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The Algorithm of Rough Set-Based Grid Fuzzy Clustering and Its Application and Research in Tongue Diagnosis of Traditional Chinese Medicine

机译:基于粗糙集的网格模糊聚类算法及其在中医舌诊中的应用研究

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The tongue intelligent diagnosis and inference system of Traditional Chinese Medicine (TCM) was a complex large-scale system, which data quantity was extremely huge, specially along with long-distance networking diagnosis movement, the data quantity increased dramaticaly. The system requested fast data search, the fuzzy clustering analysis could solve these difficult problems. This paper on the research cluster analysis basic principle and above the algorithm foundation, utilized one kind of improvement rough set-based grid fuzzy clustering algorithm in data mining for tongue diagnosis system of TCM, and made the grid division first in front of the definition degree of membership function, and formed a data bunch of basic shape, and provided the real parameter information, and participated hereafter degree of membership function definition. The degree of membership function surmounted evaluation influence bunch of shape factor. Algorithm through grid division acceleration cluster process, has overcome shortcoming of big time consumption quantity in the traditional fuzzy clustering algorithm. The application experimental result indicated, the algorithm that the paper have studied enhanced the speed, the reliability and the rate of accuracy in tongue diagnosis system of TCM, and realized the higher intellectualization, the digitized request.
机译:中医(TCM)的舌智能诊断和推理系统是一个复杂的大规模系统,数据量非常庞大,特别是随着长途网络诊断运动,数据量增加了戏剧性。系统要求快速数据搜索,模糊聚类分析可以解决这些难题。本文关于研究集群分析基本原理及以上算法基础,利用了一种改进粗糙集基网格模糊聚类算法,用于中医舌诊断系统的数据挖掘,并使网格划分在定义学位前面成员函数,并形成了一个基本形状的数据束,并提供了真实参数信息,并参与了以下的成员函数定义。会员函数的程度越来越多的评估影响束形状因子。算法通过网格分裂加速集群过程,克服了传统模糊聚类算法中的大时间消耗量的缺点。该施用实验结果表明,该算法研究了TCM舌诊断系统的速度,可靠性和精度准确度,实现了更高的智慧化,数字化要求。

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