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The book discusses machine learning-based decision-making models,
and presents intelligent, hybrid and adaptive methods and tools for
solving complex learning and decision-making problems under
conditions of uncertainty. Featuring contributions from data
scientists, practitioners and educators, the book covers a range of
topics relating to intelligent systems for decision science, and
examines recent innovations, trends, and practical challenges in
the field. The book is a valuable resource for academics, students,
researchers and professionals wanting to gain insights into
decision-making.
This book discusses the current research and concepts in data
science and how these can be addressed using different
nature-inspired optimization techniques. Focusing on various data
science problems, including classification, clustering,
forecasting, and deep learning, it explores how researchers are
using nature-inspired optimization techniques to find solutions to
these problems in domains such as disease analysis and health care,
object recognition, vehicular ad-hoc networking, high-dimensional
data analysis, gene expression analysis, microgrids, and deep
learning. As such it provides insights and inspiration for
researchers to wanting to employ nature-inspired optimization
techniques in their own endeavors.
The objective of this edited book is to share the outcomes from
various research domains to develop efficient, adaptive, and
intelligent models to handle the challenges related to decision
making. It incorporates the advances in machine intelligent
techniques such as data streaming, classification, clustering,
pattern matching, feature selection, and deep learning in the
decision-making process for several diversified applications such
as agriculture, character recognition, landslide susceptibility,
recommendation systems, forecasting air quality, healthcare,
exchange rate prediction, and image dehazing. It also provides a
premier interdisciplinary platform for scientists, researchers,
practitioners, and educators to share their thoughts in the context
of recent innovations, trends, developments, practical challenges,
and advancements in the field of data mining, machine learning,
soft computing, and decision science. It also focuses on the
usefulness of applied intelligent techniques in the decision-making
process in several aspects. To address these objectives, this
edited book includes a dozen chapters contributed by authors from
around the globe. The authors attempt to solve these complex
problems using several intelligent machine-learning techniques.
This allows researchers to understand the mechanism needed to
harness the decision-making process using machine-learning
techniques for their own respective endeavors.
This book discusses the current research and concepts in data
science and how these can be addressed using different
nature-inspired optimization techniques. Focusing on various data
science problems, including classification, clustering,
forecasting, and deep learning, it explores how researchers are
using nature-inspired optimization techniques to find solutions to
these problems in domains such as disease analysis and health care,
object recognition, vehicular ad-hoc networking, high-dimensional
data analysis, gene expression analysis, microgrids, and deep
learning. As such it provides insights and inspiration for
researchers to wanting to employ nature-inspired optimization
techniques in their own endeavors.
The book discusses machine learning-based decision-making models,
and presents intelligent, hybrid and adaptive methods and tools for
solving complex learning and decision-making problems under
conditions of uncertainty. Featuring contributions from data
scientists, practitioners and educators, the book covers a range of
topics relating to intelligent systems for decision science, and
examines recent innovations, trends, and practical challenges in
the field. The book is a valuable resource for academics, students,
researchers and professionals wanting to gain insights into
decision-making.
The objective of this edited book is to share the outcomes from
various research domains to develop efficient, adaptive, and
intelligent models to handle the challenges related to decision
making. It incorporates the advances in machine intelligent
techniques such as data streaming, classification, clustering,
pattern matching, feature selection, and deep learning in the
decision-making process for several diversified applications such
as agriculture, character recognition, landslide susceptibility,
recommendation systems, forecasting air quality, healthcare,
exchange rate prediction, and image dehazing. It also provides a
premier interdisciplinary platform for scientists, researchers,
practitioners, and educators to share their thoughts in the context
of recent innovations, trends, developments, practical challenges,
and advancements in the field of data mining, machine learning,
soft computing, and decision science. It also focuses on the
usefulness of applied intelligent techniques in the decision-making
process in several aspects. To address these objectives, this
edited book includes a dozen chapters contributed by authors from
around the globe. The authors attempt to solve these complex
problems using several intelligent machine-learning techniques.
This allows researchers to understand the mechanism needed to
harness the decision-making process using machine-learning
techniques for their own respective endeavors.
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