
<div><p>In high throughput applications, such as those found in bioinformatics and finance, it is im...
Recurrence relationships among the distribution functions of order statistics of independent, but no...
The estimation of probability density functions (PDFs) of a given random variable (r.v.) is involved...
This paper addresses the problem of calculating the multidimensional probability density functions (...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
The use of exponential embedding of two or more probability density functions (pdfs) is introduced. ...
summary:A method for estimation of probability distribution of transformed random variables is prese...
In this thesis we construct novel functional representations for the Probability Density Functions (...
Probability density functions (pdf\u27s) of high dimensionality are impractical to estimate from rea...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
In this paper we show some strange features of multidimensional data and their influence on classifi...
This paper proposes a novel classification paradigm in which the properties of the Order Statistics ...
In many instances, the probability density function (pdf) of a function of a random variable is obta...
Introduces a new probability density function (pdf) estimation method based on the concept of order ...
In high throughput applications, such as those found in bioinformatics and finance, it is important ...
<div><p>In high throughput applications, such as those found in bioinformatics and finance, it is im...
Recurrence relationships among the distribution functions of order statistics of independent, but no...
The estimation of probability density functions (PDFs) of a given random variable (r.v.) is involved...
This paper addresses the problem of calculating the multidimensional probability density functions (...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
The use of exponential embedding of two or more probability density functions (pdfs) is introduced. ...
summary:A method for estimation of probability distribution of transformed random variables is prese...
In this thesis we construct novel functional representations for the Probability Density Functions (...
Probability density functions (pdf\u27s) of high dimensionality are impractical to estimate from rea...
Abstract—In this paper, we present the theoretical foundation for optimal classification using class...
In this paper we show some strange features of multidimensional data and their influence on classifi...
This paper proposes a novel classification paradigm in which the properties of the Order Statistics ...
In many instances, the probability density function (pdf) of a function of a random variable is obta...
Introduces a new probability density function (pdf) estimation method based on the concept of order ...
In high throughput applications, such as those found in bioinformatics and finance, it is important ...
<div><p>In high throughput applications, such as those found in bioinformatics and finance, it is im...
Recurrence relationships among the distribution functions of order statistics of independent, but no...
The estimation of probability density functions (PDFs) of a given random variable (r.v.) is involved...