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Immunos-81: the misunderstood artificial immune system

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posted on 2024-07-13, 05:31 authored by Jason Brownlee
The vertebrate immune system is a robust and powerful information process system that demonstrates features such as distributed control, parallel processing and adaptation and learning via experience. Artificial Immune Systems (AIS) are machine-learning algorithms that embody some of the principles and attempt to take advantages of the benefits of natural immune systems for use in tackling complex problem domains. The Immunos-81 is an AIS technique designed for classification problem domains. It is a technique that has been vaguely described and mentioned in the field of AIS research though has not been investigated in depth nor has the algorithm or its results been reproduced. This work rigorously analyses the proposed classification system and describes both its biological inspiration and its computational implementation in detail. Two implementations are provided that reproduces the general themes of the approach and show similar results. Finally the general themes of the system are integrated with elements from clonal selection inspired algorithms. A new classification algorithm is designed implemented and tested called Immunos-99 that exhibits desirable characteristics such as excellent data reduction and moderate classification accuracy and remains an area for further research.

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Parent title

Jason Brownlee: technical reports

Publisher

Swinburne University of Technology

Copyright statement

Copyright © 2005 Jason Brownlee.

Language

eng

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