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A Bayesian Spatial Scan Statistic

机译:贝叶斯空间扫描统计

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摘要

We propose a new Bayesian method for spatial cluster detection, the "Bayesian spatial scan statistic," and compare this method to the standard (frequentist) scan statistic approach. We demonstrate that the Bayesian statistic has several advantages over the frequentist approach, including increased power to detect clusters and (since randomization testing is unnecessary) much faster runtime. We evaluate the Bayesian and frequentist methods on the task of prospective disease surveillance: detecting spatial clusters of disease cases resulting from emerging disease outbreaks. We demonstrate that our Bayesian methods are successful in rapidly detecting outbreaks while keeping number of false positives low.
机译:我们提出了一种新的贝叶斯方法,用于空间集群检测,“贝叶斯空间扫描统计”,并将这种方法与标准(频繁)扫描统计方法进行比较。我们证明贝叶斯统计数据与频繁的方法具有若干优点,包括检测集群的增加的力量和(由于随机化测试是不必要的)更快的运行时。我们评估贝叶斯和频繁的方法对预期疾病监测的任务:检测出现疾病爆发引起的疾病病例的空间簇。我们证明,我们的贝叶斯方法在快速检测爆发时成功,同时保持误报的数量。

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