Advances in Artificial Life, ECAL 2013 2013
DOI: 10.7551/978-0-262-31709-2-ch130
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Enhancing the learning capacity of immunological algorithms: a comprehensive study of learning operators

Abstract: Immunological algorithms are a kind of bio-inspired intelligence methods which draw inspiration from natural immune systems. The problem-solving performance of immunological algorithms mainly lies on the utilization of learning (i.e. mutation) operators. In this paper, nine different learning operators in a standard immune algorithmic framework are investigated. These learning operators consist of eight existing operators and a newly proposed search direction based operator. Experiments are conducted based on … Show more

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Cited by 2 publications
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“…In other words, each learning operator is designed for specific problems with distinct characteristics. For example, the gaussian mutation is more capable of exploitation in small regions of a smooth decision space, while cauchy mutation enables the search to carry out long distance jumps, thus specializing in exploring unvisited regions [32], [37]. As a result, cauchy mutation is more suit to optimize the problems with plenty of local optima.…”
mentioning
confidence: 99%
“…In other words, each learning operator is designed for specific problems with distinct characteristics. For example, the gaussian mutation is more capable of exploitation in small regions of a smooth decision space, while cauchy mutation enables the search to carry out long distance jumps, thus specializing in exploring unvisited regions [32], [37]. As a result, cauchy mutation is more suit to optimize the problems with plenty of local optima.…”
mentioning
confidence: 99%