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Research on Syndrome Classification and Risk Factors Extraction of Tibetan Medicine Based on Clustering

机译:基于聚类的藏药证候分类及危险因素提取研究

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Clustering which can divide data into a lot of subsets is one of the significant methods in the field of data mining, machine learning, artificial intelligence and so on. It is an unsupervised learning method and can solve the problem which is how to divide some unlabeled objects. The characteristic is that there is no need to provide priori information for clustering analysis. Usually, the procedures of clustering are feature selection, similarity degree calculation, clustering algorithm selection and conclusion test. Choosing different methods on each procedure is a rule which can distinguish clustering algorithm. The purpose of this paper is researching on the ways of common plateau diseases Tibetan medicine syndrome classification and risk factors extraction. Based on the diagnosis data of chronic atrophic gastritis provided by Qinghai Tibetan hospital, this paper uses Elbow Method to choose the best cluster number and applies Weka to classify syndrome according to five clustering algorithms after data preprocessing. Based on the analysis of experiment results and evaluation criteria, the suitable algorithm is selected and the risk factors are extracted. After comparing the algorithms and experiment results, it can be concluded that EM algorithm is effective and it has obvious advantages in discrete data.
机译:可以将数据分为很多子集的聚类是数据挖掘,机器学习,人工智能等领域的重要方法之一。它是一种无监督的学习方法,可以解决如何分割一些未标记对象的问题。特点是不需要提供先验信息进行聚类分析。通常,聚类的过程是特征选择,相似度计算,聚类算法选择和结论测试。在每个过程中选择不同的方法是可以区分聚类算法的规则。本文的目的是研究常见高原疾病藏医证候分类的方法和危险因素的提取。根据青海藏医院提供的慢性萎缩性胃炎的诊断数据,采用肘法选择最佳聚类数,并对数据进行预处理后根据五种聚类算法应用Weka对症候群进行分类。在对实验结果和评价标准进行分析的基础上,选择合适的算法,提取出危险因素。通过对算法和实验结果的比较,可以得出EM算法是有效的,并且在离散数据方面具有明显的优势。

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