Knowledge of Wi-Fi networks helps to guide future engineering and spectrum policy decisions. However, due to its unlicensed nature, the deployment of Wi-Fi Access Points is undocumented meaning researchers are left making educated guesses as to the prevalence of these assets through remotely collected or passively sensed measurements. One commonly used method is referred to as `wardriving` essentially where a vehicle is used to collect geospatial statistical data on wireless networks to inform mobile computing and networking security research. Surprisingly, there has been very little examination of the statistical issues with wardriving data, despite the vast number of analyses being published in the literature using this approach. In this paper, a sample of publicly collected wardriving data is compared to a predictive model for Wi-Fi Access Points. The results demonstrate several statistical issues which future wardriving studies must account for, including selection bias, sample representativeness and the modifiable areal unit problem.
翻译:Wi-Fi网络知识有助于指导未来的工程和频谱决策,然而,由于无证性质,无线-Fi接入点的部署是没有记录的,这意味着研究人员通过远程收集或被动感知测量,对这些资产的普及情况进行了有教育的猜测,一种常用方法被称作 " 升级 ",主要是在使用车辆收集无线网络的地理空间统计数据,以便为移动计算和网络安全研究提供信息的情况下;令人惊讶的是,尽管在文献中使用这一方法发表了大量分析,但对于以旋转数据进行统计问题的研究却很少。本文将公开收集的作战数据样本与无线-Fi接入点的预测模型进行了比较,结果显示,今后必须进行仔细研究的一些统计问题,包括选择偏差、抽样代表性和可调整的单位问题。