标题: 以关联式法则建立共生式人工免疫系统之抗体集合
Using Association Rules for Creating the Assembly Algorithm of a Symbiotic Artificial Immune System
作者: 周家兴
Chou, Chia-Hsing
林升甫
电控工程研究所
关键字: 原始人工免疫系统;共生式人工免疫系统;频繁样式成长;AIS;SymbAIS;FP-growth
公开日期: 2010
摘要: 在人工免疫系统中,抗体代表其问题解。而由基因演算法中合作式的概念衍伸出了共生式人工免疫系统,而抗体基元(partially specified antibody)在这当中则是代表其部分解。当抗体基元间非线性独立而有相关联性或者面对高维度的问题时,将抗体基元全部放在同一族群一起演化,容易使演算法效能低落。本论文提出以频繁样式成长法寻找抗体基元各维度间的关联性,其关联性的强弱将决定其分类规则。合理的分类规则可以使演算法在效能上有更佳的表现。因此对于共生式人工免疫系统来说,抗体基元分类为整个演化过程中相当重要的一部分。本论文由抗体基元分类根据维度关联性订立分类规则,可视问题不同做调整,在使用上可适用于多种问题类型。
In artificial immune system, antibodies represent the solutions. With the cooperative concept in genetic algorithm, the symbiotic artificial immune system has been developed, and partially specified antibodies are defined as the partial solutions. When the partially specified antibodies are not linear independent; have correlation with the others, or face the high-dimensional problem, put all partially specified antibodies in the same swarm which result in low efficiency in the algorithm. Frequent pattern growth algorithm is adopted in this thesis to find the correlation between each dimension, in which the strength of the connectivity determines whether the classification rules are valid or not. Generally, reasonable classification rules cause the algorithm work more effectively. Hence, for the algorithm, the partially specified antibody classification plays a very important role in the evolutionary process. The classification rules defined in this thesis are determined according to the correlation between each dimension, and they are adjustable under different problem, which greatly enhance the applicability of many kinds of problems.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT079712566
http://hdl.handle.net/11536/44458
显示于类别:Thesis


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