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Effects of globally obtained informative priors on bayesian safety performance functions developed for Australian crash data

机译:全球获取的先验信息对为澳大利亚碰撞数据开发的贝叶斯安全绩效功能的影响

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The precision and bias of Safety Performance Functions (SPFs) heavily rely on the data upon which they are estimated. When local (spatially and temporally representative) data are not sufficiently available, the estimated parameters in SPFs are likely to be biased and inefficient. Estimating SPFs using Bayesian inference may moderate the effects of local data insufficiency in that local data can be combined with prior information obtained from other parts of the world to incorporate additional evidence into the SPFs. In past applications of Bayesian models, non-informative priors have routinely been used because incorporating prior information in SPFs is not straightforward. The previous few attempts to employ informative priors in estimating SPFs are mostly based on local prior knowledge and assuming normally distributed priors. Moreover, the unobserved heterogeneity in local data has not been taken into account. As such, the effects of globally derived informative priors on the precision and bias of locally developed SPFs are essentially unknown.This study aims to examine the effects of globally informative priors and their distribution types on the precision and bias of SPFs developed for Australian crash data. To formulate and develop global informative priors, the means and variances of parameter estimates from previous research were critically reviewed. Informative priors were generated using three methods: 1) distribution fitting, 2) endogenous specification of dispersion parameters, and 3) hypothetically increasing the strength of priors obtained from distribution fitting. In so doing, the mean effects of crash contributing factors across the world are significantly different than those same effects in Australia. A total of 25 Bayesian Random Parameters Negative Binomial SPFs were estimated for different types of informative priors across five sample sizes. The means and standard deviations of posterior parameter estimates as well as SPFs goodness of fit were compared between the models across different sample sizes. Globally informative prior for the dispersion parameter substantially increases the precision of a local estimate, even when the variance of local data likelihood is small. In comparison with the conventional use of Normal distribution, Logistic, Weibull and Lognormal distributions yield more accurate parameter estimates for average annual daily traffic, segment length and number of lanes, particularly when sample size is relatively small.
机译:安全绩效功能(SPF)的精度和偏差在很大程度上取决于对其进行估算的数据。当本地(在空间和时间上具有代表性)的数据不足时,SPF中的估计参数可能会产生偏差且效率低下。使用贝叶斯推断估计SPF可能会减轻本地数据不足的影响,因为可以将本地数据与从世界其他地方获得的先前信息结合起来,以将其他证据纳入SPF。在贝叶斯模型的过去应用中,由于将先验信息合并到SPF中并不容易,因此通常使用非信息先验。先前使用信息先验估计SPF的一些尝试主要是基于本地先验知识并假设正态分布的先验。此外,尚未考虑本地数据中未观察到的异质性。因此,从全球范围获取信息的先验对本地开发的SPF的精度和偏差的影响基本上是未知的。本研究旨在研究针对澳大利亚坠机数据开发的全球信息的先验及其分布类型对SPF的精度和偏差的影响。 。为了制定和发展全局信息先验,对以前研究的参数估计的均值和方差进行了严格审查。信息性先验是使用三种方法生成的:1)分布拟合,2)色散参数的内生规范以及3)假设地提高了从分布拟合获得的先验强度。这样一来,世界范围内造成碰撞的因素的平均影响与澳大利亚相同的影响就大不相同。在五个样本量中,针对不同类型的先验信息,总共估计了25个贝叶斯随机参数负二项SPF。在不同样本量的模型之间,比较了后验参数估计的均值和标准差以及SPF的拟合优度。即使局部数据似然性的方差很小,色散参数的全局先验信息也会大大提高局部估计的精度。与常规使用的正态分布相比,Logistic,Weibull和Lognormal分布可提供更准确的参数估计值,用于平均每年的日流量,路段长度和车道数,尤其是在样本量相对较小的情况下。

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