Skip to main content

Research Repository

Advanced Search

Boosting the Immune System

McEwan, Chris; Hart, Emma; Paechter, Ben

Authors

Chris McEwan



Abstract

Much of contemporary research in Artificial Immune Systems (AIS) has partitioned into either algorithmic machine learning and optimisation, or modelling biologically plausible dynamical systems, with little overlap between. Although the balance is latterly beginning to be redressed (e.g. [18]), we propose that this dichotomy is somewhat to blame for the lack of significant advancement of the field in either direction. This paper outlines how an inappropriate interpretation of Perelson’s shape-space formalism has largely contributed to this dichotomy, as it neither scales to machine-learning requirements nor makes any operational distinction between signals and context.

We illustrate these issues and attempt to derive both a more biologically plausible and statistically solid foundation for an online, unsupervised artificial immune system. By extending a mathematical model of immunological tolerance, and grounding it in contemporary machine learning, we minimise any recourse to “reasoning by metaphor” and demonstrate one view of how both research agendas might still complement each other.

Conference Name International Conference on Artificial Immune Systems ICARIS 2008
Start Date Aug 10, 2008
End Date Aug 13, 2008
Publication Date 2008
Deposit Date Aug 1, 2016
Electronic ISSN 1611-3349
Publisher Springer
Pages 316-327
Series Title Lecture Notes in Computer Science
Series Number 5132
Series ISSN 0302-9743
Book Title Artificial Immune Systems
ISBN 9783540850717; 9783540850724
DOI https://doi.org/10.1007/978-3-540-85072-4_28
Keywords Immunological Tolerance Immune Network Clonal Selection Algorithm Peripheral Immune System Immune Repertoire
Public URL http://researchrepository.napier.ac.uk/Output/321959