Machine Learning Paradigms

Artificial Immune Systems and their Applications in Software Personalization

  • Dionisios N.┬áSotiropoulos
  • George A.┬áTsihrintzis

Part of the Intelligent Systems Reference Library book series (ISRL, volume 118)

Table of contents

  1. Front Matter
    Pages i-xvi
  2. Machine Learning Fundamentals

    1. Front Matter
      Pages 1-1
    2. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 3-8
    3. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 9-50
    4. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 51-78
    5. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 79-106
    6. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 107-129
  3. Artificial Immune Systems

    1. Front Matter
      Pages 131-131
    2. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 133-157
    3. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 159-235
    4. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 237-323
    5. Dionisios N. Sotiropoulos, George A. Tsihrintzis
      Pages 325-327

About this book


The topic of this monograph falls within the, so-called, biologically motivated computing paradigm, in which biology provides the source of models and inspiration towards the development of computational intelligence and machine learning systems. Specifically, artificial immune systems are presented as a valid metaphor towards the creation of abstract and high level representations of biological components or functions that lay the foundations for an alternative machine learning paradigm. Therefore, focus is given on addressing the primary problems of Pattern Recognition by developing Artificial Immune System-based machine learning algorithms for the problems of Clustering, Classification and One-Class Classification. Pattern Classification, in particular, is studied within the context of the Class Imbalance Problem. The main source of inspiration stems from the fact that the Adaptive Immune System constitutes one of the most sophisticated biological systems that is exceptionally evolved in order to continuously address an extremely unbalanced pattern classification problem, namely, the self / non-self discrimination process.  The experimental results presented in this monograph involve a wide range of degenerate binary classification problems where the minority class of interest is to be recognized against the vast volume of the majority class of negative patterns. In this context, Artificial Immune Systems are utilized for the development of personalized software as the core mechanism behind the implementation of Recommender Systems.

The book will be useful to researchers, practitioners and graduate students dealing with Pattern Recognition and Machine Learning and their applications in Personalized Software and Recommender Systems. It is intended for both the expert/researcher in these fields, as well as for the general reader in the field of Computational Intelligence and, more generally, Computer Science who wishes to learn more about the field of Intelligent Computing Systems and its applications. An extensive list of bibliographic references at the end of each chapter guides the reader to probe further into application area of interest to him/her.


Artificial Immune Systems Immune Systems Intelligent Systems Machine Learning Pattern Recognition

Authors and affiliations

  • Dionisios N.┬áSotiropoulos
    • 1
  • George A.┬áTsihrintzis
    • 2
  1. 1.University of PiraeusPiraeusGreece
  2. 2.University of Piraeus PiraeusGreece

Bibliographic information

  • DOI
  • Copyright Information Springer International Publishing AG 2017
  • Publisher Name Springer, Cham
  • eBook Packages Engineering Engineering (R0)
  • Print ISBN 978-3-319-47192-1
  • Online ISBN 978-3-319-47194-5
  • Series Print ISSN 1868-4394
  • Series Online ISSN 1868-4408
  • Buy this book on publisher's site
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