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Self-Nonself Recognition Algorithm Based on Positive and Negative Selection

机译:基于正负选择的自我非自我识别算法

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In this paper, we propose a self-nonself recognition algorithm based on positive and negative selection used in the developing process of T cells. The anomaly detection algorithm based on negative selection is a representative model among self-recognition method and it has been applied to computer immune systems in recent years. In biological immune systems, T cells are produced through both positive and negative selection. Positive selection is the process used to determine a MHC receptor that recognizes self-molecules. Negative selection is the process used to determine an antigen receptor that recognizes antigens, or nonself cells. In this paper, we propose a self-recognition algorithm based on the positive selection and also propose a fusion algorithm based on both positive and negative selection. To verify the effectiveness of the proposed system, we show simulation results for detecting some infected data obtained from cell changes and string changes in the self-file.
机译:本文提出了一种基于正负选择的自我非自我识别算法,用于T细胞的发育过程。基于负选择的异常检测算法是自识别方法中的代表模型,近年来已应用于计算机免疫系统。在生物免疫系统中,T细胞是通过阳性和阴性选择产生的。正选择是用于确定识别自身分子的MHC受体的过程。阴性选择是用于确定识别抗原或非自身细胞的抗原受体的过程。本文提出了一种基于正选择的自识别算法,并提出了一种基于正选择和负选择的融合算法。为了验证所提出系统的有效性,我们显示了仿真结果,用于检测从自身文件中的单元格更改和字符串更改获得的某些感染数据。

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