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These proceedings gather outstanding research papers presented at
the Second International Conference on Data Engineering 2015
(DaEng-2015) and offer a consolidated overview of the latest
developments in databases, information retrieval, data mining and
knowledge management. The conference brought together researchers
and practitioners from academia and industry to address key
challenges in these fields, discuss advanced data engineering
concepts and form new collaborations. The topics covered include
but are not limited to: * Data engineering * Big data * Data and
knowledge visualization * Data management * Data mining and
warehousing * Data privacy & security * Database theory *
Heterogeneous databases * Knowledge discovery in databases *
Mobile, grid and cloud computing * Knowledge management * Parallel
and distributed data * Temporal data * Web data, services and
information engineering * Decision support systems * E-Business
engineering and management * E-commerce and e-learning *
Geographical information systems * Information management *
Information quality and strategy * Information retrieval,
integration and visualization * Information security * Information
systems and technologies
This book unfolds ways to transform data into innovative solutions
perceived as new remarkable and meaningful value. It offers
practical views of the concepts and techniques readers need to get
the most out of their large-scale research and data mining
projects. It strides them through the data-analytical thinking,
circumvents the difficulty in deciphering complex data systems and
obtaining commercialization value from the data. Also known as
data-driven science, soft computing and data mining disciplines
cover a broad spectrum, an interdisciplinary field of scientific
methods and processes. The book, Recent Advances in Soft Computing
and Data Mining, delivers sufficient knowledge to tackle a wide
range of issues seen in complex systems. This is done by exploring
a vast combination of practices and applications by incorporating
these two domains. To thrive in these data-driven ecosystems,
researchers, data analysts, and practitioners must choose the best
design to approach the problem with the most efficient tools and
techniques. To thrive in these data-driven ecosystems, researchers,
data analysts, and practitioners must understand the design choice
and options of these approaches, thus to better appreciate the
concepts, tools, and techniques used.
This book provides an introduction to data science and offers a
practical overview of the concepts and techniques that readers need
to get the most out of their large-scale data mining projects and
research studies. It discusses data-analytical thinking, which is
essential to extract useful knowledge and obtain commercial value
from the data. Also known as data-driven science, soft computing
and data mining disciplines cover a broad interdisciplinary range
of scientific methods and processes. The book provides readers with
sufficient knowledge to tackle a wide range of issues in complex
systems, bringing together the scopes that integrate soft computing
and data mining in various combinations of applications and
practices, since to thrive in these data-driven ecosystems,
researchers, data analysts and practitioners must understand the
design choice and options of these approaches. This book helps
readers to solve complex benchmark problems and to better
appreciate the concepts, tools and techniques used.
This book offers a systematic overview of the concepts and
practical techniques that readers need to get the most out of their
large-scale data mining projects and research studies. It guides
them through the data-analytical thinking essential to extract
useful information and obtain commercial value from the data.
Presenting the outcomes of International Conference on Soft
Computing and Data Mining (SCDM-2017), held in Johor, Malaysia on
February 6-8, 2018, it provides a well-balanced integration of soft
computing and data mining techniques. The two constituents are
brought together in various combinations of applications and
practices. To thrive in these data-driven ecosystems, researchers,
engineers, data analysts, practitioners, and managers must
understand the design choice and options of soft computing and data
mining techniques, and as such this book is a valuable resource,
helping readers solve complex benchmark problems and better
appreciate the concepts, tools, and techniques employed.
This book provides a comprehensive introduction and practical look
at the concepts and techniques readers need to get the most out of
their data in real-world, large-scale data mining projects. It also
guides readers through the data-analytic thinking necessary for
extracting useful knowledge and business value from the data. The
book is based on the Soft Computing and Data Mining (SCDM-16)
conference, which was held in Bandung, Indonesia on August
18th-20th 2016 to discuss the state of the art in soft computing
techniques, and offer participants sufficient knowledge to tackle a
wide range of complex systems. The scope of the conference is
reflected in the book, which presents a balance of soft computing
techniques and data mining approaches. The two constituents are
introduced to the reader systematically and brought together using
different combinations of applications and practices. It offers
engineers, data analysts, practitioners, scientists and managers
the insights into the concepts, tools and techniques employed, and
as such enables them to better understand the design choice and
options of soft computing techniques and data mining approaches
that are necessary to thrive in this data-driven ecosystem.
This book constitutes the refereed proceedings of the First
International Conference on Soft Computing and Data Mining, SCDM
2014, held in Universiti Tun Hussein Onn Malaysia, in June
16th-18th, 2014. The 65 revised full papers presented in this book
were carefully reviewed and selected from 145 submissions, and
organized into two main topical sections; Data Mining and Soft
Computing. The goal of this book is to provide both theoretical
concepts and, especially, practical techniques on these exciting
fields of soft computing and data mining, ready to be applied in
real-world applications. The exchanges of views pertaining future
research directions to be taken in this field and the resultant
dissemination of the latest research findings makes this work of
immense value to all those having an interest in the topics
covered.
This book unfolds ways to transform data into innovative solutions
perceived as new remarkable and meaningful value. It offers
practical views of the concepts and techniques readers need to get
the most out of their large-scale research and data mining
projects. It strides them through the data-analytical thinking,
circumvents the difficulty in deciphering complex data systems and
obtaining commercialization value from the data. Also known as
data-driven science, soft computing and data mining disciplines
cover a broad spectrum, an interdisciplinary field of scientific
methods and processes. The book, Recent Advances in Soft Computing
and Data Mining, delivers sufficient knowledge to tackle a wide
range of issues seen in complex systems. This is done by exploring
a vast combination of practices and applications by incorporating
these two domains. To thrive in these data-driven ecosystems,
researchers, data analysts, and practitioners must choose the best
design to approach the problem with the most efficient tools and
techniques. To thrive in these data-driven ecosystems, researchers,
data analysts, and practitioners must understand the design choice
and options of these approaches, thus to better appreciate the
concepts, tools, and techniques used.
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