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Recent Advances in Artificial Immune Systems: Models and Applications

机译:人工免疫系统的最新进展:模型与应用

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The immune system is a remarkable information processing and self learning system that offers inspiration to build artificial immune system (AIS). The field of AIS has obtained a significant degree of success as a branch of Computational Intelligence since it emerged in the 1990s. This paper surveys the major works in the AIS field, in particular, it explores up-to-date advances in applied AIS during the last few years. This survey has revealed that recent research is centered on four major AIS algorithms: (1) negative selection algorithms; (2) artificial immune networks; (3) clonal selection algorithms; (4) Danger Theory and dendritic cell algorithms. However, other aspects of the biological immune system are motivating computer scientists and engineers to develop new models and problem solving methods. Though an extensive amount of AIS applications has been developed, the success of these applications is still limited by the lack of any exemplars that really stand out as killer AIS applications.
机译:免疫系统是卓越的信息处理和自我学习系统,可为建立人工免疫系统(AIS)提供灵感。自1990年代以来,作为计算智能的分支,AIS领域已取得了相当大的成功。本文概述了AIS领域的主要工作,尤其是探讨了过去几年中应用AIS的最新进展。这项调查显示,最近的研究集中在四种主要的AIS算法上:(1)否定选择算法; (2)人工免疫网络; (3)克隆选择算法; (4)危险理论和树突状细胞算法。但是,生物免疫系统的其他方面正在激励计算机科学家和工程师开发新的模型和解决问题的方法。尽管已经开发了大量的AIS应用程序,但是由于缺少任何真正能成为杀手级AIS应用程序的范例,这些应用程序的成功仍然受到限制。

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