泊松观测下非线性动力模型推理的期望传播

Byron M. Yu, K. Shenoy, M. Sahani
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引用次数: 14

摘要

随着时间的推移,神经活动的展开可以用非线性动力系统[1]来建模。由于神经元通过离散的动作电位进行交流,它们的活动可以通过在预定义的短时间内发生的事件数量(峰值计数)来表征。由于观测到的数据是非负整数的高维向量,因此从峰值计数中进行非线性状态估计提出了一系列独特的挑战。在本文中,我们描述了为什么期望传播(EP)框架特别适合于这个问题。然后,我们演示了提高基于高斯正交的EP的鲁棒性和准确性的方法。与无气味卡尔曼光滑相比,我们发现基于ep的状态估计器提供了更准确的状态估计。
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Expectation Propagation for Inference in Non-Linear Dynamical Models with Poisson Observations
Neural activity unfolding over time can be modeled using non-linear dynamical systems [1]. As neurons communicate via discrete action potentials, their activity can be characterized by the numbers of events occurring within short pre-defined time-bins (spike counts). Because the observed data are high-dimensional vectors of non-negative integers, non-linear state estimation from spike counts presents a unique set of challenges. In this paper, we describe why the expectation propagation (EP) framework is particularly well-suited to this problem. We then demonstrate ways to improve the robustness and accuracy of Gaussian quadrature-based EP. Compared to the unscented Kalman smoother, we find that EP-based state estimators provide more accurate state estimates.
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