|
Showing 1 - 5 of
5 matches in All Departments
As governments and policy makers take advantage of information and
communication technologies, leaders must understand how to navigate
the ever-shifting landscape of modern technologies in order to be
most effective in enacting change and leading their constituents.
The Handbook of Research on Advanced ICT Integration for Governance
and Policy Modeling builds on the available literature, research,
and recent advances in e-governance to explore advanced methods and
applications of digital tools in government. This collection of the
latest research in the field presents an essential reference for
academics, researchers, and advanced-level students, as well as
government leaders, policy makers, and experts in international
relations.
This book introduces a novel approach for intelligent
visualizations that adapts the different visual variables and data
processing to human's behavior and given tasks. Thereby a number of
new algorithms and methods are introduced to satisfy the human need
of information and knowledge and enable a usable and attractive way
of information acquisition. Each method and algorithm is
illustrated in a replicable way to enable the reproduction of the
entire "SemaVis" system or parts of it. The introduced evaluation
is scientifically well-designed and performed with more than enough
participants to validate the benefits of the methods. Beside the
introduced new approaches and algorithms, readers may find a
sophisticated literature review in Information Visualization and
Visual Analytics, Semantics and information extraction, and
intelligent and adaptive systems. This book is based on an awarded
and distinguished doctoral thesis in computer science.
This book is devoted to the emerging field of integrated visual
knowledge discovery that combines advances in artificial
intelligence/machine learning and visualization/visual analytic. A
long-standing challenge of artificial intelligence (AI) and machine
learning (ML) is explaining models to humans, especially for
live-critical applications like health care. A model explanation is
fundamentally human activity, not only an algorithmic one. As
current deep learning studies demonstrate, it makes the paradigm
based on the visual methods critically important to address this
challenge. In general, visual approaches are critical for
discovering explainable high-dimensional patterns in all types in
high-dimensional data offering "n-D glasses," where preserving
high-dimensional data properties and relations in visualizations is
a major challenge. The current progress opens a fantastic
opportunity in this domain. This book is a collection of 25
extended works of over 70 scholars presented at AI and visual
analytics related symposia at the recent International Information
Visualization Conferences with the goal of moving this integration
to the next level. The sections of this book cover integrated
systems, supervised learning, unsupervised learning, optimization,
and evaluation of visualizations. The intended audience for this
collection includes those developing and using emerging AI/machine
learning and visualization methods. Scientists, practitioners, and
students can find multiple examples of the current integration of
AI/machine learning and visualization for visual knowledge
discovery. The book provides a vision of future directions in this
domain. New researchers will find here an inspiration to join the
profession and to be involved for further development. Instructors
in AI/ML and visualization classes can use it as a supplementary
source in their undergraduate and graduate classes.
This book introduces a novel approach for intelligent
visualizations that adapts the different visual variables and data
processing to human's behavior and given tasks. Thereby a number of
new algorithms and methods are introduced to satisfy the human need
of information and knowledge and enable a usable and attractive way
of information acquisition. Each method and algorithm is
illustrated in a replicable way to enable the reproduction of the
entire "SemaVis" system or parts of it. The introduced evaluation
is scientifically well-designed and performed with more than enough
participants to validate the benefits of the methods. Beside the
introduced new approaches and algorithms, readers may find a
sophisticated literature review in Information Visualization and
Visual Analytics, Semantics and information extraction, and
intelligent and adaptive systems. This book is based on an awarded
and distinguished doctoral thesis in computer science.
This book is devoted to the emerging field of integrated visual
knowledge discovery that combines advances in artificial
intelligence/machine learning and visualization/visual analytic. A
long-standing challenge of artificial intelligence (AI) and machine
learning (ML) is explaining models to humans, especially for
live-critical applications like health care. A model explanation is
fundamentally human activity, not only an algorithmic one. As
current deep learning studies demonstrate, it makes the paradigm
based on the visual methods critically important to address this
challenge. In general, visual approaches are critical for
discovering explainable high-dimensional patterns in all types in
high-dimensional data offering "n-D glasses," where preserving
high-dimensional data properties and relations in visualizations is
a major challenge. The current progress opens a fantastic
opportunity in this domain. This book is a collection of 25
extended works of over 70 scholars presented at AI and visual
analytics related symposia at the recent International Information
Visualization Conferences with the goal of moving this integration
to the next level. The sections of this book cover
integrated systems, supervised learning, unsupervised learning,
optimization, and evaluation of visualizations. The intended
audience for this collection includes those developing and using
emerging AI/machine learning and visualization methods. Scientists,
practitioners, and students can find multiple examples of the
current integration of AI/machine learning and visualization for
visual knowledge discovery. The book provides a vision of future
directions in this domain. New researchers will find here an
inspiration to join the profession and to be involved for further
development. Instructors in AI/ML and visualization classes can use
it as a supplementary source in their undergraduate and graduate
classes.
|
You may like...
Hera
Jennifer Saint
Paperback
R467
R427
Discovery Miles 4 270
|