We formulate a class of angular Gaussian distributions that allows different degrees of isotropy for directional random variables of arbitrary dimension. Through a series of novel reparameterization, this distribution family is indexed by parameters with meaningful statistical interpretations that can range over the entire real space of an adequate dimension. The new parameterization greatly simplifies maximum likelihood estimation of all model parameters, which in turn leads to theoretically sound and numerically stable inference procedures to infer key features of the distribution. Byproducts from the likelihood-based inference are used to develop graphical and numerical diagnostic tools for assessing goodness of fit of this distribution ...
High-dimensional data is central to most data mining applications, and only recently has it been mod...
Various practical situations give rise to observations that are directions, and this has led to the ...
Author Posting. © The Author, 2015. This article is posted here by permission of The Royal Astronom...
We define a distribution on the unit sphere Sd−1 called the elliptically symmetric angular Gaussian ...
Mainstream statistical methodology is generally applicable to data observed inEuclidean space. There...
peer reviewedA classical characterization result, which can be traced back to Gauss, states that the...
The parameter space of nonnegative trigonometric sums (NNTS) models for circular data is the surface...
The analysis of directional data is an area of statistics concerned with observations collected init...
The need for effective simulation methods for directional distributions has grown as they have becom...
The von Mises-Fisher (vMF) distribution has long been a mainstay for inference with data on the unit...
We introduce the directionally dispersed class of multivariate distributions, a generalization of th...
In this paper, a modified inverse stereographic projection, from the real line to the circle, is use...
This dissertation consists of two related topics in the statistical analysis of directional data. Th...
<p>Directional data, i.e., data collected in the form of angles or natural directions arise in many ...
Thanks to its favorable properties, the multivariate normal distribution is still largely employed f...
High-dimensional data is central to most data mining applications, and only recently has it been mod...
Various practical situations give rise to observations that are directions, and this has led to the ...
Author Posting. © The Author, 2015. This article is posted here by permission of The Royal Astronom...
We define a distribution on the unit sphere Sd−1 called the elliptically symmetric angular Gaussian ...
Mainstream statistical methodology is generally applicable to data observed inEuclidean space. There...
peer reviewedA classical characterization result, which can be traced back to Gauss, states that the...
The parameter space of nonnegative trigonometric sums (NNTS) models for circular data is the surface...
The analysis of directional data is an area of statistics concerned with observations collected init...
The need for effective simulation methods for directional distributions has grown as they have becom...
The von Mises-Fisher (vMF) distribution has long been a mainstay for inference with data on the unit...
We introduce the directionally dispersed class of multivariate distributions, a generalization of th...
In this paper, a modified inverse stereographic projection, from the real line to the circle, is use...
This dissertation consists of two related topics in the statistical analysis of directional data. Th...
<p>Directional data, i.e., data collected in the form of angles or natural directions arise in many ...
Thanks to its favorable properties, the multivariate normal distribution is still largely employed f...
High-dimensional data is central to most data mining applications, and only recently has it been mod...
Various practical situations give rise to observations that are directions, and this has led to the ...
Author Posting. © The Author, 2015. This article is posted here by permission of The Royal Astronom...