A Clustering Model Inspired by Humoral Immunity

Yuling Tian, Peng Ren
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引用次数: 1

Abstract

In biological immune system, B-cells secrete large numbers of antibodies to recognize and eliminate the antigens. Inspired by the relationship of B-cells and antibodies, an effective immune model is presented in this paper. As its learning capability, this model can recognize not only the existing antigens but also the antigens that are unknown. The structure of the model and the detailed algorithm are given in this paper. And the validity of the model is proved through an experiment of motor fault data clustering. Keywords-artificial immune system; clustering; B-cell; antibody I. INTRODUCTION Currently, information technology develops very fast. So, huge information is produced, and data mining can transform them into useful knowledge. Clustering is an important domain of data mining. It can find out the distributing rule of data character through comparing the comparability and diversity of data, and help researchers to obtain more profound comprehension and cognition (1). But the traditional clustering algorithm are deficient on clustering precision and convergent speed, such as k-means algorithm, Bayesian learning algorithm, fuzzy C means algorithm (FCM), etc.
基于体液免疫的聚类模型
在生物免疫系统中,b细胞分泌大量的抗体来识别和消除抗原。本文从b细胞与抗体的关系出发,提出了一种有效的免疫模型。由于其学习能力,该模型不仅可以识别现有的抗原,还可以识别未知的抗原。文中给出了模型的结构和具体算法。并通过电机故障数据聚类实验验证了该模型的有效性。关键词:人工免疫系统;聚类;b细胞;当前,信息技术发展非常迅速。因此,产生了大量的信息,而数据挖掘可以将这些信息转化为有用的知识。聚类是数据挖掘的一个重要领域。它可以通过比较数据的可比性和多样性来发现数据特征的分布规律,帮助研究者获得更深刻的理解和认知(1)。但传统的聚类算法在聚类精度和收敛速度上存在不足,如k-means算法、贝叶斯学习算法、模糊C均值算法(FCM)等。
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