Violent crime in London is an area of increasing interest following policing and community budget cuts in recent years. Understanding the locally-varying demographic factors that drive distribution of violent crime rate in London could be a means to more effective policy making for effective action. Using a visual analytics approach combined with Statsitical Methods, demographic features which are traditionally related to Violent Crime Rate (VCR) are identified and OLS Univariate and Multivariate Regression are used as a precursor to GWR. VIF and pearson correlation statistics show strong colinearity in many of the traditionally used features and so human reasoning is used to rectify this. Bandwidth kernel smoothing size of 67 with a Bi-Square type is best for GWR. GWR and OLS regression shows that there is local variation in VCR and K-Means clustering using 5 clusters provides an effective way of seperating violent crime in London into 5 coherent groups.
翻译:伦敦的暴力犯罪是近年来治安和社区预算削减后日益引起关注的一个领域。了解导致伦敦暴力犯罪率分布的当地人口因素,可以成为更有效制定政策以采取有效行动的一个手段。采用视觉分析方法,并与统计方法相结合,查明传统上与暴力犯罪率有关的人口特征,使用OSLS Univariate和多变回归作为GWR的前奏。 VIF和Pearson相关统计数据表明,许多传统使用的特点具有很强的共性,因此使用了人类推理来纠正这一点。Bandwith 内螺网(67)和双平方型的平滑尺寸对GWR最好。 GWR和OLS回归表明,在VCR和K-Means群群中使用5个集群的地方差异为将伦敦的暴力犯罪分成5个连贯的团体提供了有效途径。