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Granular Computing Based Machine Learning

A Big Data Processing Approach

  • Book
  • © 2018

Overview

  • Explores the significant role of granular computing in advancing machine learning towards in-depth processing of big data
  • Introduces the main characteristics of big data, i.e. the five Vs—Volume, Velocity, Variety, Veracity, and Variability
  • Presents popular types of traditional machine learning in terms of their key features and limitations in the context of big data
  • Discusses the need for and different uses of granular-computing-based machine learning
  • Presents several case studies involving big data by using biomedical data and sentiment data, and demonstrates recent advances
  • Includes supplementary material: sn.pub/extras

Part of the book series: Studies in Big Data (SBD, volume 35)

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Table of contents (9 chapters)

Keywords

About this book

This book explores the significant role of granular computing in advancing machine learning towards in-depth processing of big data. It begins by introducing the main characteristics of big data, i.e., the five Vs—Volume, Velocity, Variety, Veracity and Variability. The book explores granular computing as a response to the fact that learning tasks have become increasingly more complex due to the vast and rapid increase in the size of data, and that traditional machine learning has proven too shallow to adequately deal with big data.  
 
Some popular types of traditional machine learning are presented in terms of their key features and limitations in the context of big data. Further, the book discusses why granular-computing-based machine learning is called for, and demonstrates how granular computing concepts can be used in different ways to advance machine learning for big data processing. Several case studies involving big data are presented by using biomedical data and sentiment data, in order to show the advances in big data processing through the shift from traditional machine learning to granular-computing-based machine learning. Finally, the book stresses the theoretical significance, practical importance, methodological impact and philosophical aspects of granular-computing-based machine learning, and suggests several further directions for advancing machine learning to fit the needs of modern industries.


This book is aimed at PhD students, postdoctoral researchers and academics who are actively involved in fundamental research on machine learning or applied research on data mining and knowledge discovery, sentiment analysis, pattern recognition, image processing, computer vision and big data analytics. It will also benefit a broader audience of researchers and practitioners who are actively engaged in the research and development of intelligent systems.


Authors and Affiliations

  • School of Computer Science and Informatics, Cardiff University, Cardiff, United Kingdom

    Han Liu

  • School of Computing, University of Portsmouth, Portsmouth, United Kingdom

    Mihaela Cocea

About the authors

Author 1

Han Liu is currently a Research Associate in Data Science in the School of Computer Science and Informatics at the Cardiff University. He has previously been a Research Associate in Computational Intelligence in the School of Computing at the University of Portsmouth. He received a BSc in Computing from University of Portsmouth in 2011, an MSc in Software Engineering from University of Southampton in 2012, and a PhD in Machine Learning from University of Portsmouth in 2015.

His research interests include data mining, machine learning, rule based systems, granular computing, intelligent systems, fuzzy systems, big data, computational intelligence and applications in cyber security, cyber crime, cyber bullying, cyber hate and pattern recognition.

He published a research monograph with Springer in the third year of his PhD. He also published over 25 papers in the areas such as data mining, machine learning and granular computing. One of his papers wasidentified as a key scientific article contributing to scientific and engineering research excellence by the selection team at Advances in Engineering and the selection rate is less than 0.1% as indicated. He also has a paper selected as a finalist of Lotfi Zadeh Best Paper Award in the 16th International Conference on Machine Learning and Cybernetics (ICMLC 2017) and has another paper nominated for Lotfi Zadeh Best Paper Award in the 15th International Conference on Machine Learning and Cybernetics (ICMLC 2016).

He has been registered as a reviewer for several established journals, such as IEEE Transactions on Fuzzy Systems, and Information Sciences (Elsevier). He has also recently been a member of the programme committee for the 17th UK Workshop on Computational Intelligence (UKCI 2017), the 16th International Conference on Machine Learning and Cybernetics (ICMLC 2017) and the 2nd IET International Conference on Biomedical Image and Signal Processing (ICBISP 2017). He is a member of IEEE and IET.

Author 2

Mihaela Cocea is currently a Senior Lecturer in the School of Computing at the University of Portsmouth. She holds a BSc in Computer Science, a BSc in Psychology and Education and a MSc in Communication and Human Relations from the University of Iasi, Romania. She also has an MSc by Research in Learning Technologies from the National College of Ireland (2007), a PhD in Computer Science from Birkbeck College, University of London, UK (2011), and a Postgraduate Certificate in Learning and Teaching in Higher Education from the University of Portsmouth (2012).

Her research interests are in the area of Intelligent System, focusing on intelligent techniques using data and knowledge engineering to provide adaptation and personalisation, as well as decision support. She has received funding through: (a) scholarships from the National College of Ireland and Birkbeck College, University of London, UK; (b) an internship through the EU Leonardo da Vinci programme; (b) a mobility fellowship from the European Network of Excellence in Technology Enhanced Learning (STELLARnet); (c) research development funds from the University of Portsmouth and (d) travel grants from EATEL (European Association for Technology Enhanced Learning), User Modeling Inc. and NSF (National Science Foundation).

She has published over 75 peer-reviewed papers and has received a Best Project Award at the Summer School on Personalized e-Learning, Dublin (2006), a Best PhD paper award at the 14th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems (2010) and was runner up for the 2011 Best PhD Thesis in the School of Business, Economics & Informatics, Birkbeck College, University of London. She acted as co-chair for the “Architectures, techniques & methodologies for UMAP” track of the 24th ACM Conference on User Modeling, Adaptation and Personalisation (UMAP 2016), the Workshop on Social Media Analysis in conjunction with the 33rd International Conference of the British Computer Society's Specialist Group on Artificial Intelligence (SGAI 2013), and the International Workshop on Sentiment Discovery from Affective Data (SDAD) in conjunction with the European Conference on Machine Learning and Principles and Practice of Knowledge Discovery in Databases (ECML PKDD 2012). She is a member of the IEEE and the IEEE System, Man and Cybernetics Society. 

Bibliographic Information

  • Book Title: Granular Computing Based Machine Learning

  • Book Subtitle: A Big Data Processing Approach

  • Authors: Han Liu, Mihaela Cocea

  • Series Title: Studies in Big Data

  • DOI: https://doi.org/10.1007/978-3-319-70058-8

  • Publisher: Springer Cham

  • eBook Packages: Engineering, Engineering (R0)

  • Copyright Information: Springer International Publishing AG, part of Springer Nature 2018

  • Hardcover ISBN: 978-3-319-70057-1Published: 23 November 2017

  • Softcover ISBN: 978-3-319-88884-2Published: 04 September 2018

  • eBook ISBN: 978-3-319-70058-8Published: 04 November 2017

  • Series ISSN: 2197-6503

  • Series E-ISSN: 2197-6511

  • Edition Number: 1

  • Number of Pages: XV, 113

  • Number of Illustrations: 8 b/w illustrations, 19 illustrations in colour

  • Topics: Computational Intelligence, Big Data, Big Data/Analytics

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