Fast Immune System Inspired Hypermutation Operators for Combinatorial Optimisation
D. Corus, P. S. Oliveto, D. Yazdani

TL;DR
This paper introduces modified hypermutation operators inspired by the immune system that are both efficient at exploration and exploitation in combinatorial optimization, achieving linear speed-ups and outperforming traditional methods.
Contribution
Proposes stochastic evaluation schemes for hypermutation operators that improve efficiency and remove the need for the stop at first constructive mutation mechanism.
Findings
Proven linear speed-ups for NP-hard problem solutions.
Demonstrated superiority over traditional hypermutation operators.
Identified power-law distribution as optimal for evaluation scheme.
Abstract
Various studies have shown that immune system inspired hypermutation operators can allow artificial immune systems (AIS) to be very efficient at escaping local optima of multimodal optimisation problems. However, this efficiency comes at the expense of considerably slower runtimes during the exploitation phase compared to standard evolutionary algorithms. We propose modifications to the traditional `hypermutations with mutation potential' (HMP) that allow them to be efficient at exploitation as well as maintaining their effective explorative characteristics. Rather than deterministically evaluating fitness after each bit-flip of a hypermutation, we sample the fitness function stochastically with a `parabolic' distribution which allows the `stop at first constructive mutation' (FCM) variant of HMP to reduce the linear amount of wasted function evaluations when no improvement is found to…
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Taxonomy
TopicsImmune Cell Function and Interaction · Artificial Immune Systems Applications · T-cell and B-cell Immunology
