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Conserved Self Pattern Recognition Algorithm

机译:保守自模式识别算法

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Self-nonself model makes a lot of sense in the mechanisms of self versus nonself recognition in the immune system but it failed to explain a great number of findings. Some new immune theory is proposed to accommodate incompatible new findings, including Pattern Recognition Receptors (PRRs) Model and Danger Theory. Inspired from the PRRs model, a novel approach called Conserved Self Pattern Recognition Algorithm (CSPRA) is proposed in this paper. The algorithm is tested using the famous benchmark Fisher's Iris data. Preliminary results demonstrate that the new approach lowers the false positive and thus enhances the efficiency and reliability for anomaly detection without increase in complexity comparing to the classical Negative Selection Algorithm (NSA).
机译:自我否则模型在免疫系统中自我与不良识别的机制中产生了许多意义,但它未能解释大量的结果。提出了一些新的免疫理论,以适应不相容的新发现,包括模式识别受体(PRRS)模型和危险理论。从PRRS模型中启发了一种称为保守自模式识别算法(CSPRA)的新方法。使用着名的基准Fisher的虹膜数据测试该算法。初步结果表明,新方法降低了假阳性,从而提高了异常检测的效率和可靠性,而不是与经典负选择算法(NSA)比较的复杂性增加。

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