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Clustering Heterogeneous Semi-Structured Social Science Datasets

机译:聚类异构半结构化社会科学数据集

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Social scientists have begun to collect large datasets that are heterogeneous and semi-structured, but the ability to analyze such data has lagged behind its collection. We design a process to map such datasets to a numerical form, apply singular value decomposition clustering, and explore the impact of individual attributes or fields by overlaying visualizations of the clusters. This provides a new path for understanding such datasets, which we illustrate with three real-world examples: the Global Terrorism Database, details of every terrorist attack since 1970; a Chicago police dataset, details of every drug-related incident over a period of approximately a month; and a dataset describing members of a Hezbollah crime/terror network within the U.S.
机译:社会科学家已经开始收集异构和半结构的大型数据集,但分析这些数据的能力已经落后于其收藏。我们设计一个进程要将此类数据集映射到数字表单,应用奇异值分解群集,并通过覆盖群集的可视化来探索各个属性或字段的影响。这提供了一种了解了解此类数据集的新路径,我们用三个真实的示例说明:全球恐怖主义数据库,自1970年以来的每一个恐怖袭击的细节;芝加哥警察数据集,在大约一个月内的每种药物相关事件的细节;和一个描述美国内部合人主亚犯罪/恐怖网络成员的数据集

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