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A Particle Filter Approach to Multiprocess Dynamic Models with Application to Hormone Data

机译:一种多过程动态模型的粒子滤波方法及其在激素数据中的应用

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摘要

We extend the multiprocess dynamic models to the general non-Gaussian and nonlinear setting. Under this framework, we propose specific models to simultaneously model hormone smooth basal trend and pulsatile activities. The pulse input is modeled by two processes: one as a point mass at zero and one as a gamma distributed random variable. This gamma-driven approach ensures the pulse estimates to be nonnegative, which is an intrinsic characteristic of hormone dynamics. The smooth trend is modeled by smoothing splines. Both additive and multiplicative observational errors are investigated. Parameters are estimated by maximizing the marginal likelihood. Baseline and pulses are estimated by posterior means. For implementation, particle filter is adopted. Unlike the traditional condensation method where a single distribution is used to approximate a mixture of distributions, this particle filter approach allows the model components to be accurately evaluated at the expense of computational resources. The specific models are applied to a cortisol series. The finite sample performance is evaluated by a simulation. The data application and the simulation show that the biological characteristics can be incorporated and be accurately estimated under the proposed framework.
机译:我们将多过程动态模型扩展到一般的非高斯和非线性设置。在此框架下,我们提出了一些特定的模型来同时模拟激素的平滑基础趋势和搏动活动。脉冲输入通过两个过程建模:一个是零时的点质量,另一个是伽玛分布的随机变量。这种伽马驱动的方法可确保脉冲估算值是非负的,这是激素动力学的固有特征。平滑趋势是通过平滑样条曲线建模的。研究了相加和相乘的观察误差。通过最大化边缘可能性来估计参数。基线和脉搏通过后验方法估算。为了实现,采用了粒子过滤器。与传统的凝结方法不同,传统的凝结方法使用单个分布来近似分布的混合,此粒子滤波方法允许以计算资源为代价来精确评估模型组件。特定模型应用于皮质醇系列。有限样品性能通过仿真评估。数据应用和仿真表明,在所提出的框架下,可以整合并准确估计其生物学特性。

著录项

  • 作者

    Liu Ziyue;

  • 作者单位
  • 年度 2015
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类
  • 入库时间 2022-08-20 20:22:49

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