A broad view of the nature and potential of computational information geometry in statistics is offered. This new area suitably extends the manifold-based approach of classical information geometry to a simplicial setting, in order to obtain an operational universal model space. Additional underlying theory and illustrative real examples are presented. In the infinite-dimensional case, challenges inherent in this ambitious overall agenda are highlighted and promising new methodologies indicated
This volume will be useful to practising scientists and students working in the application of stati...
This paper investigates computational-geometric aspects of clustering problems on the statis-tical m...
Manifold learning seeks low-dimensional representations of high-dimensional data. The main tactics h...
A broad view of the nature and potential of computational information geometry in statistics is offe...
This paper lays the foundations for a new framework for numerically and computationally applying inf...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
The book provides a comprehensive introduction and a novel mathematical foundation of the field of i...
This paper investigates computational-geometric aspects of clustering problems on the statis-tical m...
This up-to-date account of algebraic statistics and information geometry explores the emerging conne...
This up-to-date account of algebraic statistics and information geometry explores the emerging conne...
An up-to-date account of algebraic statistics and information geometry, which also explores the emer...
The main motivation for this book lies in the breadth of applications in which a statistical model i...
This volume will be useful to practising scientists and students working in the application of stati...
This paper investigates computational-geometric aspects of clustering problems on the statis-tical m...
Manifold learning seeks low-dimensional representations of high-dimensional data. The main tactics h...
A broad view of the nature and potential of computational information geometry in statistics is offe...
This paper lays the foundations for a new framework for numerically and computationally applying inf...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
Information Geometry is a field where one can measure the deep impact of geometry and analysis in st...
The book provides a comprehensive introduction and a novel mathematical foundation of the field of i...
This paper investigates computational-geometric aspects of clustering problems on the statis-tical m...
This up-to-date account of algebraic statistics and information geometry explores the emerging conne...
This up-to-date account of algebraic statistics and information geometry explores the emerging conne...
An up-to-date account of algebraic statistics and information geometry, which also explores the emer...
The main motivation for this book lies in the breadth of applications in which a statistical model i...
This volume will be useful to practising scientists and students working in the application of stati...
This paper investigates computational-geometric aspects of clustering problems on the statis-tical m...
Manifold learning seeks low-dimensional representations of high-dimensional data. The main tactics h...