Variable selection using penalised likelihoods for point patterns on a linear network

IF 0.8 4区 数学 Q3 STATISTICS & PROBABILITY Australian & New Zealand Journal of Statistics Pub Date : 2021-10-18 DOI:10.1111/anzs.12341
Suman Rakshit, Greg McSwiggan, Gopalan Nair, Adrian Baddeley
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引用次数: 4

Abstract

Motivated by the analysis of a comprehensive database of road traffic accidents, we investigate methods of variable selection for spatial point process models on a linear network. The original data may include explanatory spatial covariates, such as road curvature, and ‘mark’ variables attributed to individual accidents, such as accident severity. The treatment of mark variables is new. Variable selection is applied to the canonical covariates, which may include spatial covariate effects, mark effects and mark-covariate interactions. We approximate the likelihood of the point process model by that of a generalised linear model, in such a way that spatial covariates and marks are both associated with canonical covariates. We impose a convex penalty on the log likelihood, principally the elastic-net penalty, and maximise the penalised loglikelihood by cyclic coordinate ascent. A simulation study compares the performances of the lasso, ridge regression and elastic-net methods of variable selection on their ability to select variables correctly, and on their bias and standard error. Standard techniques for selecting the regularisation parameter γ often yielded unsatisfactory results. We propose two new rules for selecting γ which are designed to have better performance. The methods are tested on a small dataset on crimes in a Chicago neighbourhood, and applied to a large dataset of road traffic accidents in Western Australia.

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使用惩罚似然对线性网络上的点模式进行变量选择
通过对道路交通事故综合数据库的分析,研究了线性网络空间点过程模型的变量选择方法。原始数据可能包括解释性空间协变量,如道路曲率,以及归因于个别事故的“标记”变量,如事故严重程度。标记变量的处理是新的。变量选择应用于典型协变量,其中可能包括空间协变量效应、标记效应和标记-协变量相互作用。我们通过广义线性模型近似点过程模型的似然,以这样一种方式,空间协变量和标记都与正则协变量相关联。我们在对数似然上施加一个凸惩罚,主要是弹性网惩罚,并通过循环坐标上升最大化惩罚的对数似然。仿真研究比较了套索、脊回归和弹性网三种变量选择方法正确选择变量的能力,以及它们的偏差和标准误差。选择正则化参数γ的标准技术常常产生不满意的结果。我们提出了两个新的选择γ的规则,它们具有更好的性能。这些方法在芝加哥社区的一个小型犯罪数据集上进行了测试,并应用于西澳大利亚州的一个大型道路交通事故数据集。
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来源期刊
Australian & New Zealand Journal of Statistics
Australian & New Zealand Journal of Statistics 数学-统计学与概率论
CiteScore
1.30
自引率
9.10%
发文量
31
审稿时长
>12 weeks
期刊介绍: The Australian & New Zealand Journal of Statistics is an international journal managed jointly by the Statistical Society of Australia and the New Zealand Statistical Association. Its purpose is to report significant and novel contributions in statistics, ranging across articles on statistical theory, methodology, applications and computing. The journal has a particular focus on statistical techniques that can be readily applied to real-world problems, and on application papers with an Australasian emphasis. Outstanding articles submitted to the journal may be selected as Discussion Papers, to be read at a meeting of either the Statistical Society of Australia or the New Zealand Statistical Association. The main body of the journal is divided into three sections. The Theory and Methods Section publishes papers containing original contributions to the theory and methodology of statistics, econometrics and probability, and seeks papers motivated by a real problem and which demonstrate the proposed theory or methodology in that situation. There is a strong preference for papers motivated by, and illustrated with, real data. The Applications Section publishes papers demonstrating applications of statistical techniques to problems faced by users of statistics in the sciences, government and industry. A particular focus is the application of newly developed statistical methodology to real data and the demonstration of better use of established statistical methodology in an area of application. It seeks to aid teachers of statistics by placing statistical methods in context. The Statistical Computing Section publishes papers containing new algorithms, code snippets, or software descriptions (for open source software only) which enhance the field through the application of computing. Preference is given to papers featuring publically available code and/or data, and to those motivated by statistical methods for practical problems.
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