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New model diagnostics for spatio-temporal systems in epidemiology and ecology

机译:流行病学和生态学中时空系统的新模型诊断

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摘要

A cardinal challenge in epidemiological and ecological modelling is to develop effective and easily deployed tools for model assessment. The availability of such methods would greatly improve understanding, prediction and management of disease and ecosystems. Conventional Bayesian model assessment tools such as Bayes factors and the deviance information criterion (DIC) are natural candidates but suffer from important limitations because of their sensitivity and complexity. Posterior predictive checks, which use summary statistics of the observed process simulated from competing models, can provide a measure of model fit but appropriate statistics can be difficult to identify. Here, we develop a novel approach for diagnosing mis-specifications of a general spatio-temporal transmission model by embedding classical ideas within a Bayesian analysis. Specifically, by proposing suitably designed non-centred parametrization schemes, we construct latent residuals whose sampling properties are known given the model specification and which can be used to measure overall fit and to elicit evidence of the nature of mis-specifications of spatial and temporal processes included in the model. This model assessment approach can readily be implemented as an addendum to standard estimation algorithms for sampling from the posterior distributions, for example Markov chain Monte Carlo. The proposed methodology is first tested using simulated data and subsequently applied to data describing the spread of Heracleum mantegazzianum (giant hogweed) across Great Britain over a 30-year period. The proposed methods are compared with alternative techniques including posterior predictive checking and the DIC. Results show that the proposed diagnostic tools are effective in assessing competing stochastic spatio-temporal transmission models and may offer improvements in power to detect model mis-specifications. Moreover, the latent-residual framework introduced here extends readily to a broad range of ecological and epidemiological models.
机译:流行病学和生态建模的主要挑战是开发有效且易于部署的模型评估工具。这种方法的可用性将大大改善对疾病和生态系统的理解,预测和管理。常规的贝叶斯模型评估工具(例如贝叶斯因子和偏差信息标准(DIC))是自然的候选者,但由于其敏感性和复杂性而受到重要限制。后验预测检查使用从竞争模型中模拟而来的观察过程的摘要统计信息,可以提供模型拟合的度量,但适当的统计信息可能难以识别。在这里,我们通过将经典思想嵌入贝叶斯分析中,开发了一种用于诊断一般时空传播模型的错误规格的新颖方法。具体来说,通过提出适当设计的非中心参数化方案,我们构造了潜在残差,其潜在的采样特性在给定模型规范的情况下是已知的,并且可以用于测量整体拟合并得出空间和时间过程错误指定性质的证据。包含在模型中。这种模型评估方法可以很容易地实现为标准估计算法的附录,以便从后验分布中进行采样,例如马尔可夫链蒙特卡洛。首先使用模拟数据对提出的方法进行了测试,然后将其应用于描述30年间整个英国的Heracleum mantegazzianum(giant hogweed)传播的数据。所提出的方法与包括后验预测检查和DIC在内的替代技术进行了比较。结果表明,所提出的诊断工具可以有效地评估竞争随机时空传播模型,并且可以提高检测模型错误规格的能力。此外,这里介绍的潜在残留框架很容易扩展到广泛的生态和流行病学模型。

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