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Anomaly Detection for Analysis of Annual Inventory Data: A Quality Control Approach

机译:年度库存数据分析的异常检测:一种质量控制方法

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摘要

Annual forest inventories present special challenges and opportunities for those analyzing the data arising from them. Here, we address one question currently being asked by analysts of the US Forest Service's Forest Inventory and Analysis Program's quickly accumulating annual inventory data. The question is simple but profound: When combining the next year's data for a particular variable with data from previous years, how does one know whether the same model as used in the past for this purpose continues to be applicable? Of the myriad approaches that have been developed for changepoint detection and anomaly detection, this report focuses on a simple quality-control approach known as a control chart that will allow analysts of annual forest inventory data to determine when a departure from a past trend is likely to have occurred.
机译:年度森林清单给那些分析其产生的数据的人带来了特殊的挑战和机遇。在这里,我们要解决的是美国森林服务局(Forest Service)的森林清单与分析计划(Forest Inventory and Analysis Program)迅速收集年度清单数据的分析人员当前提出的一个问题。问题很简单,但意义深远:将特定变量的下一年数据与前几年的数据相结合时,如何知道与过去用于此目的的模型是否继续适用?在为变更点检测和异常检测开发的多种方法中,本报告重点介绍一种称为控制图的简单质量控制方法,该方法可让年度森林清单数据的分析人员确定何时可能偏离过去的趋势。发生了。

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