论文标题
减轻时空模型中的混淆与印度针对妇女犯罪的申请
Alleviating confounding in spatio-temporal areal models with an application on crimes against women in India
论文作者
论文摘要
评估目标响应与空间模型中的一组协变量之间的关联是生态回归的LeitMotiv。但是,如果没有仔细处理,由于混杂效应,存在空间相关的随机效应可能会掩盖甚至偏差估计。尽管潜在有害,但在实践中常常忽略了令人困惑的问题,从而得出关于响应与协变量之间基本关联的错误结论。在时空领域模型中,时间维度可能会成为一种新的混淆来源,并且问题可能更糟。在这项工作中,我们提出了两种方法来处理固定效应的空间和时间随机效应,同时获得了良好的模型预测。特别是,在完全贝叶斯和经验贝叶斯的方法中提出了限制的回归,但实际上不是使用约束的等效程序。根据固定效应估计值和模型选择标准比较该方法。这些技术用于评估印度北方邦地区嫁妆死亡与某些社会人口协变量之间的关联。
Assessing associations between a response of interest and a set of covariates in spatial areal models is the leitmotiv of ecological regression. However, the presence of spatially correlated random effects can mask or even bias estimates of such associations due to confounding effects if they are not carefully handled. Though potentially harmful, confounding issues have often been ignored in practice leading to wrong conclusions about the underlying associations between the response and the covariates. In spatio-temporal areal models, the temporal dimension may emerge as a new source of confounding, and the problem may be even worse. In this work, we propose two approaches to deal with confounding of fixed effects by spatial and temporal random effects, while obtaining good model predictions. In particular, restricted regression and an apparently -- though in fact not -- equivalent procedure using constraints are proposed within both fully Bayes and empirical Bayes approaches. The methods are compared in terms of fixed-effect estimates and model selection criteria. The techniques are used to assess the association between dowry deaths and certain socio-demographic covariates in the districts of Uttar Pradesh, India.