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A Novel Classification Method for Syndrome Differentiation of Patients with AIDS

机译:艾滋病患者辨证分型的新方法

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摘要

We consider the analysis of an AIDS dataset where each patient is characterized by a list of symptoms and is labeled with one or more TCM syndromes. The task is to build a classifier that maps symptoms to TCM syndromes. We use the minimum reference set-based multiple instance learning (MRS-MIL) method. The method identifies a list of representative symptoms for each syndrome and builds a Gaussian mixture model based on them. The models for all syndromes are then used for classification via Bayes rule. By relying on a subset of key symptoms for classification, MRS-MIL can produce reliable and high quality classification rules even on datasets with small sample size. On the AIDS dataset, it achieves average precision and recall 0.7736 and 0.7111, respectively. Those are superior to results achieved by alternative methods.
机译:我们考虑对AIDS数据集进行分析,其中每个患者的特征都是症状列表,并标有一个或多个TCM综合征。任务是建立一个将症状映射到中医证候的分类器。我们使用基于最小参考集的多实例学习(MRS-MIL)方法。该方法识别出每种综合征的典型症状列表,并基于这些症状建立高斯混合模型。然后,通过贝叶斯规则将所有综合症的模型用于分类。通过依靠关键症状的子集进行分类,MRS-MIL甚至可以在样本量较小的数据集上产生可靠且高质量的分类规则。在AIDS数据集上,它达到了平均准确度,分别调用了0.7736和0.7111。这些优于通过替代方法获得的结果。

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