Rich new marked point process data allow researchers to consider disparate problems such as the factors affecting the location and type of police use of force incidents, and the characteristics that impact the location and size of forest fires. We develop a two-stage log Gaussian Cox process that models these data in terms of both spatial (community-level) and nonspatial (individual or event-level) characteristics; both types of covariates are present in the examples we consider and are not easy to incorporate via existing methods. Via simulated and real data examples we find that our model is easy to interpret and flexible, accommodating multiple types of marks and multiple types of spatial covariates. In the first example we consider, our approach allows us to study the impact of community-level socioeconomic features such as unemployment as well as event-level features such as officer tenure on force used by police, illustrated through simulated examples. In our second example we consider factors that impact the locations and severity of forest fires from the Castilla-La Mancha region of Spain between 2004-2007.
翻译:丰富的新标记点过程数据使研究人员能够考虑不同的问题,例如影响警察使用武力事件地点和类型的因素,以及影响森林火灾地点和规模的特点。我们开发了两阶段的古森考克斯记录过程,从空间(社区一级)和非空间(个人或事件一级)特点的角度来模拟这些数据;这两种类型的共变情况都存在于我们所考虑的例子中,并且不容易通过现有方法纳入。通过模拟和真实的数据实例,我们发现我们的模型很容易解释和灵活,适应多种标志和多种空间共变情况。我们考虑的第一个例子是,我们的方法使我们能够研究社区一级社会经济特征的影响,例如失业以及警察对警察使用武力的使用权等事件层面特征。在第二个例子中,我们考虑了2004-2007年西班牙卡斯蒂利亚-拉曼查地区森林火灾的地点和严重程度的影响因素。