论文标题
混合效应神经极:用于分析面板数据动力学的变分近似
Mixed Effects Neural ODE: A Variational Approximation for Analyzing the Dynamics of Panel Data
论文作者
论文摘要
在了解儿童发展和疾病建模的研究中,涉及涉及相同参与者纵向测量的面板数据很常见。将神经网络与物理模拟器(例如微分方程)结合的深层混合模型开始推动此类应用中的进步。不仅建模观测值的任务,而且由测量结果捕获的隐藏动态提出了有趣的统计/计算问题。我们提出了一个称为ME节点的概率模型,以合并(固定 +随机)混合效应,以分析此类面板数据。我们表明,可以使用Wong-Zakai定理提供的SDE的平滑近似来得出我们的模型。然后,我们为ME节点得出基于证据的下限,并使用基于MC的采样方法和数值旋转器开发(有效)训练算法。我们证明了我节点在跨越来自阿尔茨海默氏病(AD)研究的实际纵向3D成像数据的频谱的任务上的实用性,并研究了其在插值,不确定性估计和个性化预测的重建准确性方面的性能。
Panel data involving longitudinal measurements of the same set of participants taken over multiple time points is common in studies to understand childhood development and disease modeling. Deep hybrid models that marry the predictive power of neural networks with physical simulators such as differential equations, are starting to drive advances in such applications. The task of modeling not just the observations but the hidden dynamics that are captured by the measurements poses interesting statistical/computational questions. We propose a probabilistic model called ME-NODE to incorporate (fixed + random) mixed effects for analyzing such panel data. We show that our model can be derived using smooth approximations of SDEs provided by the Wong-Zakai theorem. We then derive Evidence Based Lower Bounds for ME-NODE, and develop (efficient) training algorithms using MC based sampling methods and numerical ODE solvers. We demonstrate ME-NODE's utility on tasks spanning the spectrum from simulations and toy data to real longitudinal 3D imaging data from an Alzheimer's disease (AD) study, and study its performance in terms of accuracy of reconstruction for interpolation, uncertainty estimates and personalized prediction.