This book covers the state of the art in learning algorithms with an
inclusion of semi-supervised methods to provide a broad scope of
clustering and classification solutions for big data applications. Case
studies and best practices are included along with theoretical models of
learning for a comprehensive reference to the field. The book is
organized into eight chapters that cover the following topics:
discretization, feature extraction and selection, classification,
clustering, topic modeling, graph analysis and applications.
Practitioners and graduate students can use the volume as an important
reference for their current and future research and faculty will find
the volume useful for assignments in presenting current approaches to
unsupervised and semi-supervised learning in graduate-level seminar
courses. The book is based on selected, expanded papers from the Fourth
International Conference on Soft Computing in Data Science (2018).
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Includes new advances in clustering and classification using
semi-supervised and unsupervised learning;
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Address new challenges arising in feature extraction and selection
using semi-supervised and unsupervised learning;
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Features applications from healthcare, engineering, and text/social
media mining that exploit techniques from semi-supervised and
unsupervised learning.