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Hierarchical Latent Class Models and Statistical Foundation for Traditional Chinese Medicine

机译:中药分层潜在阶级模型及统计基础

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The theories of traditional Chinese medicine (TCM) originated from experiences doctors had with patients in ancient times. We ask the question whether aspects of TCM theories can be reconstructed through modern day data analysis. We have recently analyzed a TCM data set using a machine learning method and found that the resulting statistical model matches the relevant TCM theory well. This is an exciting discovery because it shows that, contrary to common perception, there are scientific truths in TCM theories. It also suggests the possibility of laying a statistical foundation for TCM through data analysis and thereby turning it into a modern science.
机译:中医(TCM)的理论起源于古代患者的经验医生。我们问问题是否可以通过现代数据分析重建TCM理论的方面。我们最近使用机器学习方法分析了一个TCM数据集,发现所得到的统计模型与相关的TCM理论匹配。这是一个令人兴奋的发现,因为它表明,与常见的感知相反,TCM理论中有科学真理。它还建议通过数据分析为中医奠定统计基础,从而将其转化为现代化学。

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