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American Terrorism and Extremist Crime Data Sources and Selectivity Bias: An Investigation Focusing on Homicide Events Committed by Far-Right Extremists

机译:美国恐怖主义和极端主义犯罪数据来源和选择性偏见:一项针对极右翼极端分子犯下的凶杀事件的调查

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This paper examines the reliability of the methods used to capture homicide events committed by far-right extremists in a number of open source terrorism data sources. Although the number of research studies that use open source data to examine terrorism has grown dramatically in the last 10 years, there has yet to be a study that examines issues related to selectivity bias. After reviewing limitations of existing terrorism studies and the major sources of data on terrorism and violent extremist criminal activity, we compare the estimates of these homicide events from 10 sources used to create the United States Extremist Crime Database (ECDB). We document incidents that sources either incorrectly exclude or include based upon their inclusion criteria. We use a “catchment-re-catchment” analysis and find that the inclusion of additional sources result in decreasing numbers of target events not identified in previous sources and a steadily increasing number of events that were identified in any of the previous data sources. This finding indicates that collectively the sources are approaching capturing the universe of eligible events. Next, we assess the effects of procedural differences on these estimates. We find considerable variation in the number of events captured by sources. Sources include some events that are contrary to their inclusion criteria and exclude others that meet their criteria. Importantly, though, the attributes of victim, suspect, and incident characteristics are generally similar across data source. This finding supports the notion that scholars using open-source data are using data that is representative of the larger universe they are interested in. The implications for terrorism and open source research are discussed.
机译:本文研究了在许多开放源代码恐怖主义数据源中,用于捕获极右翼极端分子实施的凶杀事件的方法的可靠性。尽管在过去的十年中,使用开放源数据检查恐怖主义的研究数量急剧增加,但仍存在一项研究与选择性偏见相关的问题。在回顾了现有恐怖主义研究的局限性以及有关恐怖主义和暴力极端主义犯罪活动的主要数据来源之后,我们比较了用于创建美国极端主义犯罪数据库(ECDB)的10种来源对这些杀人事件的估计。我们记录了根据来源的标准错误排除或包括的事件。我们使用“集水区-重新集水区”分析法,发现包含其他来源会导致以前来源中未发现的目标事件数量减少,而在任何先前数据来源中已发现的事件数量稳定增长。这一发现表明,各种来源正在共同捕获合格事件的范围。接下来,我们评估程序差异对这些估计的影响。我们发现来源捕获的事件数量有很大的差异。来源包括一些违反其纳入标准的事件,而排除了符合其标准的其他事件。但是重要的是,在整个数据源中,受害者,犯罪嫌疑人和事件特征的属性通常相似。这一发现支持了以下观点:使用开源数据的学者正在使用代表他们感兴趣的更大宇宙的数据。讨论了恐怖主义和开源研究的意义。

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