Detecting outbreaks by time series analysis

Gianfranco Cellarosi, Stefano Lodi, Claudio Sartori
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引用次数: 4

Abstract

Exceptional events in a time series are observations which can be regarded as qualitatively significant anomalies. The detection of such events is an interesting problem in several domains, in particular for the generation of alarms in clinical microbiology. We propose an approach to the detection of exceptional events based on model selection. For each mathematical form of a model, we choose the parameters of the model by maximum likelihood techniques. Then we select, among the resulting instantiated models, the model which minimizes the mean square error. An exceptional event is detected with an assigned probability, if an observation lies outside the forecasting region defined by the selected model and a confidence interval.
通过时间序列分析检测爆发
时间序列中的异常事件是可被视为质量上显著异常的观测结果。这些事件的检测在几个领域是一个有趣的问题,特别是在临床微生物学报警的产生。我们提出了一种基于模型选择的异常事件检测方法。对于模型的每一种数学形式,我们通过极大似然技术选择模型的参数。然后,我们在得到的实例化模型中选择均方误差最小的模型。如果观测值位于由所选模型和置信区间定义的预测区域之外,则以指定的概率检测到异常事件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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