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Showing 1 - 11 of
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This book highlights recent research advances in unsupervised
learning using natural computing techniques such as artificial
neural networks, evolutionary algorithms, swarm intelligence,
artificial immune systems, artificial life, quantum computing, DNA
computing, and others. The book also includes information on the
use of natural computing techniques for unsupervised learning
tasks. It features several trending topics, such as big data
scalability, wireless network analysis, engineering optimization,
social media, and complex network analytics. It shows how these
applications have triggered a number of new natural computing
techniques to improve the performance of unsupervised learning
methods. With this book, the readers can easily capture new
advances in this area with systematic understanding of the scope in
depth. Readers can rapidly explore new methods and new applications
at the junction between natural computing and unsupervised
learning. Includes advances on unsupervised learning using natural
computing techniques Reports on topics in emerging areas such as
evolutionary multi-objective unsupervised learning Features natural
computing techniques such as evolutionary multi-objective
algorithms and many-objective swarm intelligence algorithms
This volume gives an overview of the state-of-the-art in
system-level design trade-off explorations for concurrent tasks
running on embedded heterogeneous multiple processors. The targeted
application domain covers complex embedded real-time multi-media
and communication applications. Many of these applications are
concurrent in the sense that multiple subsystems can be running
simultaneously. Also, these applications are so dynamic at run-time
that the designs based on the worst case execution times are
inefficient in terms of resource allocation (e.g., energy budgets).
A novel systematical approach is clearly necessary in the area of
system-level design for the embedded systems where those concurrent
and dynamic applications are mapped. This material is mainly based
on research at IMEC and its international university network
partners in this area in the period 1997-2006.
This volume explores methods and protocols for detecting epistasis
from genetic data. Chapters provide methods and protocols
demonstrating approaches to identify epistasis, genetic epistasis
testing, genome-wide epistatic SNP networks, epistasis detection
through machine learning, and complex interaction analysis using
trigenic synthetic genetic array ( -SGA). Written in the highly
successful Methods in Molecular Biology series format, chapters
include introductions to their respective topics, application
details for both the expert and non-expert reader, and tips on
troubleshooting and avoiding known pitfalls. Authoritative and
cutting-edge, Epistasis: Methods and Protocols aims to ensure
successful results in the further study of this vital field.
"Simulating Evolution in Asexual Populations with Epistasis" is
available open access under a Creative Commons Attribution 4.0
International License via link.springer.com.
The advances in biotechnology such as the next generation
sequencing technologies are occurring at breathtaking speed.
Advances and breakthroughs give competitive advantages to those who
are prepared. However, the driving force behind the positive
competition is not only limited to the technological advancement,
but also to the companion data analytical skills and computational
methods which are collectively called computational biology and
bioinformatics. Without them, the biotechnology-output data by
itself is raw and perhaps meaningless. To raise such awareness, we
have collected the state-of-the-art research works in computational
biology and bioinformatics with a thematic focus on gene regulation
in this book. This book is designed to be self-contained and
comprehensive, targeting senior undergraduates and junior graduate
students in the related disciplines such as bioinformatics,
computational biology, biostatistics, genome science, computer
science, applied data mining, applied machine learning, life
science, biomedical science, and genetics. In addition, we believe
that this book will serve as a useful reference for both
bioinformaticians and computational biologists in the post-genomic
era.
The advances in biotechnology such as the next generation
sequencing technologies are occurring at breathtaking speed.
Advances and breakthroughs give competitive advantages to those who
are prepared. However, the driving force behind the positive
competition is not only limited to the technological advancement,
but also to the companion data analytical skills and computational
methods which are collectively called computational biology and
bioinformatics. Without them, the biotechnology-output data by
itself is raw and perhaps meaningless. To raise such awareness, we
have collected the state-of-the-art research works in computational
biology and bioinformatics with a thematic focus on gene regulation
in this book. This book is designed to be self-contained and
comprehensive, targeting senior undergraduates and junior graduate
students in the related disciplines such as bioinformatics,
computational biology, biostatistics, genome science, computer
science, applied data mining, applied machine learning, life
science, biomedical science, and genetics. In addition, we believe
that this book will serve as a useful reference for both
bioinformaticians and computational biologists in the post-genomic
era.
This contributed volume explores the emerging intersection between
big data analytics and genomics. Recent sequencing technologies
have enabled high-throughput sequencing data generation for
genomics resulting in several international projects which have led
to massive genomic data accumulation at an unprecedented pace. To
reveal novel genomic insights from this data within a reasonable
time frame, traditional data analysis methods may not be sufficient
or scalable, forcing the need for big data analytics to be
developed for genomics. The computational methods addressed in the
book are intended to tackle crucial biological questions using big
data, and are appropriate for either newcomers or veterans in the
field.This volume offers thirteen peer-reviewed contributions,
written by international leading experts from different regions,
representing Argentina, Brazil, China, France, Germany, Hong Kong,
India, Japan, Spain, and the USA. In particular, the book surveys
three main areas: statistical analytics, computational analytics,
and cancer genome analytics. Sample topics covered include:
statistical methods for integrative analysis of genomic data,
computation methods for protein function prediction, and
perspectives on machine learning techniques in big data mining of
cancer. Self-contained and suitable for graduate students, this
book is also designed for bioinformaticians, computational
biologists, and researchers in communities ranging from genomics,
big data, molecular genetics, data mining, biostatistics,
biomedical science, cancer research, medical research, and biology
to machine learning and computer science. Readers will find this
volume to be an essential read for appreciating the role of big
data in genomics, making this an invaluable resource for
stimulating further research on the topic.
This volume explores methods and protocols for detecting epistasis
from genetic data. Chapters provide methods and protocols
demonstrating approaches to identify epistasis, genetic epistasis
testing, genome-wide epistatic SNP networks, epistasis detection
through machine learning, and complex interaction analysis using
trigenic synthetic genetic array ( -SGA). Written in the highly
successful Methods in Molecular Biology series format, chapters
include introductions to their respective topics, application
details for both the expert and non-expert reader, and tips on
troubleshooting and avoiding known pitfalls. Authoritative and
cutting-edge, Epistasis: Methods and Protocols aims to ensure
successful results in the further study of this vital field.
"Simulating Evolution in Asexual Populations with Epistasis" is
available open access under a Creative Commons Attribution 4.0
International License via link.springer.com.
This contributed volume explores the emerging intersection between
big data analytics and genomics. Recent sequencing technologies
have enabled high-throughput sequencing data generation for
genomics resulting in several international projects which have led
to massive genomic data accumulation at an unprecedented pace. To
reveal novel genomic insights from this data within a reasonable
time frame, traditional data analysis methods may not be sufficient
or scalable, forcing the need for big data analytics to be
developed for genomics. The computational methods addressed in the
book are intended to tackle crucial biological questions using big
data, and are appropriate for either newcomers or veterans in the
field.This volume offers thirteen peer-reviewed contributions,
written by international leading experts from different regions,
representing Argentina, Brazil, China, France, Germany, Hong Kong,
India, Japan, Spain, and the USA. In particular, the book surveys
three main areas: statistical analytics, computational analytics,
and cancer genome analytics. Sample topics covered include:
statistical methods for integrative analysis of genomic data,
computation methods for protein function prediction, and
perspectives on machine learning techniques in big data mining of
cancer. Self-contained and suitable for graduate students, this
book is also designed for bioinformaticians, computational
biologists, and researchers in communities ranging from genomics,
big data, molecular genetics, data mining, biostatistics,
biomedical science, cancer research, medical research, and biology
to machine learning and computer science. Readers will find this
volume to be an essential read for appreciating the role of big
data in genomics, making this an invaluable resource for
stimulating further research on the topic.
A genuinely useful text that gives an overview of the
state-of-the-art in system-level design trade-off explorations for
concurrent tasks running on embedded heterogeneous multiple
processors. The targeted application domain covers complex embedded
real-time multi-media and communication applications. This material
is mainly based on research at IMEC and its international
university network partners in this area over the last decade. In
all, the material those in the digital signal processing industry
will find here is bang up-to-date.
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