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Accuracy assessment in multivariate Bayesian forecasting linear and nonlinear models.

机译:多元贝叶斯预测线性和非线性模型的准确性评估。

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摘要

Reduced alertness and high levels of cognitive fatigue due to sleep loss bring forth substantial risks in today's 24/7 society. Biomathematical models can be used to help mitigate such risks by predicting quantitative levels of fatigue under sleep loss. These models help manage risk by providing information on the timing at which high levels of fatigue will occur; countermeasures can then be taken to reduce accident risk at such critical times.;Many quantitative models exist to predict cognitive performance based on homeostatic and circadian processes (Mallis et al., 2004). These models have typically been fitted to group average data. Due to large individual variation, group-average predictions are often inaccurate for a given individual. However, since individual differences are trait-like, between subjects variation can be captured by individualizing model parameters using the technique of Bayesian forecasting. In many cases the amount of data collected, and consequently, the prediction accuracy, will be limited by factors such as cost and availability. However; prediction accuracy may still be improved by including information from alternative, correlated performance measures in a multivariate Bayesian forecasting framework.;When collecting data from two performance measures, we consider methods of sampling that obtain a desired average level of prediction accuracy for minimal data collection cost. We assess the prediction accuracy using the Bayesian mean squared error (MSE) and derive this measure for a general Bayesian linear model. To understand how the accuracy depends on the number of measurements from primary and secondary tasks in the simplest case, we apply the equation to specify the accuracy for the bivariate Bayesian linear model of subject means. For this simple model, we further assume that observations from each performance measure have a fixed cost per data point, and use this assumption to determine the number of measurements of each variable needed to minimize the cost while still obtaining no less than the desired level of accuracy.;To aid the extension of the findings from the linear case to state of the art nonlinear biomathematical fatigue models, we focus on obtaining our extended measure of accuracy for the nonlinear case. Computing this accuracy analytically is often infeasible without reliance on model approximations. Model simulations can be used to compute this accuracy; however, such simulations can be time consuming, especially for models that lack analytic solutions and require that a system of differential equations be solved to produce model dynamics. Much of this computational burden in assessing estimator accuracy, however, is produced by using the Bayesian MMSE estimator, and could be reduced by taking advantage of the quicker to compute Bayesian MAP estimator. We show how for a nonlinear biomathematical model that the accuracy assessment using repeated simulation with the MAP estimator yields a reasonable estimate of the accuracy obtained using the MMSE estimator. Still, however, for any given case, determination of whether the MMSE accuracy can be approximated with the MAP accuracy requires these time consuming simulations. We begin to analytically identify classes of models where the MMSE accuracy can be approximated by the MAP accuracy. We consider a class of quadratic Bayesian models, and show by analytic approximation that for this class, the MMSE has twice the accuracy of the MAP.
机译:在当今的24/7社会中,由于睡眠不足导致的机敏性降低和认知疲劳的高水平带来了巨大的风险。生物数学模型可用于通过预测睡眠丧失下的疲劳定量水平来帮助减轻此类风险。这些模型通过提供有关高度疲劳发生时间的信息来帮助管理风险。然后可以采取相应的对策,以减少此类关键时刻的事故风险。现有许多定量模型可基于稳态和昼夜节律过程预测认知表现(Mallis等,2004)。这些模型通常适合分组平均数据。由于个体差异较大,对于给定的个体,群体平均预测通常不准确。但是,由于个体差异是特征性的,因此可以使用贝叶斯预测技术通过个体化模型参数来捕获对象之间的差异。在许多情况下,收集的数据量以及因此的预测准确性将受到诸如成本和可用性之类的因素的限制。然而;通过在多变量贝叶斯预测框架中包含来自替代的相关性能指标的信息,仍可以提高预测精度。当从两个性能指标收集数据时,我们考虑采用采样方法以最小的数据收集成本获得所需的平均预测精度水平。我们使用贝叶斯均方误差(MSE)评估预测准确性,并针对一般的贝叶斯线性模型得出此度量。为了了解在最简单的情况下准确性如何取决于主要任务和次要任务的测量次数,我们应用方程式来指定主题均值的双变量贝叶斯线性模型的准确性。对于这个简单的模型,我们进一步假设来自每个性能度量的观察值每个数据点具有固定成本,并使用此假设来确定为使成本最小化而仍获得不少于期望水平的变量所需的每个变量的度量数量。为了帮助将结果从线性案例扩展到最新的非线性生物数学疲劳模型,我们专注于获取非线性案例准确性的扩展度量。如果不依靠模型近似值,通常无法进行分析计算精度。模型仿真可用于计算此精度;但是,这种模拟可能很耗时,特别是对于缺少解析解并且需要解决微分方程组以产生模型动力学的模型。但是,使用贝叶斯MMSE估计器会产生很多评估估计器准确性的计算负担,并且可以利用更快地计算贝叶斯MAP估计器来减轻这种负担。我们展示了对于非线性生物数学模型,如何通过使用MAP估计器进行重复仿真来进行准确性评估,从而得出使用MMSE估计器获得的准确性的合理估计。但是,对于任何给定的情况,要确定MMSE精度是否可以用MAP精度近似,都需要这些耗时的模拟。我们开始分析性地确定模型类别,其中MMSE准确性可以通过MAP准确性来近似。我们考虑一类二次贝叶斯模型,并通过解析近似表明,对于此类,MMSE的精确度是MAP的两倍。

著录项

  • 作者

    Kogan, Clark Joachim.;

  • 作者单位

    University of Montana.;

  • 授予单位 University of Montana.;
  • 学科 Statistics.;Psychology Psychometrics.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 94 p.
  • 总页数 94
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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