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The Dual Negative Selection Algorithm Based on Pattern Recognition Receptor Theory and Its Application in Two-class Data Classification

机译:基于模式识别受体理论的双负选择算法及其在双层数据分类中的应用

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摘要

—Negative Selection Algorithm (NSA) is an important artificial immune data classifiers generation method in Artificial Immune System (AIS) research. However, with the increase of the data dimensions, the current data classification algorithms which based on NSA exist the problems of excessive number of generated classifiers and too low classifier generation efficiency. In this paper, the Dual Negative Selection Algorithm based on Pattern Recognition Receptor theory (PRR-2NSA) is proposed, which simulates the process of Antigen Presenting Cells (APC) recognized the Pathogen-Associated Molecular Patterns (PAMP) to trigger the immune response. The PRR-2NSA algorithm generates the APC classifier based on training set clustering firstly, and then generates the T-cell classifiers within the coverage of the APC classifier set with dual negative selection algorithm (2NSA) secondly. The 2NSA avoids the unnecessary and time-consuming self-tolerance process of candidate classifier within the coverage of existing mature classifiers, thus greatly reduces classifier set size, significantly improves classifier generation efficiency. The PRR-2NSA introduces the APC classifiers’ co-stimulation to the T-Cell classifier, which reduce the occurrence of false classification on one hand, and accelerate the data classification efficiency on the other hand. Theoretical analysis and simulations show that the PRR-2NSA algorithm effectively improves classification efficiency and reduces the time cost of algorithm.
机译:- 中间选择算法(NSA)是人工免疫系统(AIS)研究中的重要人工免疫数据分类剂生成方法。然而,随着数据尺寸的增加,基于NSA的当前数据分类算法存在过多的生成分类器和过低的分类器生成效率的问题。本文提出了基于模式识别受体理论(PRR-2NSA)的双负选择算法,其模拟抗原呈递细胞(APC)的过程认识到病原体相关的分子模式(PAMP)来引发免疫应答。 PRR-2NSA算法首先基于训练集聚类生成APC分类器,然后在具有双负选择算法(2NSA)的APC分类器的覆盖范围内生成T细胞分类器。 2NSA避免了在现有成熟分类器的覆盖范围内的候选分类器的不必要和耗时的自公差过程,从而大大降低了分类器集大小,显着提高了分类器生成效率。 PRR-2NSA将APC分类器的共刺激引入T细胞分类器,这在一方面减少了错误分类的发生,另一方面加速了数据分类效率。理论分析和仿真表明,PRR-2NSA算法有效提高了分类效率并降低了算法的时间成本。

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