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Clinical Knowledge Graph Embedding Representation Bridging the Gap between Electronic Health Records and Prediction Models

机译:临床知识图嵌入表示法弥合了电子病历和预测模型之间的差距

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Learning knowledge embedding representation is an increasingly important technology. However, the choice of hyperparameters is seldom justified and usually relies on exhaustive search. Understanding the effect of hyperparameter combinations on embedding quality is crucial to avoid the inefficient process and enhance practicality of embedding representation along subsequent machine learning applications. This work focuses on translational embedding models for multi-relational categorized data in the clinical domain. We trained and evaluated models with different combinations of hyperparameters on two clinical datasets. We contrasted the results by comparing metric distributions and fitting a random forest regression model. Classifiers were trained to assess embedding representation quality. Finally, clustering was tested as a validation protocol. We observed consistent patterns of hyperparameter preference and identified those that achieved better results respectively. However, results show different patterns regarding link prediction, which is taken as strong evidence that traditional evaluation protocol used for open-domain data does not necessarily lead to the best embedding representation for categorized data.
机译:学习知识嵌入表示是一项越来越重要的技术。但是,超参数的选择很少是合理的,并且通常依赖于穷举搜索。理解超参数组合对嵌入质量的影响对于避免效率低下的流程以及提高后续机器学习应用中嵌入表示的实用性至关重要。这项工作的重点是针对临床领域中多关系分类数据的翻译嵌入模型。我们在两个临床数据集上训练和评估了具有不同超参数组合的模型。我们通过比较指标分布和拟合随机森林回归模型来对比结果。训练分类器以评估嵌入表示质量。最后,将聚类作为验证协议进行了测试。我们观察到了一致的超参数偏好模式,并分别确定了获得更好结果的模式。但是,结果显示了有关链接预测的不同模式,这有力地证明了用于开放域数据的传统评估协议不一定会导致分类数据的最佳嵌入表示。

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