Improving Artificial-Immune-System-based computing by exploiting intrinsic features of computer architectures

Yiqi Deng, P. Bentley, Alvee Momshad
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Abstract

Biological systems have become highly significant for traditional computer architectures as examples of highly complex self-organizing systems that perform tasks in parallel with no centralized control. However, few researchers have compared the suitability of different computing approaches for the unique features of Artificial Immune Systems (AIS) when trying to introduce novel computing architectures, and few consider the practicality of their solutions for real world machine learning problems. We propose that the efficacy of AIS-based computing for tackling real world datasets can be improved by the exploitation of intrinsic features of computer architectures. This paper reviews and evaluates current existing implementation solutions for AIS on different computing paradigms and introduces the idea of “C Principles” and “A Principles”. Three Artificial Immune Systems implemented on different architectures are compared using these principles to examine the possibility of improving AIS through taking advantage of intrinsic hardware features.
利用计算机体系结构的内在特征改进基于人工免疫系统的计算
生物系统作为高度复杂的自组织系统的例子,在没有集中控制的情况下并行执行任务,对传统的计算机体系结构来说已经变得非常重要。然而,在尝试引入新的计算架构时,很少有研究人员比较不同计算方法对人工免疫系统(AIS)独特功能的适用性,也很少有人考虑其解决方案对现实世界机器学习问题的实用性。我们提出,利用计算机体系结构的内在特征,可以提高基于人工智能的计算处理真实世界数据集的效率。本文回顾和评估了目前不同计算范式下AIS的现有实现方案,并介绍了“C原则”和“A原则”的思想。使用这些原理比较了在不同架构上实现的三种人工免疫系统,以检查通过利用固有硬件特性来改进AIS的可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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