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Data Classification for Selection of Temporal Alerting Methods for Biosurveillance

机译:用于选择生物监尿病的时间警报方法的数据分类

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This study presents and applies a methodology for selecting anomaly detection algorithms for biosurveillance time series data. The study employs both an authentic dataset and a simulated dataset which are freely available for replication of the results presented and for extended analysis. Using this approach, a public health monitor may choose algorithms that will be suited to the scale and behavior of the data of interest based on the calculation of simple discriminants from a limited sample. The tabular classification of typical time series behaviors using these discriminants is achieved using the ROC approach of detection theory, with realistic, stochastic, simulated signals injected into the data. The study catalogues the detection performance of 6 algorithms across data types and shows that for practical alert rates, sensitivity gains of 20% and higher may be achieved by appropriate algorithm selection.
机译:本研究提出并应用一种选择用于生物训练时间序列数据的异常检测算法的方法。该研究采用了一个正宗的数据集和模拟数据集,这些数据集可用于复制所呈现的结果和扩展分析。使用这种方法,公共卫生监视器可以选择将基于从有限样本的简单判别的计算来选择利息数据的规模和行为。使用这些判别的典型时间序列行为的表格分类是使用ROC检测理论的方法实现的,具有逼真的随机模拟信号注入数据。该研究目录在数据类型中,显示了6种算法的检测性能,并表明,对于实际的警报速率,可以通过适当的算法选择来实现20%和更高的灵敏度增益。

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