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Research on artificial immune algorithm based on controllable optimal objectives

机译:基于可控最优目标的人工免疫算法研究

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We investigated several existing artificial immune models and there are not involve object controlled function and possess a memory network with dynamic change. The paper proposed a clustering algorithm of artificial immune network based on controllable optimal objectives. In the algorithm, the compression and clustering are abstracted as a multi-objective planning problem. The learning ability of immune system is improved by adopting the pool of memory cells strategy. The simulation of kernel clustering shows a satisfying result can be acquired by using the immune model with controllable optimal objectives.
机译:我们研究了几种现有的人工免疫模型,这些模型不涉及对象控制功能,而是具有动态变化的内存网络。提出了一种基于可控最优目标的人工免疫网络聚类算法。在该算法中,压缩和聚类被抽象为一个多目标规划问题。通过采用记忆细胞池策略来提高免疫系统的学习能力。核聚类的仿真表明,使用具有可控最佳目标的免疫模型可以获得令人满意的结果。

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