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Geosocial Media Data as Predictors in a GWR Application to Forecast Crime Hotspots (Short Paper)

机译:地理社会媒体数据作为GWR预测犯罪热点的应用程序中的预测器(草稿)

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In this paper we forecast hotspots of street crime in Portland, Oregon. Our approach uses geosocial media posts, which define the predictors in geographically weighted regression (GWR) models. We use two predictors that are both derived from Twitter data. The first one is the population at risk of being victim of street crime. The second one is the crime related tweets. These two predictors were used in GWR to create models that depict future street crime hotspots. The predicted hotspots enclosed more than 23% of the future street crimes in 1% of the study area and also outperformed the prediction efficiency of a baseline approach. Future work will focus on optimizing the prediction parameters and testing the applicability of this approach to other mobile crime types.
机译:在本文中,我们预测了俄勒冈州波特兰市街头犯罪的热点地区。我们的方法使用地理社交媒体帖子,这些帖子在地理加权回归(GWR)模型中定义了预测变量。我们使用两个都来自Twitter数据的预测变量。第一个是有可能成为街头犯罪受害者的人口。第二个是与犯罪有关的推文。这两个预测变量在GWR中用于创建描述未来街头犯罪热点的模型。预计的热点地区占研究区域1%内未来街头犯罪的23%以上,并且胜过基线方法的预测效率。未来的工作将集中在优化预测参数和测试此方法对其他移动犯罪类型的适用性。

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