|
Showing 1 - 6 of
6 matches in All Departments
The emerging field of network science represents a new style of
research that can unify such traditionally-diverse fields as
sociology, economics, physics, biology, and computer science. It is
a powerful tool in analyzing both natural and man-made systems,
using the relationships between players within these networks and
between the networks themselves to gain insight into the nature of
each field. Until now, studies in network science have been focused
on particular relationships that require varied and
sometimes-incompatible datasets, which has kept it from being a
truly universal discipline. Computational Network Science seeks to
unify the methods used to analyze these diverse fields. This book
provides an introduction to the field of Network Science and
provides the groundwork for a computational, algorithm-based
approach to network and system analysis in a new and important way.
This new approach would remove the need for tedious human-based
analysis of different datasets and help researchers spend more time
on the qualitative aspects of network science research.
This book introduces to blockchain and deep learning and explores
and illustrates the current and new trends that integrate them. The
pace and speeds for connectivity are certain on the ascend.
Blockchain and deep learning are twin technologies that are
integral to integrity and relevance of network contents. Since they
are data-driven technologies, rapidly growing interests exist to
incorporate them in efficient and secure data sharing and analysis
applications. Blockchain and deep learning are sentinel
contemporary research technologies. This book provides a
comprehensive reference for blockchain and deep learning by
covering all important topics. It identifies the bedrock principles
and forward projecting methodologies that illuminate the trajectory
of developments for the decades ahead.
Autonomy is a characterizing notion of agents, and intuitively it
is rather unambiguous. The quality of autonomy is recognized when
it is perceived or experienced, yet it is difficult to limit
autonomy in a definition. The desire to build agents that exhibit a
satisfactory quality of autonomy includes agents that have a long
life, are highly independent, can harmonize their goals and actions
with humans and other agents, and are generally socially adept.
Agent Autonomy is a collection of papers from leading international
researchers that approximate human intuition, dispel false
attributions, and point the way to scholarly thinking about
autonomy. A wide array of issues about sharing control and
initiative between humans and machines, as well as issues about
peer level agent interaction, are addressed.
Autonomy is a characterizing notion of agents, and intuitively it
is rather unambiguous. The quality of autonomy is recognized when
it is perceived or experienced, yet it is difficult to limit
autonomy in a definition. The desire to build agents that exhibit a
satisfactory quality of autonomy includes agents that have a long
life, are highly independent, can harmonize their goals and actions
with humans and other agents, and are generally socially adept.
Agent Autonomy is a collection of papers from leading international
researchers that approximate human intuition, dispel false
attributions, and point the way to scholarly thinking about
autonomy. A wide array of issues about sharing control and
initiative between humans and machines, as well as issues about
peer level agent interaction, are addressed.
This book introduces to blockchain and deep learning and explores
and illustrates the current and new trends that integrate them. The
pace and speeds for connectivity are certain on the ascend.
Blockchain and deep learning are twin technologies that are
integral to integrity and relevance of network contents. Since they
are data-driven technologies, rapidly growing interests exist to
incorporate them in efficient and secure data sharing and analysis
applications. Blockchain and deep learning are sentinel
contemporary research technologies. This book provides a
comprehensive reference for blockchain and deep learning by
covering all important topics. It identifies the bedrock principles
and forward projecting methodologies that illuminate the trajectory
of developments for the decades ahead.
From driving, flying, and swimming, to digging for unknown objects
in space exploration, autonomous robots take on varied shapes and
sizes. In part, autonomous robots are designed to perform tasks
that are too dirty, dull, or dangerous for humans. With nontrivial
autonomy and volition, they may soon claim their own place in human
society. These robots will be our allies as we strive for
understanding our natural and man-made environments and build
positive synergies around us. Although we may never perfect
replication of biological capabilities in robots, we must harness
the inevitable emergence of robots that synchronizes with our own
capacities to live, learn, and grow. This book is a snapshot of
motivations and methodologies for our collective attempts to
transform our lives and enable us to cohabit with robots that work
with and for us. It reviews and guides the reader to seminal and
continual developments that are the foundations for successful
paradigms. It attempts to demystify the abilities and limitations
of robots. It is a progress report on the continuing work that will
fuel future endeavors. Table of Contents: Part I:
Preliminaries/Agency, Motion, and Anatomy/Behaviors / Architectures
/ Affect/Sensors / Manipulators/Part II: Mobility/Potential
Fields/Roadmaps / Reactive Navigation / Multi-Robot Mapping: Brick
and Mortar Strategy / Part III: State of the Art / Multi-Robotics
Phenomena / Human-Robot Interaction / Fuzzy Control / Decision
Theory and Game Theory / Part IV: On the Horizon / Applications:
Macro and Micro Robots / References / Author Biography / Discussion
|
|