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The Impact of Feature Representation to the Biclustering of Symptoms-Herbs in TCM

机译:特征表示对中医症状-草药的分组化的影响

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摘要

Traditional Chinese Medicine (TCM) is a holistic approach to medical treatment. Analysis and decision cannot be made in isolation, hence, the extraction of symptoms-herbs relationship is a crucial step to the research of the underlying TCM principle. Since this kind of relationship bears a lot of similarity with the gene-expression study in the microarray analysis, where the use of biclustering algorithms is common, it is logical to apply biclustering algorithms to the study of symptom-herb relationship. However, the choice of feature representation is a dominant factor in the success of any machine learning problem. This paper aims to understand the impact of different representation schemes in the biclustering of symptoms-herbs relationship. A bicluster is not helpful if the number of features is too large or too small. In order to get a desirable size for the biclusters, modified relative success ratio is considered to be the most appropriate one among the other four schemes. Some of the biclusters (using modified relative success ratio) do follow the therapeutic principle of TCM, while some biclusters with interesting feature combination that are worthwhile for clinical evaluation.
机译:中医(TCM)是一种整体治疗方法。不能孤立地进行分析和决策,因此,提取症状-草药关系是研究潜在中医原理的关键步骤。由于这种关系与微阵列分析中的基因表达研究有很多相似之处,在这种情况下,通常使用双聚类算法,因此将双聚类算法应用于症状-草药关系的研究是合乎逻辑的。但是,特征表示的选择是任何机器学习问题成功的主要因素。本文旨在了解不同的表示方式对症状-草药关系的双重影响。如果功能部件的数量太大或太小,则二元组无济于事。为了获得理想的双曲线尺寸,在其他四个方案中,修改后的相对成功率被认为是最合适的方案。有些双腿(使用改良的相对成功率)确实遵循中医的治疗原理,而有些双腿具有有趣的特征组合,值得临床评估。

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