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PATIENT EVOLUTION PREDICTION WITH VARIABLES CONSTRUCTED FROM TEMPORAL SEQUENCES

机译:患者进化预测与时间序列构成的变量预测

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In this study, we applied the local learning paradigm and conditional independence assumptions to control the rapid growth of the dimensionality introduced by multivariate time series. We also combined various univariate time series with different stationary assumptions in temporal models. These techniques are applied to learn simple Bayesian networks from temporal data and to predict survival probabilities of ICU patients.
机译:在这项研究中,我们应用了本地学习范式和有条件的独立假设,以控制多元时间序列引入的维度的快速增长。我们还将各种单变量时间序列组合在时间模型中具有不同的固定假设。这些技术用于从时间数据中学习简单的贝叶斯网络,并预测ICU患者的存活概率。

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