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Using a Normalized Score Multi-Label KNN to Classify Multi-label Herbal Formulae

机译:使用规范化的分数多标签KNN来分类多标签草药公式

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The popularity of herbal medicines has greatly increased in worldwide countries over recent years. Herbal formula is a form of traditional medicine where herbs are combined to heal patient to heal faster and more efficiency. Herbal formulae can be divided into categories. Some formulae can be classified as more than one category. The categories are usually based on indications of herbs in formulae. To support experts for classifying a formula to one or more therapeutic categories, the normalized score multi-label k-nearest neighbors (NSML k-NN) algorithm, is proposed for multi-label herbal formulae classification. The k-NN classifiers with several term weight schemes are explored. The normalized scores are calculated. The values of k, strategies to assign categories are investigated to adjust the decision for multi-label herbal formulae. The experiment is done using a mixed data set of herbal formulae collected from the Natural List of Essential Medicine and the list of common household remedies for traditional medicine. Moreover, a set of well-known commercial products are used for evaluating the effectiveness of the proposed method. From the results, the NSML k-NN is an efficient method to classify multi-label herbal formulae.
机译:近年来,世界范围内,草药的普及大大增加。草本配方是一种传统药物的形式,草药组合以治愈患者愈合更快,更高的效率。草药公式可分为类别。一些公式可以被归类为多个类别。这些类别通常基于公式中草药的指示。为了支持对一个或多个治疗类别对公式进行分类的专家,提出了用于多标签草本公式分类的归一化评分多标签K-最近邻居(NSML K-NN)算法。探讨了具有几个术语重量方案的K-NN分类器。计算规范化的分数。 k的值,调查分配类别的策略,以调整多标签草药公式的决定。该实验是使用从基本药物自然清单和传统医学的常见家庭补救措施中收集的混合数据集的草药公式组成。此外,一组众所周知的商业产品用于评估所提出的方法的有效性。从结果中,NSML K-Nn是分类多标签草药公式的有效方法。

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