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Using Spatial Autocorrelation Analysis to Guide Mixed Methods Survey Sample Design Decisions

机译:使用空间自相关分析指导混合方法调查样本设计决策

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摘要

Mixed methods researchers share a commitment to knowing their sampling frames and minimizing discovery failure, especially when using surveys. Notwithstanding advances in sampling strategies, the geographic clustering of perceptions has not been fully considered for its relevance to sampling. This article examines the value of spatial autocorrelation analysis to guide sampling decisions. Spatial autocorrelation refers to the clustering of (dis)similar phenomena and signals the likely existence of perception subgroups. Through a spatial autocorrelation analysis of Dallas, Texas, the authors identify sampling frames for collecting data about perceptions of West Nile Virus eradication measures. They furnish some empirical confirmation of the geographic clustering of perceptions and argue for designs that identify perception clustering, which can affect qualitative sampling as well as advance the integration of quantitative and qualitative research.
机译:混合方法研究人员共同致力于了解其采样框架并最大程度地减少发现失败,尤其是在使用调查时。尽管采样策略取得了进步,但由于与采样的相关性,尚未完全考虑感知的地理聚类。本文研究了空间自相关分析的价值,以指导抽样决策。空间自相关是指(不相似)现象的聚类,并表示感知子群可能存在。通过对德克萨斯州达拉斯市的空间自相关分析,作者确定了抽样框架,以收集有关西尼罗河病毒消灭措施感知的数据。他们为感知的地理聚类提供了一些经验性的确认,并提出了可以识别感知聚类的设计,这会影响定性抽样并促进定量和定性研究的整合。

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