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Showing 1 - 25 of
102 matches in All Departments
Blockchain Technology for Emerging Applications: A Comprehensive
Approach explores recent theories and applications of the execution
of blockchain technology. Chapters look at a wide range of
application areas, including healthcare, digital physical
frameworks, web of-things, smart transportation frameworks,
interruption identification frameworks, ballot-casting,
architecture, smart urban communities, and digital rights
administration. The book addresses the engineering, plan
objectives, difficulties, constraints, and potential answers for
blockchain-based frameworks. It also looks at blockchain-based
design perspectives of these intelligent architectures for
evaluating and interpreting real-world trends. Chapters expand on
different models which have shown considerable success in dealing
with an extensive range of applications, including their ability to
extract complex hidden features and learn efficient representation
in unsupervised environments for blockchain security pattern
analysis.
Advanced Data Mining Tools and Methods for Social Computing
explores advances in the latest data mining tools, methods,
algorithms and the architectures being developed specifically for
social computing and social network analysis. The book reviews
major emerging trends in technology that are supporting current
advancements in social networks, including data mining techniques
and tools. It also aims to highlight the advancement of
conventional approaches in the field of social networking. Chapter
coverage includes reviews of novel techniques and state-of-the-art
advances in the area of data mining, machine learning, soft
computing techniques, and their applications in the field of social
network analysis.
Cognitive Models for Sustainable Environment reviews the
fundamental concepts of gathering, processing and analyzing data
from batch processes, along with a review of intelligent and
cognitive tools that can be used. The book is centered on evolving
novel intelligent/cognitive models and algorithms to develop
sustainable solutions for the mitigation of environmental
pollution. It unveils intelligent and cognitive models to address
issues related to the effective monitoring of environmental
pollution and sustainable environmental design. As such, the book
focuses on the overall well-being of the global environment for
better sustenance and livelihood. The book covers novel cognitive
models for effective environmental pollution data management at par
with the standards laid down by the World Health Organization.
Every chapter is supported by real-life case studies, illustrative
examples and video demonstrations that enlighten readers.
The field of computational intelligence has grown tremendously over
that past five years, thanks to evolving soft computing and
artificial intelligent methodologies, tools and techniques for
envisaging the essence of intelligence embedded in real life
observations. Consequently, scientists have been able to explain
and understand real life processes and practices which previously
often remain unexplored by virtue of their underlying imprecision,
uncertainties and redundancies, and the unavailability of
appropriate methods for describing the incompleteness and vagueness
of information represented. With the advent of the field of
computational intelligence, researchers are now able to explore and
unearth the intelligence, otherwise insurmountable, embedded in the
systems under consideration. Computational Intelligence is now not
limited to only specific computational fields, it has made inroads
in signal processing, smart manufacturing, predictive control,
robot navigation, smart cities, and sensor design to name a few.
Recent Trends in Computational Intelligence Enabled Research:
Theoretical Foundations and Applications explores the use of this
computational paradigm across a wide range of applied domains which
handle meaningful information. Chapters investigate a broad
spectrum of the applications of computational intelligence across
different platforms and disciplines, expanding our knowledge base
of various research initiatives in this direction. This volume aims
to bring together researchers, engineers, developers and
practitioners from academia and industry working in all major areas
and interdisciplinary areas of computational intelligence,
communication systems, computer networks, and soft computing.
Computer vision and machine intelligence paradigms are prominent in
the domain of medical image applications, including computer
assisted diagnosis, image guided radiation therapy, landmark
detection, imaging genomics, and brain connectomics. Medical image
analysis and understanding are daunting tasks owing to the massive
influx of multi-modal medical image data generated during routine
clinal practice. Advanced computer vision and machine intelligence
approaches have been employed in recent years in the field of image
processing and computer vision. However, due to the unstructured
nature of medical imaging data and the volume of data produced
during routine clinical processes, the applicability of these
meta-heuristic algorithms remains to be investigated. Advanced
Machine Vision Paradigms for Medical Image Analysis presents an
overview of how medical imaging data can be analyzed to provide
better diagnosis and treatment of disease. Computer vision
techniques can explore texture, shape, contour and prior knowledge
along with contextual information, from image sequence and 3D/4D
information which helps with better human understanding. Many
powerful tools have been developed through image segmentation,
machine learning, pattern classification, tracking, and
reconstruction to surface much needed quantitative information not
easily available through the analysis of trained human specialists.
The aim of the book is for medical imaging professionals to acquire
and interpret the data, and for computer vision professionals to
learn how to provide enhanced medical information by using computer
vision techniques. The ultimate objective is to benefit patients
without adding to already high healthcare costs.
Sustainability issues have gained more importance in contemporary
globalization, pushing decision makers to find a systematic
mathematical approach to conduct analyses of this real-world
problem. The growing complexity in modern social-economics or
engineering environments or systems has forced researchers to solve
complicated problems by using multi-criteria decision-making (MCDM)
approaches. However, traditional MCDM research mainly focuses on
reaching the highest economic value or efficiency, and issues
related to sustainability are still not closely explored. Advanced
Multi-Criteria Decision Making for Addressing Complex
Sustainability Issues discusses and addresses the challenges in the
implementation of decision-making models in the context of green
and sustainable engineering, criteria identification,
quantification, comparison, selection, and analysis in the context
of manufacturing, supply chain, transportation, and energy sectors.
All academic communities in the areas of management, economics,
business sciences, mechanical, and manufacturing technologies are
able to use, apply, and implement the models presented in this
book. It is intended for researchers, manufacturers, engineers,
managers, industry professionals, academicians, and students.
Multimedia represents information in novel and varied formats. One
of the most prevalent examples of continuous media is video.
Extracting underlying data from these videos can be an arduous
task. From video indexing, surveillance, and mining, complex
computational applications are required to process this data.
Intelligent Analysis of Multimedia Information is a pivotal
reference source for the latest scholarly research on the
implementation of innovative techniques to a broad spectrum of
multimedia applications by presenting emerging methods in
continuous media processing and manipulation. This book offers a
fresh perspective for students and researchers of information
technology, media professionals, and programmers.
Quantum Inspired Computational Intelligence: Research and
Applications explores the latest quantum computational intelligence
approaches, initiatives, and applications in computing,
engineering, science, and business. The book explores this emerging
field of research that applies principles of quantum mechanics to
develop more efficient and robust intelligent systems. Conventional
computational intelligence-or soft computing-is conjoined with
quantum computing to achieve this objective. The models covered can
be applied to any endeavor which handles complex and meaningful
information.
Image data has portrayed immense potential as a foundation of
information for numerous applications. Recent trends in multimedia
computing have witnessed a rapid growth in digital image
collections, resulting in a need for increased image data
management. Feature Dimension Reduction for Content-Based Image
Identification is a pivotal reference source that explores the
contemporary trends and techniques of content-based image
recognition. Including research covering topics such as feature
extraction, fusion techniques, and image segmentation, this book
explores different theories to facilitate timely identification of
image data and managing, archiving, maintaining, and extracting
information. This book is ideally designed for engineers, IT
specialists, researchers, academicians, and graduate-level students
seeking interdisciplinary research on image processing and
analysis.
The communication field is evolving rapidly in order to keep up
with society's demands. As such, it becomes imperative to research
and report recent advancements in computational intelligence as it
applies to communication networks. The Handbook of Research on
Recent Developments in Intelligent Communication Application is a
pivotal reference source for the latest developments on emerging
data communication applications. Featuring extensive coverage
across a range of relevant perspectives and topics, such as
satellite communication, cognitive radio networks, and wireless
sensor networks, this book is ideally designed for engineers,
professionals, practitioners, upper-level students, and academics
seeking current information on emerging communication networking
trends.
Swarm Intelligence has recently emerged as a next-generation
methodology belonging to the class of evolutionary computing. As a
result, scientists have been able to explain and understand
real-life processes and practices that previously remained
unexplored. The Handbook of Research on Swarm Intelligence in
Engineering presents the latest research being conducted on diverse
topics in intelligence technologies such as Swarm Intelligence,
Machine Intelligence, Optical Engineering, and Signal Processing
with the goal of advancing knowledge and applications in this
rapidly evolving field. The enriched interdisciplinary contents of
this book will be a subject of interest to the widest forum of
faculties, existing research communities, and new research
aspirants from a multitude of disciplines and trades.
Conventional computational methods, and even the latest soft
computing paradigms, often fall short in their ability to offer
solutions to many real-world problems due to uncertainty,
imprecision, and circumstantial data. Hybrid intelligent computing
is a paradigm that addresses these issues to a considerable extent.
The Handbook of Research on Advanced Research on Hybrid Intelligent
Techniques and Applications highlights the latest research on
various issues relating to the hybridization of artificial
intelligence, practical applications, and best methods for
implementation. Focusing on key interdisciplinary computational
intelligence research dealing with soft computing techniques,
pattern mining, data analysis, and computer vision, this book is
relevant to the research needs of academics, IT specialists, and
graduate-level students.
This book presents intelligent data analysis as a tool to fight
against COVID-19 pandemic. The intelligent data analysis includes
machine learning, natural language processing, and computer vision
applications to teach computers to use big data-based models for
pattern recognition, explanation, and prediction. These functions
are discussed in detail in the book to recognize (diagnose),
predict, and explain (treat) COVID-19 infections, and help manage
socio-economic impacts. It also discusses primary warnings and
alerts; tracking and prediction; data dashboards; diagnosis and
prognosis; treatments and cures; and social control by the use of
intelligent data analysis. It provides analysis reports, solutions
using real-time data, and solution through web applications
details.
This book focuses on the fundamentals of deep learning along with
reporting on the current state-of-art research on deep learning. In
addition, it provides an insight of deep neural networks in action
with illustrative coding examples. Deep learning is a new area of
machine learning research which has been introduced with the
objective of moving ML closer to one of its original goals, i.e.
artificial intelligence. Deep learning was developed as an ML
approach to deal with complex input-output mappings. While
traditional methods successfully solve problems where final value
is a simple function of input data, deep learning techniques are
able to capture composite relations between non-immediately related
fields, for example between air pressure recordings and English
words, millions of pixels and textual description, brand-related
news and future stock prices and almost all real world problems.
Deep learning is a class of nature inspired machine learning
algorithms that uses a cascade of multiple layers of nonlinear
processing units for feature extraction and transformation. Each
successive layer uses the output from the previous layer as input.
The learning may be supervised (e.g. classification) and/or
unsupervised (e.g. pattern analysis) manners. These algorithms
learn multiple levels of representations that correspond to
different levels of abstraction by resorting to some form of
gradient descent for training via backpropagation. Layers that have
been used in deep learning include hidden layers of an artificial
neural network and sets of propositional formulas. They may also
include latent variables organized layer-wise in deep generative
models such as the nodes in deep belief networks and deep boltzmann
machines. Deep learning is part of state-of-the-art systems in
various disciplines, particularly computer vision, automatic speech
recognition (ASR) and human action recognition.
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Big Data Security (Hardcover)
Shibakali Gupta, Indradip Banerjee, Siddhartha Bhattacharyya
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R3,852
Discovery Miles 38 520
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Ships in 12 - 19 working days
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After a short description of the key concepts of big data the book
explores on the secrecy and security threats posed especially by
cloud based data storage. It delivers conceptual frameworks and
models along with case studies of recent technology.
As the most natural and convenient means of conveying or
transmitting information, images play a vital role in our daily
lives. Image processing is now of paramount importance in the
computer vision research community, and proper processing of
two-dimensional (2D) real-life images plays a key role in many
real-life applications as well as commercial developments.
Intelligent Multidimensional Data and Image Processing is a vital
research publication that contains an in-depth exploration of image
processing techniques used in various applications, including how
to handle noise removal, object segmentation, object extraction,
and the determination of the nearest object classification and its
associated confidence level. Featuring coverage on a broad range of
topics such as object detection, machine vision, and image
conversion, this book provides critical research for scientists,
computer engineers, professionals, researchers, and academicians
seeking current research on solutions for new challenges in 2D and
3D image processing.
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Quantum Machine Learning (Hardcover)
Siddhartha Bhattacharyya, Indrajit Pan, Ashish Mani, Sourav De, Elizabeth Behrman, …
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R4,088
Discovery Miles 40 880
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Ships in 12 - 19 working days
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Quantum-enhanced machine learning refers to quantum algorithms that
solve tasks in machine learning, thereby improving a classical
machine learning method. Such algorithms typically require one to
encode the given classical dataset into a quantum computer, so as
to make it accessible for quantum information processing. After
this, quantum information processing routines can be applied and
the result of the quantum computation is read out by measuring the
quantum system. While many proposals of quantum machine learning
algorithms are still purely theoretical and require a full-scale
universal quantum computer to be tested, others have been
implemented on small-scale or special purpose quantum devices.
Intelligent prediction and decision support systems are based on
signal processing, computer vision (CV), machine learning (ML),
software engineering (SE), knowledge based systems (KBS), data
mining, artificial intelligence (AI) and include several systems
developed from the study of expert systems (ES), genetic algorithms
(GA), artificial neural networks (ANN) and fuzzy-logic systems The
use of automatic decision support systems in design and
manufacturing industry, healthcare and commercial software
development systems has the following benifits: Cost savings in
companies, due to employment of expert system technology. Fast
decision making, completion of projects in time and development of
new products. Improvement in decision making capability and
quality. Usage of Knowledge database and Preservation of expertise
of individuals Eases complex decision problems. Ex: Diagnosis in
Healthcare To address the issues and challenges related to
development, implementation and application of automatic and
intelligent prediction and decision support systems in domains such
as manufacturing, healthcare and software product design,
development and optimization, this book aims to collect and publish
wide ranges of quality articles such as original research
contributions, methodological reviews, survey papers, case studies
and/or reports covering intelligent systems, expert prediction
systems, evaluation models, decision support systems and Computer
Aided Diagnosis (CAD).
This book presents a cutting-edge research procedure in the
Nature-Inspired Computing (NIC) domain and its connections with
computational intelligence areas in real-world engineering
applications. It introduces readers to a broad range of algorithms,
such as genetic algorithms, particle swarm optimization, the
firefly algorithm, flower pollination algorithm, collision-based
optimization algorithm, bat algorithm, ant colony optimization, and
multi-agent systems. In turn, it provides an overview of
meta-heuristic algorithms, comparing the advantages and
disadvantages of each. Moreover, the book provides a brief outline
of the integration of nature-inspired computing techniques and
various computational intelligence paradigms, and highlights
nature-inspired computing techniques in a range of applications,
including: evolutionary robotics, sports training planning,
assessment of water distribution systems, flood simulation and
forecasting, traffic control, gene expression analysis, antenna
array design, and scheduling/dynamic resource management.
The publication is attempted to address emerging trends in machine
learning applications. Recent trends in information identification
have identified huge scope in applying machine learning techniques
for gaining meaningful insights. Random growth of unstructured data
poses new research challenges to handle this huge source of
information. Efficient designing of machine learning techniques is
the need of the hour. Recent literature in machine learning has
emphasized on single technique of information identification. Huge
scope exists in developing hybrid machine learning models with
reduced computational complexity for enhanced accuracy of
information identification. This book will focus on techniques to
reduce feature dimension for designing light weight techniques for
real time identification and decision fusion. Key Findings of the
book will be the use of machine learning in daily lives and the
applications of it to improve livelihood. However, it will not be
able to cover the entire domain in machine learning in its limited
scope. This book is going to benefit the research scholars,
entrepreneurs and interdisciplinary approaches to find new ways of
applications in machine learning and thus will have novel research
contributions. The lightweight techniques can be well used in real
time which will add value to practice.
Microwave photonics and information optics provide high bandwidth
and precision along with ultrafast speed at a low cost. In order to
reduce noise at the communication trans-receivers, scattering in
the devices needs to be decreased, which can be achieved by
replacing optoelectronic devices with photonic devices because in
the latter only photons propagate electromagnetic waves.
Contemporary Developments in High-Frequency Photonic Devices is a
crucial research book that examines high-frequency photonics and
their applications in communication engineering. Featuring coverage
on a wide range of topics such as metamaterials, optoelectronic
devices, and plasmonics, this book is excellent for students,
researchers, engineers, and professionals.
Disputes between peers as well as between supervisors-subordinates
happen numerous times a week in the corporate environment. Although
the win-win concept is the ideal orientation, the notion that there
can only be one winner is constantly being reinforced in some
cultures. This kind of mentality can be destructive when
communicating with different cultural groups by creating barriers
in negotiation, resolution, and compromise; it can also lead the
"loser" to feel mediocre. When the win-win orientation is absent in
negotiation, different responses to conflict may be observed.
Strategic Approaches for Conflict Resolution in Organizations:
Emerging Research and Opportunities provides emerging research on
approaches for conflict resolution in organizations whereby it is
possible to establish congenial ambiences in different
organizations, leading to better outcomes and performance.
Featuring coverage on a broad range of topics such as
organizational change, leaderships roles, and organizational
change, this book is ideally designed for managers, human resources
officials, executives, researchers, scholars, professors, industry
professionals, and students interested in the current research
behind the reduction, elimination, and termination of all forms of
organizational conflict.
This book explains aspects of social networks, varying from
development and application of new artificial intelligence and
computational intelligence techniques for social networks to
understanding the impact of social networks. Chapters 1 and 2 deal
with the basic strategies towards social networks such as mining
text from such networks and applying social network metrics using a
hybrid approach; Chaps. 3 to 8 focus on the prime research areas in
social networks: community detection, influence maximization and
opinion mining. Chapter 9 to 13 concentrate on studying the impact
and use of social networks in society, primarily in education,
commerce, and crowd sourcing. The contributions provide a
multidimensional approach, and the book will serve graduate
students and researchers as a reference in computer science,
electronics engineering, communications, and information
technology.
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