In the long run the cognitive algorithms intend to make super-intelligent machines and super-intelligent humans. This paper presents a technical process to reach specific aspects of super-intelligence that are out of the current human cognitive abilities. These aspects are inabilities to discover patterns in large numeric multidimensional data with a naked eye. This is a long-standing problem in Data Science and Modeling in general. The major obstacle is in human inability to see n-D data by a naked eye and our needs in visualization means to represent n-D data in 2-D losslessly. While these means exist their number and abilities are limited. This paper expands the class of such lossless visual methods, by further developing a new concept o...
In this lecture I give a survey of joint works of Hitoshi Arai and Shinobu Arai. The main purpose of...
This dissertation explores the synthesis of novel views of complex scenes through the optimization o...
Often multidimensional data are visualized by splitting n-D data to a set of low dimensional data. W...
Fundamental challenges and goals of the cognitive algorithms are moving super-intelligent machines a...
This book combines the advantages of high-dimensional data visualization and machine learning in the...
The major challenges in visualization of large n-D data in 2-D are in supporting the most efficient ...
The collaborative approach is a natural way to enhance visualization and visual analytics methods. T...
Preserving all multidimensional data in two-dimensional visualization is a long-standing problem in ...
Abstract: The exploration of multidimensional datasets of all possible sizes and dimensions is a lon...
A new method for assisting with the visualization of large multidimensional datasets is proposed. We...
From state-of-the-art visualization algorithms, we distill six working principles which are, by hypo...
Brains and computers represent and process sensory information in different ways. Bridgingthat gap i...
The visual interpretation of data is an essential step to guide any further processing or decision m...
The goal of this review is to discuss different strategies employed by the visual system to limit da...
Typically, discussions of data visualization extol the wonderful powers of the human eye. Apparently...
In this lecture I give a survey of joint works of Hitoshi Arai and Shinobu Arai. The main purpose of...
This dissertation explores the synthesis of novel views of complex scenes through the optimization o...
Often multidimensional data are visualized by splitting n-D data to a set of low dimensional data. W...
Fundamental challenges and goals of the cognitive algorithms are moving super-intelligent machines a...
This book combines the advantages of high-dimensional data visualization and machine learning in the...
The major challenges in visualization of large n-D data in 2-D are in supporting the most efficient ...
The collaborative approach is a natural way to enhance visualization and visual analytics methods. T...
Preserving all multidimensional data in two-dimensional visualization is a long-standing problem in ...
Abstract: The exploration of multidimensional datasets of all possible sizes and dimensions is a lon...
A new method for assisting with the visualization of large multidimensional datasets is proposed. We...
From state-of-the-art visualization algorithms, we distill six working principles which are, by hypo...
Brains and computers represent and process sensory information in different ways. Bridgingthat gap i...
The visual interpretation of data is an essential step to guide any further processing or decision m...
The goal of this review is to discuss different strategies employed by the visual system to limit da...
Typically, discussions of data visualization extol the wonderful powers of the human eye. Apparently...
In this lecture I give a survey of joint works of Hitoshi Arai and Shinobu Arai. The main purpose of...
This dissertation explores the synthesis of novel views of complex scenes through the optimization o...
Often multidimensional data are visualized by splitting n-D data to a set of low dimensional data. W...