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The book will provide: 1) In depth explanation of rough set theory
along with examples of the concepts. 2) Detailed discussion on idea
of feature selection. 3) Details of various representative and
state of the art feature selection techniques along with
algorithmic explanations. 4) Critical review of state of the art
rough set based feature selection methods covering strength and
weaknesses of each. 5) In depth investigation of various
application areas using rough set based feature selection. 6)
Complete Library of Rough Set APIs along with complexity analysis
and detailed manual of using APIs 7) Program files of various
representative Feature Selection algorithms along with explanation
of each. The book will be a complete and self-sufficient source
both for primary and secondary audience. Starting from basic
concepts to state-of-the art implementation, it will be a constant
source of help both for practitioners and researchers. Book will
provide in-depth explanation of concepts supplemented with working
examples to help in practical implementation. As far as practical
implementation is concerned, the researcher/practitioner can fully
concentrate on his/her own work without any concern towards
implementation of basic RST functionality. Providing complexity
analysis along with full working programs will further simplify
analysis and comparison of algorithms.
This textbook comprehensively covers both fundamental and advanced
topics related to data science. Data science is an umbrella term
that encompasses data analytics, data mining, machine learning, and
several other related disciplines. The chapters of this book are
organized into three parts: The first part (chapters 1 to 3) is a
general introduction to data science. Starting from the basic
concepts, the book will highlight the types of data, its use, its
importance and issues that are normally faced in data analytics,
followed by presentation of a wide range of applications and widely
used techniques in data science. The second part, which has been
updated and considerably extended compared to the first edition, is
devoted to various techniques and tools applied in data science.
Its chapters 4 to 10 detail data pre-processing, classification,
clustering, text mining, deep learning, frequent pattern mining,
and regression analysis. Eventually, the third part (chapters 11
and 12) present a brief introduction to Python and R, the two main
data science programming languages, and shows in a completely new
chapter practical data science in the WEKA (Waikato Environment for
Knowledge Analysis), an open-source tool for performing different
machine learning and data mining tasks. An appendix explaining the
basic mathematical concepts of data science completes the book.
This textbook is suitable for advanced undergraduate and graduate
students as well as for industrial practitioners who carry out
research in data science. They both will not only benefit from the
comprehensive presentation of important topics, but also from the
many application examples and the comprehensive list of further
readings, which point to additional publications providing more
in-depth research results or provide sources for a more detailed
description of related topics. "This book delivers a
systematic, carefully thoughtful material on Data
Science."Â from the Foreword by Witold Pedrycz, U Alberta,
Canada.
This book provides a comprehensive introduction to rough set-based
feature selection. Rough set theory, first proposed by Zdzislaw
Pawlak in 1982, continues to evolve. Concerned with the
classification and analysis of imprecise or uncertain information
and knowledge, it has become a prominent tool for data analysis,
and enables the reader to systematically study all topics in rough
set theory (RST) including preliminaries, advanced concepts, and
feature selection using RST. The book is supplemented with an
RST-based API library that can be used to implement several RST
concepts and RST-based feature selection algorithms. The book
provides an essential reference guide for students, researchers,
and developers working in the areas of feature selection, knowledge
discovery, and reasoning with uncertainty, especially those who are
working in RST and granular computing. The primary audience of this
book is the research community using rough set theory (RST) to
perform feature selection (FS) on large-scale datasets in various
domains. However, any community interested in feature selection
such as medical, banking, and finance can also benefit from the
book. This second edition also covers the dominance-based rough set
approach and fuzzy rough sets. The dominance-based rough set
approach (DRSA) is an extension of the conventional rough set
approach and supports the preference order using the dominance
principle. In turn, fuzzy rough sets are fuzzy generalizations of
rough sets. An API library for the DRSA is also provided with the
second edition of the book.
This book provides a comprehensive introduction to rough set-based
feature selection. Rough set theory, first proposed by Zdzislaw
Pawlak in 1982, continues to evolve. Concerned with the
classification and analysis of imprecise or uncertain information
and knowledge, it has become a prominent tool for data analysis,
and enables the reader to systematically study all topics in rough
set theory (RST) including preliminaries, advanced concepts, and
feature selection using RST. The book is supplemented with an
RST-based API library that can be used to implement several RST
concepts and RST-based feature selection algorithms. The book
provides an essential reference guide for students, researchers,
and developers working in the areas of feature selection, knowledge
discovery, and reasoning with uncertainty, especially those who are
working in RST and granular computing. The primary audience of this
book is the research community using rough set theory (RST) to
perform feature selection (FS) on large-scale datasets in various
domains. However, any community interested in feature selection
such as medical, banking, and finance can also benefit from the
book. This second edition also covers the dominance-based rough set
approach and fuzzy rough sets. The dominance-based rough set
approach (DRSA) is an extension of the conventional rough set
approach and supports the preference order using the dominance
principle. In turn, fuzzy rough sets are fuzzy generalizations of
rough sets. An API library for the DRSA is also provided with the
second edition of the book.
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