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This book provides a general and comprehensible overview of
imbalanced learning. It contains a formal description of a problem,
and focuses on its main features, and the most relevant proposed
solutions. Additionally, it considers the different scenarios in
Data Science for which the imbalanced classification can create a
real challenge. This book stresses the gap with standard
classification tasks by reviewing the case studies and ad-hoc
performance metrics that are applied in this area. It also covers
the different approaches that have been traditionally applied to
address the binary skewed class distribution. Specifically, it
reviews cost-sensitive learning, data-level preprocessing methods
and algorithm-level solutions, taking also into account those
ensemble-learning solutions that embed any of the former
alternatives. Furthermore, it focuses on the extension of the
problem for multi-class problems, where the former classical
methods are no longer to be applied in a straightforward way. This
book also focuses on the data intrinsic characteristics that are
the main causes which, added to the uneven class distribution,
truly hinders the performance of classification algorithms in this
scenario. Then, some notes on data reduction are provided in order
to understand the advantages related to the use of this type of
approaches. Finally this book introduces some novel areas of study
that are gathering a deeper attention on the imbalanced data issue.
Specifically, it considers the classification of data streams,
non-classical classification problems, and the scalability related
to Big Data. Examples of software libraries and modules to address
imbalanced classification are provided. This book is highly
suitable for technical professionals, senior undergraduate and
graduate students in the areas of data science, computer science
and engineering. It will also be useful for scientists and
researchers to gain insight on the current developments in this
area of study, as well as future research directions.
Data Preprocessing for Data Mining addresses one of the most
important issues within the well-known Knowledge Discovery from
Data process. Data directly taken from the source will likely have
inconsistencies, errors or most importantly, it is not ready to be
considered for a data mining process. Furthermore, the increasing
amount of data in recent science, industry and business
applications, calls to the requirement of more complex tools to
analyze it. Thanks to data preprocessing, it is possible to convert
the impossible into possible, adapting the data to fulfill the
input demands of each data mining algorithm. Data preprocessing
includes the data reduction techniques, which aim at reducing the
complexity of the data, detecting or removing irrelevant and noisy
elements from the data. This book is intended to review the tasks
that fill the gap between the data acquisition from the source and
the data mining process. A comprehensive look from a practical
point of view, including basic concepts and surveying the
techniques proposed in the specialized literature, is given.Each
chapter is a stand-alone guide to a particular data preprocessing
topic, from basic concepts and detailed descriptions of classical
algorithms, to an incursion of an exhaustive catalog of recent
developments. The in-depth technical descriptions make this book
suitable for technical professionals, researchers, senior
undergraduate and graduate students in data science, computer
science and engineering.
FOCAPD-19/Proceedings of the 9th International Conference on
Foundations of Computer-Aided Process Design, July 14 - 18, 2019,
compiles the presentations given at the Ninth International
Conference on Foundations of Computer-Aided Process Design,
FOCAPD-2019. It highlights the meetings held at this event that
brings together researchers, educators and practitioners to
identify new challenges and opportunities for process and product
design.
This book provides a general and comprehensible overview of
imbalanced learning. It contains a formal description of a problem,
and focuses on its main features, and the most relevant proposed
solutions. Additionally, it considers the different scenarios in
Data Science for which the imbalanced classification can create a
real challenge. This book stresses the gap with standard
classification tasks by reviewing the case studies and ad-hoc
performance metrics that are applied in this area. It also covers
the different approaches that have been traditionally applied to
address the binary skewed class distribution. Specifically, it
reviews cost-sensitive learning, data-level preprocessing methods
and algorithm-level solutions, taking also into account those
ensemble-learning solutions that embed any of the former
alternatives. Furthermore, it focuses on the extension of the
problem for multi-class problems, where the former classical
methods are no longer to be applied in a straightforward way. This
book also focuses on the data intrinsic characteristics that are
the main causes which, added to the uneven class distribution,
truly hinders the performance of classification algorithms in this
scenario. Then, some notes on data reduction are provided in order
to understand the advantages related to the use of this type of
approaches. Finally this book introduces some novel areas of study
that are gathering a deeper attention on the imbalanced data issue.
Specifically, it considers the classification of data streams,
non-classical classification problems, and the scalability related
to Big Data. Examples of software libraries and modules to address
imbalanced classification are provided. This book is highly
suitable for technical professionals, senior undergraduate and
graduate students in the areas of data science, computer science
and engineering. It will also be useful for scientists and
researchers to gain insight on the current developments in this
area of study, as well as future research directions.
This book offers a comprehensible overview of Big Data
Preprocessing, which includes a formal description of each problem.
It also focuses on the most relevant proposed solutions. This book
illustrates actual implementations of algorithms that helps the
reader deal with these problems. This book stresses the gap that
exists between big, raw data and the requirements of quality data
that businesses are demanding. This is called Smart Data, and to
achieve Smart Data the preprocessing is a key step, where the
imperfections, integration tasks and other processes are carried
out to eliminate superfluous information. The authors present the
concept of Smart Data through data preprocessing in Big Data
scenarios and connect it with the emerging paradigms of IoT and
edge computing, where the end points generate Smart Data without
completely relying on the cloud. Finally, this book provides some
novel areas of study that are gathering a deeper attention on the
Big Data preprocessing. Specifically, it considers the relation
with Deep Learning (as of a technique that also relies in large
volumes of data), the difficulty of finding the appropriate
selection and concatenation of preprocessing techniques applied and
some other open problems. Practitioners and data scientists who
work in this field, and want to introduce themselves to
preprocessing in large data volume scenarios will want to purchase
this book. Researchers that work in this field, who want to know
which algorithms are currently implemented to help their
investigations, may also be interested in this book.
This book offers a comprehensible overview of Big Data
Preprocessing, which includes a formal description of each problem.
It also focuses on the most relevant proposed solutions. This book
illustrates actual implementations of algorithms that helps the
reader deal with these problems. This book stresses the gap that
exists between big, raw data and the requirements of quality data
that businesses are demanding. This is called Smart Data, and to
achieve Smart Data the preprocessing is a key step, where the
imperfections, integration tasks and other processes are carried
out to eliminate superfluous information. The authors present the
concept of Smart Data through data preprocessing in Big Data
scenarios and connect it with the emerging paradigms of IoT and
edge computing, where the end points generate Smart Data without
completely relying on the cloud. Finally, this book provides some
novel areas of study that are gathering a deeper attention on the
Big Data preprocessing. Specifically, it considers the relation
with Deep Learning (as of a technique that also relies in large
volumes of data), the difficulty of finding the appropriate
selection and concatenation of preprocessing techniques applied and
some other open problems. Practitioners and data scientists who
work in this field, and want to introduce themselves to
preprocessing in large data volume scenarios will want to purchase
this book. Researchers that work in this field, who want to know
which algorithms are currently implemented to help their
investigations, may also be interested in this book.
This is a reproduction of a book published before 1923. This book
may have occasional imperfections such as missing or blurred pages,
poor pictures, errant marks, etc. that were either part of the
original artifact, or were introduced by the scanning process. We
believe this work is culturally important, and despite the
imperfections, have elected to bring it back into print as part of
our continuing commitment to the preservation of printed works
worldwide. We appreciate your understanding of the imperfections in
the preservation process, and hope you enjoy this valuable book.
Transboundary Policy Challenges in the Pacific Border Regions of
North America responds to a growing interest in borderlands
environmental policy by highlighting significant transboundary
research and practices being undertaken within and across the
Pacific border regions of North America. The issues explored here
reveal how intricate and interrelated social, economic, and
environmental concerns have become, particularly along borders, as
Canada, Mexico, and the United States collectively search for
sustainable solutions. Growing concern about the seriousness of
environmental problems, particularly in high-growth border areas,
coupled with the rising awareness of the complexities entailed in
wise development decisions, has spurred recognition that new
realities require new responses. Critical for effective
environmental protection, restoration, and education is a sharing
of understanding and effort across borders. Transboundary Policy
Challenges in the Pacific Border Regions of North America
highlights advances in transborder environmental research and
discusses sensible policy directions with particular focus on
critical areas of international concern and engagement: land and
water use planning; regional growth management; trade and
transportation corridors; environmental education; and travel and
tourism. With Contributions By: J.C. Day Donald K. Alper K.S.
Calbick Jose Luis Castru-Ruiz Alejandro Diaz-Bautista David A.
Fraser Salvador Garcia-Martinez Warren G. Gill Duncan Knowler James
Louckey Krista Martinez Martin Medina Jean O. Melious Cristobal
Mendoza John C. Miles John M. Munroe Emma Spencer Norman Hugh
O'Reilly Vicente Sanchez-Munguia Preston L. Schiller Tina Symko
Peter Williams
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