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MAIM: A Novel Hybrid Bio-inspired Algorithm for Classification

机译:MAIM:一种新型的分类混合生物启发算法

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The immune system is arguably one of nature’s most highly adaptive, distributed and self-organising systems. It has the property of being able to recognise anomalies — something that deviates from the common rule. The work herein exploits the immune system’s inherently distributed nature in order to enhance classification efficiency and accuracy over that of a more traditional Artificial Immune System (AIS). To this end a novel hybrid classification algorithm MAIM is proposed, combining AIS with an Island Model Genetic Algorithm (IGA). The work herein presents the key features of the MAIM model and investigates the decisions made in the light of the accuracy and efficiency improvements sought.
机译:免疫系统可以说是自然最适应,分布式和自我组织系统之一。它具有能够识别异常的财产 - 偏离共同规则的东西。这里的作品利用免疫系统本质上分布性质,以提高更传统的人工免疫系统(AIS)的分类效率和准确性。为此,提出了一种新的混合分类算法Maim,将AIS与岛式模型遗传算法(IgA)组合。这里的作品呈现了MAIM模型的关键特征,并调查根据所寻求的准确性和效率改进所做的决定。

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