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Showing 1 - 18 of
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Big data consists of data sets that are too large and complex for
traditional data processing and data management applications.
Therefore, to obtain the valuable information within the data, one
must use a variety of innovative analytical methods, such as web
analytics, machine learning, and network analytics. As the study of
big data becomes more popular, there is an urgent demand for
studies on high-level computational intelligence and computing
services for analyzing this significant area of information
science. Big Data Analytics for Sustainable Computing is a
collection of innovative research that focuses on new computing and
system development issues in emerging sustainable applications.
Featuring coverage on a wide range of topics such as data
filtering, knowledge engineering, and cognitive analytics, this
publication is ideally designed for data scientists, IT
specialists, computer science practitioners, computer engineers,
academicians, professionals, and students seeking current research
on emerging analytical techniques and data processing software.
This book features the proceedings of the 5th EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2022). The papers feature detail on cognitive
computing and its self-learning systems that use data mining,
pattern recognition and natural language processing (NLP) to mirror
the way the human brain works. This international conference
focuses on technologies from knowledge representation techniques
and natural language processing algorithms to dynamic learning
approaches. Topics covered include Data Science for Cognitive
Analysis, Real-Time Ubiquitous Data Science, Platform for Privacy
Preserving Data Science, and Internet-Based Cognitive Platform.
This proceeding features papers discussing big data innovation for
sustainable cognitive computing. The papers feature details on
cognitive computing and its self-learning systems that use data
mining, pattern recognition and natural language processing (NLP)
to mirror the way the human brain works. This international
conference focuses on cognitive computing technologies, from
knowledge representation techniques and natural language processing
algorithms to dynamic learning approaches. Topics covered include
Data Science for Cognitive Analysis, Real-Time Ubiquitous Data
Science, Platform for Privacy Preserving Data Science, and
Internet-Based Cognitive Platform. The 2nd EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2019) took place in Coimbatore, India on December
12-13, 2019. Contains proceedings from 2nd EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2019), Coimbatore, India, December 12-13, 2019;
Features topics ranging from Data Science for Cognitive Analysis to
Internet-Based Cognitive Platforms; Includes contributions from
researchers, academics, and professionals from around the world.
This proceeding features papers discussing big data innovation for
sustainable cognitive computing. The papers feature detail on
cognitive computing and its self-learning systems that use data
mining, pattern recognition and natural language processing (NLP)
to mirror the way the human brain works. This international
conference focuses on cognitive computing technologies, from
knowledge representation techniques and natural language processing
algorithms to dynamic learning approaches. Topics covered include
Data Science for Cognitive Analysis, Real-Time Ubiquitous Data
Science, Platform for Privacy Preserving Data Science, and
Internet-Based Cognitive Platform. The EAI International Conference
on Big Data Innovation for Sustainable Cognitive Computing (BDCC
2018), took place on 13 - 15 December 2018 in Coimbatore, India.
Recently, there has been a rapid increase in interest regarding
social network analysis in the data mining community. Cognitive
radios are expected to play a major role in meeting this exploding
traffic demand on social networks due to their ability to sense the
environment, analyze outdoor parameters, and then make decisions
for dynamic time, frequency, space, resource allocation, and
management to improve the utilization of mining the social data.
Cognitive Social Mining Applications in Data Analytics and
Forensics is an essential reference source that reviews cognitive
radio concepts and examines their applications to social mining
using a machine learning approach so that an adaptive and
intelligent mining is achieved. Featuring research on topics such
as data mining, real-time ubiquitous social mining services, and
cognitive computing, this book is ideally designed for social
network analysts, researchers, academicians, and industry
professionals.
This book highlights the need for an efficient Handover Decision
(HD) mechanism to perform switches from one network to another and
to provide unified and continuous mobile services that include
seamless connectivity and ubiquitous service access. The author
shows how the HD involves efficiently combining handover initiation
and network selection process. The author describes how the network
selection decision is a challenging task that is a central
component to making HD for any mobile user in a heterogeneous
environment that involves a number of static and dynamic
parameters. The author also discusses prevailing technical
challenges like Dynamic Spectrum Allocation (DSA) methods, spectrum
sensing, cooperative communications, cognitive network architecture
protocol design, cognitive network security challenges and dynamic
adaptation algorithms for cognitive system and the evolving
behavior of systems in general. The book allows the reader to
optimize the sensing time for maximizing the spectrum utilization,
improve the lifetime of the cognitive radio network (CRN) using
active scan spectrum sensing techniques, analyze energy efficiency
of CRN, find a secondary user spectrum allocation, perform dynamic
handovers, and use efficient data communication in the cognitive
networks. Identifies energy efficient spectrum sensing techniques
for Cooperative Cognitive Radio Networks (CRN); Shows how to
maximize the energy capacity by minimizing the outage probability;
Features end-of-chapter summaries, performance measures, and case
studies.
This book discusses Internet of Things (IoT) as it relates to
enterprise applications, systems, and infrastructures. The authors
discuss IoT and how it's disrupting industries such as enterprise
manufacturing, enterprise transportation, enterprise smart market,
enterprise utilities, and enterprise healthcare. They cover how IoT
in the enterprise will have a major impact on the lives of
consumers and professionals around the world and how it will change
the way we think about professional and consumer networks. The
book's topics include IoT enterprise system architecture, IoT
enabling enterprise technologies, and IoT enterprise services and
applications. Examples include enterprise on demand, market
impacts, and implications on smart technologies, big data
enterprise management, and future enterprise Internet design for
various IoT use cases, such as share markets, healthcare, smart
cities, smart environments, smart communications and smart homes.
This book features the proceedings of the 4th EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2021). The papers feature detail on cognitive
computing and its self-learning systems that use data mining,
pattern recognition and natural language processing (NLP) to mirror
the way the human brain works. This international conference
focuses on technologies from knowledge representation techniques
and natural language processing algorithms to dynamic learning
approaches. Topics covered include Data Science for Cognitive
Analysis, Real-Time Ubiquitous Data Science, Platform for Privacy
Preserving Data Science, and Internet-Based Cognitive Platform.
This book features the proceedings of The EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2020), which took place 18 - 19 December 2020. The
papers feature detail on cognitive computing and its self-learning
systems that use data mining, pattern recognition and natural
language processing (NLP) to mirror the way the human brain works.
This international conference focuses on technologies from
knowledge representation techniques and natural language processing
algorithms to dynamic learning approaches. Topics covered include
Data Science for Cognitive Analysis, Real-Time Ubiquitous Data
Science, Platform for Privacy Preserving Data Science, and
Internet-Based Cognitive Platform.
This book presents the most recent challenges and developments in
sustainable computing systems with the objective of promoting
awareness and best practices for the real world. It aims to present
new directions for further research and technology improvements in
this important area.
This proceeding features papers discussing big data innovation for
sustainable cognitive computing. The papers feature details on
cognitive computing and its self-learning systems that use data
mining, pattern recognition and natural language processing (NLP)
to mirror the way the human brain works. This international
conference focuses on cognitive computing technologies, from
knowledge representation techniques and natural language processing
algorithms to dynamic learning approaches. Topics covered include
Data Science for Cognitive Analysis, Real-Time Ubiquitous Data
Science, Platform for Privacy Preserving Data Science, and
Internet-Based Cognitive Platform. The 2nd EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2019) took place in Coimbatore, India on December
12-13, 2019. Contains proceedings from 2nd EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2019), Coimbatore, India, December 12-13, 2019;
Features topics ranging from Data Science for Cognitive Analysis to
Internet-Based Cognitive Platforms; Includes contributions from
researchers, academics, and professionals from around the world.
This book discusses Internet of Things (IoT) as it relates to
enterprise applications, systems, and infrastructures. The authors
discuss IoT and how it's disrupting industries such as enterprise
manufacturing, enterprise transportation, enterprise smart market,
enterprise utilities, and enterprise healthcare. They cover how IoT
in the enterprise will have a major impact on the lives of
consumers and professionals around the world and how it will change
the way we think about professional and consumer networks. The
book's topics include IoT enterprise system architecture, IoT
enabling enterprise technologies, and IoT enterprise services and
applications. Examples include enterprise on demand, market
impacts, and implications on smart technologies, big data
enterprise management, and future enterprise Internet design for
various IoT use cases, such as share markets, healthcare, smart
cities, smart environments, smart communications and smart homes.
This proceeding features papers discussing big data innovation for
sustainable cognitive computing. The papers feature detail on
cognitive computing and its self-learning systems that use data
mining, pattern recognition and natural language processing (NLP)
to mirror the way the human brain works. This international
conference focuses on cognitive computing technologies, from
knowledge representation techniques and natural language processing
algorithms to dynamic learning approaches. Topics covered include
Data Science for Cognitive Analysis, Real-Time Ubiquitous Data
Science, Platform for Privacy Preserving Data Science, and
Internet-Based Cognitive Platform. The EAI International Conference
on Big Data Innovation for Sustainable Cognitive Computing (BDCC
2018), took place on 13 - 15 December 2018 in Coimbatore, India.
This book features the proceedings of The EAI International
Conference on Big Data Innovation for Sustainable Cognitive
Computing (BDCC 2020), which took place 18 - 19 December 2020. The
papers feature detail on cognitive computing and its self-learning
systems that use data mining, pattern recognition and natural
language processing (NLP) to mirror the way the human brain works.
This international conference focuses on technologies from
knowledge representation techniques and natural language processing
algorithms to dynamic learning approaches. Topics covered include
Data Science for Cognitive Analysis, Real-Time Ubiquitous Data
Science, Platform for Privacy Preserving Data Science, and
Internet-Based Cognitive Platform.
This book presents the most recent challenges and developments in
sustainable computing systems with the objective of promoting
awareness and best practices for the real world. It aims to present
new directions for further research and technology improvements in
this important area.
This book highlights the need for an efficient Handover Decision
(HD) mechanism to perform switches from one network to another and
to provide unified and continuous mobile services that include
seamless connectivity and ubiquitous service access. The author
shows how the HD involves efficiently combining handover initiation
and network selection process. The author describes how the network
selection decision is a challenging task that is a central
component to making HD for any mobile user in a heterogeneous
environment that involves a number of static and dynamic
parameters. The author also discusses prevailing technical
challenges like Dynamic Spectrum Allocation (DSA) methods, spectrum
sensing, cooperative communications, cognitive network architecture
protocol design, cognitive network security challenges and dynamic
adaptation algorithms for cognitive system and the evolving
behavior of systems in general. The book allows the reader to
optimize the sensing time for maximizing the spectrum utilization,
improve the lifetime of the cognitive radio network (CRN) using
active scan spectrum sensing techniques, analyze energy efficiency
of CRN, find a secondary user spectrum allocation, perform dynamic
handovers, and use efficient data communication in the cognitive
networks. Identifies energy efficient spectrum sensing techniques
for Cooperative Cognitive Radio Networks (CRN); Shows how to
maximize the energy capacity by minimizing the outage probability;
Features end-of-chapter summaries, performance measures, and case
studies.
Big data consists of data sets that are too large and complex for
traditional data processing and data management applications.
Therefore, to obtain the valuable information within the data, one
must use a variety of innovative analytical methods, such as web
analytics, machine learning, and network analytics. As the study of
big data becomes more popular, there is an urgent demand for
studies on high-level computational intelligence and computing
services for analyzing this significant area of information
science. Big Data Analytics for Sustainable Computing is a
collection of innovative research that focuses on new computing and
system development issues in emerging sustainable applications.
Featuring coverage on a wide range of topics such as data
filtering, knowledge engineering, and cognitive analytics, this
publication is ideally designed for data scientists, IT
specialists, computer science practitioners, computer engineers,
academicians, professionals, and students seeking current research
on emerging analytical techniques and data processing software.
Recently, there has been a rapid increase in interest regarding
social network analysis in the data mining community. Cognitive
radios are expected to play a major role in meeting this exploding
traffic demand on social networks due to their ability to sense the
environment, analyze outdoor parameters, and then make decisions
for dynamic time, frequency, space, resource allocation, and
management to improve the utilization of mining the social data.
Cognitive Social Mining Applications in Data Analytics and
Forensics is an essential reference source that reviews cognitive
radio concepts and examines their applications to social mining
using a machine learning approach so that an adaptive and
intelligent mining is achieved. Featuring research on topics such
as data mining, real-time ubiquitous social mining services, and
cognitive computing, this book is ideally designed for social
network analysts, researchers, academicians, and industry
professionals.
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