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Prosvms based diagnostic model of chronic gastritis in TCM

机译:基于Prosvms的中医慢性胃炎诊断模型

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Multi-label learning task is using to solve problems of syndrome diagnosis for patients may simultaneously have more than one syndrome in traditional Chinese medicine (TCM). The two goals of multi-label learning are label prediction loss and relevance ordering loss. Most Multi-label learning algorithms focus on only one of the goals and neglect the other one. However, there is a multi-label learning algorithm named ProSVMs give consideration to both. And it is apply to the diagnosis of chronic gastritis (CG) of TCM. While its performance suffers from irrelevances and redundancies of the overall feature space of low predict accuracy. Feature selection is combined with ProSVMs to establish the classification model for CG. The result shows the satisfied performance of the diagnostic model for CG was achieved.
机译:多标签学习任务用于解决综合征诊断问题,因为中医可能同时患有多个综合征。多标签学习的两个目标是标签预测损失和相关性排序损失。大多数多标签学习算法仅关注一个目标,而忽略另一个目标。但是,有一种名为ProSVM的多标签学习算法会同时考虑到这两种情况。适用于中医慢性胃炎的诊断。尽管它的性能受到预测准确性低的整体特征空间的不相关和冗余的困扰。将特征选择与ProSVM相结合,以建立CG的分类模型。结果表明,该诊断模型对CG具有满意的性能。

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