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Semi-Supervised Approach to Predictive Analysis Using Temporal Data

机译:使用时间数据进行预测分析的半监督方法

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Predicting a target event from temporal data using supervised learning alone presents a number of challenges. It assumes that members falling into the same class have similar historical characteristics, which is a too strong an assumption. Additionally, it can be difficult for the algorithm to underline the differences from a large volume of data and multitude of temporal projections. In such situations, a combination of supervised and unsuper-vised learning proved to be superior in performance as compared to supervised learning alone. In the proposed methodology, we develop feature vectors of temporal events that are subsequently split into groups by similarity of spatio-temporal characteristics using a clustering algorithm. We then apply a supervised learning methodology to predict the class within each of these subpopulations. We show a dramatic improvement in predictive power of this joint methodology as compared to supervised learning alone. The case study that we use to demonstrate the methodology utilizes medical claims data to predict a patient's short-term risk of myocardial infarction. In particular, we identify groups of people with temporal diagnostic patterns associated with a high-risk of myocardial infarction in the coming three months. We use these patterns as a profile reference for assessing the state of new patients. We demonstrate that the newly developed combined approach yields improved predictions for myocardial infarction over using classification alone.
机译:仅使用监督学习从时态数据预测目标事件提出了许多挑战。它假定属于同一阶级的成员具有相似的历史特征,这是一个过强的假设。另外,该算法可能难以强调来自大量数据和大量时间投影的差异。在这种情况下,与单独的监督学习相比,监督学习和非监督学习的结合表现出更好的表现。在提出的方法中,我们开发了时间事件的特征向量,随后使用聚类算法通过时空特征的相似性将其分为几类。然后,我们采用一种监督学习方法来预测这些亚群中每个人的班级。与单独的监督学习相比,我们显示了这种联合方法的预测能力的显着提高。我们用来证明该方法的案例研究利用医疗索赔数据来预测患者的短期心肌梗塞风险。特别是,我们确定了在未来三个月中具有与心肌梗塞高风险相关的时间诊断模式的人群。我们将这些模式用作评估新患者状态的概况参考。我们证明,新开发的组合方法比单独使用分类产生了更好的心肌梗死预测。

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