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Learning Deep Hidden Nonlinear Dynamics from Aggregate Data

机译:从聚合数据学习深度隐藏的非线性动态

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Learning nonlinear dynamics from diffusion data is a challenging problem since the individuals observed may be different at different time points, generally following an aggregate behaviour. Existing work cannot handle the tasks well since they model such dynamics either directly on observations or enforce the availability of complete longitudinal individual-level trajectories. However, in most of the practical applications, these requirements are unrealistic: the evolving dynamics may be too complex to be modeled directly on observations, and individual-level trajectories may not be available due to technical limitations, experimental costs and/or privacy issues. To address these challenges, we formulate a model of diffusion dynamics as the hidden stochastic process via the introduction of hidden variables for flexibility, and learn the hidden dynamics directly on aggregate observations without any requirement for individual-level trajectories. We propose a dynamic generative model with Wasserstein distance for LEarninG dEcp hidden Nonlinear Dynamics (LEGEND) and prove its theoretical guarantees as well. Experiments on a range of synthetic and real-world datasets illustrate that LEGEND has very strong performance compared to state-of-the-art baselines.
机译:从扩散数据进行学习非线性动力学是一个具有挑战性的问题,因为观察到可能在不同的时间点不同的个体,一般以下的聚集体的行为。因为这种动力可以直接上观察模型或执行的完整纵向个体层面的轨迹可用现有的工作不能处理的任务很好。然而,在大多数的实际应用中,这些要求是不现实的:不断发展的动力可能是太复杂,无法直接观察建模和个人层面的轨迹可能无法使用,由于技术的限制,实验成本和/或隐私问题。为了应对这些挑战,我们通过引入隐变量的灵活性制定扩散动力学作为隐藏的随机过程的模型,并直接了解藏动力学上总的意见,而不对个人层面的轨迹任何要求。我们建议用Wasserstein的距离动态生成模型的学习DECP隐藏的非线性动力学(LEGEND),并证明其理论保证为好。在一系列模拟和真实世界的数据集的实验说明,相比于国家的最先进的基线LEGEND具有非常强大的性能。

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