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首页> 外文期刊>Risk analysis >Recognizing Structural Nonidentifiability: When Experiments Do Not Provide Information About Important Parameters and Misleading Models Can Still Have Great Fit
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Recognizing Structural Nonidentifiability: When Experiments Do Not Provide Information About Important Parameters and Misleading Models Can Still Have Great Fit

机译:识别结构的不可识别性:当实验不提供有关重要参数的信息并且误导性模型仍然很适合时

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In the quest to model various phenomena, the foundational importance of parameter identifiability to sound statistical modeling may be less well appreciated than goodness of fit. Identifiability concerns the quality of objective information in data to facilitate estimation of a parameter, while nonidentifiability means there are parameters in a model about which the data provide little or no information. In purely empirical models where parsimonious good fit is the chief concern, nonidentifiability (or parameter redundancy) implies overparameterization of the model. In contrast, nonidentifiability implies underinformativeness of available data in mechanistically derived models where parameters are interpreted as having strong practical meaning. This study explores illustrative examples of structural nonidentifiability and its implications using mechanistically derived models (for repeated presence/absence analyses and dose-response of Escherichia coli O157:H7 and norovirus) drawn from quantitative microbial risk assessment. Following algebraic proof of nonidentifiability in these examples, profile likelihood analysis and Bayesian Markov Chain Monte Carlo with uniform priors are illustrated as tools to help detect model parameters that are not strongly identifiable. It is shown that identifiability should be considered during experimental design and ethics approval to ensure generated data can yield strong objective information about all mechanistic parameters of interest. When Bayesian methods are applied to a nonidentifiable model, the subjective prior effectively fabricates information about any parameters about which the data carry no objective information. Finally, structural nonidentifiability can lead to spurious models that fit data well but can yield severely flawed inferences and predictions when they are interpreted or used inappropriately.
机译:在寻求对各种现象进行建模的过程中,参数可识别性对于合理的统计建模的基本重要性可能不如拟合优度那么好。可识别性涉及数据中客观信息的质量以促进参数估计,而不可识别性意味着模型中存在参数,而数据却很少或根本不提供信息。在以简约拟合为主要考虑因素的纯经验模型中,不可识别性(或参数冗余性)意味着模型的过度参数化。相反,不可识别性意味着在机械推导的模型中可用数据的信息不足,在这种模型中,参数被解释为具有很强的实际意义。本研究使用定量微生物风险评估得出的机制衍生模型(用于大肠杆菌O157:H7和诺如病毒的重复存在/不存在分析和剂量反应)探索结构不可识别性及其含义的说明性示例。在这些示例中以不可识别性的代数证明之后,轮廓似然分析和具有统一先验的贝叶斯马尔可夫链蒙特卡洛被例示为帮助检测无法强烈识别的模型参数的工具。结果表明,在实验设计和道德规范批准过程中应考虑可识别性,以确保生成的数据可以产生有关所有感兴趣的机械参数的强大客观信息。当贝叶斯方法应用于不可识别的模型时,主观先验可以有效地构造有关任何参数的信息,而有关这些参数的数据不包含任何客观信息。最后,结构的不可识别性可能导致伪造的模型很好地适合数据,但是如果对它们的解释或使用不当,则会产生严重错误的推论和预测。

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