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Incorporating Spatial Information into Density Estimates and Street Gang Models.

机译:将空间信息纳入密度估计和街道帮模型中。

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摘要

The spatial features within a region influence many processes in human activity. Mountains, lakes, oceans, rivers, freeways, population densities, housing densities, and road networks are examples of geographical factors that impact spatial behaviors. Separated into two parts, the work presented here incorporates this information into both density estimation methods and models of street gang rivalries and territories.;Part I discusses methods for producing a probability density estimate given a set of discrete event data. Common methods of density estimation, such as Kernel Density Estimation, do not incorporate geographical information. Using these methods could result in non-negligible portions of the support of the density in unrealistic geographic locations. For example, crime density estimation models that do not take geographic information into account may predict events in unlikely places such as oceans, mountains, etc. To obtain more geographically accurate density estimates, a set of Maximum Penalized Likelihood Estimation methods based on Total Variation norm and H 1 Sobolev semi-norm regularizers in conjunction with a priori high resolution spatial data is proposed. These methods are applied to a residential burglary data set of the San Fernando Valley using geographic features obtained from satellite images of the region and housing density information.;Part II addresses the behaviors and rivalries of street gangs and how the spatial characteristics of the region affect the dynamics of the system. Gangs typically claim a specific territory as their own, and they tend to have a set space, a location they use as a center for their activities within the territory. The spatial distribution of gangs influences the rivalries that develop within the area. One stochastic model and one deterministic model are proposed, providing different types of outputs. Both models incorporate important geographical features from the region that would inhibit movement, such as rivers and large highways. In the stochastic method, an agent-based model simulates the creation of street gang rivalries. The movement dynamics of agents are coupled to an evolving network of gang rivalries, which is determined by previous interactions among agents in the system. Basic gang data, geographic information, and behavioral dynamics suggested by the criminology literature are integrated into the model. The deterministic method, derived from a stochastic approach, modifies a system of partial differential equations from a model for coyotes. Territorial animals and street gangs often exhibit similar behavioral characteristics. Both groups have a home base and mark their territories to distinguish claimed regions. To analyze the two methods, the Hollenbeck policing division of the Los Angeles Police Department is used as a case study.
机译:区域内的空间特征会影响人类活动的许多过程。山脉,湖泊,海洋,河流,高速公路,人口密度,住房密度和道路网络是影响空间行为的地理因素的示例。分为两部分,这里介绍的工作将这些信息结合到密度估计方法和街道帮派竞争和领土模型中。第一部分讨论了在给定离散事件数据集的情况下产生概率密度估计的方法。密度估计的常用方法(例如内核密度估计)不包含地理信息。使用这些方法可能会在不切实际的地理位置中导致密度支持的不可忽略的部分。例如,不考虑地理信息的犯罪密度估计模型可能会预测不太可能发生的地方(例如海洋,山脉等)中的事件。为了获得更准确的地理分布密度估计值,请使用一套基于总变异范数的最大惩罚可能性估计方法提出了结合H 1 Sobolev半范式正则化器和先验高分辨率空间数据的方法。这些方法使用从该地区的卫星图像获得的地理特征和房屋密度信息应用​​于圣费尔南多山谷的住宅入室盗窃数据集;第二部分介绍了街头帮派的行为和竞争以及该地区的空间特征如何影响系统的动力学。帮派通常将特定领土声明为自己的领土,并且他们倾向于拥有固定的空间,该位置用作他们在该领土内活动的中心。帮派的空间分布会影响该地区内部发展的竞争。提出了一种随机模型和一种确定性模型,提供了不同类型的输出。两种模型都融合了该地区会阻碍移动的重要地理特征,例如河流和大型公路。在随机方法中,基于代理的模型模拟街头帮派竞争的产生。特工的运动动力学与不断发展的帮派对立网络相耦合,这由系统中特工之间的先前交互决定。犯罪学文献所建议的基本帮派数据,地理信息和行为动态已集成到模型中。从随机方法派生的确定性方法修改了土狼模型的偏微分方程组。领土动物和街头帮派经常表现出相似的行为特征。这两类人都有自己的据点,并在其领土上做标记以区分所要求保护的地区。为了分析这两种方法,以洛杉矶警察局的Hollenbeck警务部门为例。

著录项

  • 作者

    Smith, Laura Michelle.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Applied Mathematics.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 144 p.
  • 总页数 144
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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