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Modelling small area counts in the presence of overdispersion and spatial autocorrelation

机译:在过度分散和空间自相关的情况下模拟小面积计数

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摘要

The problems arising when modelling counts of rare events observed in small geographical areas when overdispersion and residual spatial autocorrelation are present or anticipated are considered. Different models are presented for handling inference in this case. The different strategies are implemented using data on offender counts at the enumeration district scale for Sheffield, England and results compared. This example is chosen because previous research suggests that social processes and social composition variables are key to understanding geographical variation in offender counts which will, as a consequence, show evidence of clustering both at the scale of the enumeration district and at larger scales. This in turn leads the analyst to anticipate the presence of overdispersion and spatial autocorrelation. Diagnostic measures are described and different modelling strategies are implemented. The evidence suggests that modelling strategies based on the use of spatial random effects models or models that include spatial filters appear to work well and provide a robust basis for model inference but gaps remain in the methodology that call for further research.
机译:当存在或预期过度分散和剩余空间自相关时,考虑对在小地理区域中观察到的稀有事件进行建模时出现的问题。在这种情况下,提供了不同的模型来处理推理。使用英格兰谢菲尔德枚举区规模的罪犯人数数据来实施不同的策略,并比较结果。之所以选择这个例子,是因为先前的研究表明,社会过程和社会构成变量对于理解罪犯人数的地理差异至关重要,因此,这将显示出枚举区范围和更大范围内的聚类证据。反过来,这又使分析人员可以预测过度分散和空间自相关的存在。描述了诊断措施并实施了不同的建模策略。证据表明,基于使用空间随机效应模型或包含空间过滤器的模型的建模策略似乎效果很好,并为模型推断提供了可靠的基础,但方法学中仍存在差距,需要进一步研究。

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