论文标题
贝内斯过滤的深度学习
Deep Learning for the Benes Filter
论文作者
论文摘要
BENES滤波器是一个众所周知的连续时间随机滤波模型,它具有明确解决的优势。从进化方程的角度来看,BENES滤波器也是给定特定系数函数的过滤方程的解。通常,滤波随机部分微分方程(SPDE)是作为对局部(可能是嘈杂的观测)条件分布的进化方程式出现的。他们的数值近似为理论家和从业者提供了一个核心问题,他们正在积极寻求准确而快速的方法,尤其是对于像数字天气预测这样的高维环境。在本文中,我们简要研究了一种基于深度学习实现的BENES模型解的密度的新数值方法。基于经典的SPDE分裂方法,我们的算法包括一个递归归一化程序,以恢复信号过程的归一化条件分布。在BENES滤波器的分析可触犯设置中,我们讨论了非线性在滤波模型方程中选择神经网络域中的作用。此外,我们介绍了针对Benes模型的自适应结构域的神经网络方法的首次研究。
The Benes filter is a well-known continuous-time stochastic filtering model in one dimension that has the advantage of being explicitly solvable. From an evolution equation point of view, the Benes filter is also the solution of the filtering equations given a particular set of coefficient functions. In general, the filtering stochastic partial differential equations (SPDE) arise as the evolution equations for the conditional distribution of an underlying signal given partial, and possibly noisy, observations. Their numerical approximation presents a central issue for theoreticians and practitioners alike, who are actively seeking accurate and fast methods, especially for such high-dimensional settings as numerical weather prediction, for example. In this paper we present a brief study of a new numerical method based on the mesh-free neural network representation of the density of the solution of the Benes model achieved by deep learning. Based on the classical SPDE splitting method, our algorithm includes a recursive normalisation procedure to recover the normalised conditional distribution of the signal process. Within the analytically tractable setting of the Benes filter, we discuss the role of nonlinearity in the filtering model equations for the choice of the domain of the neural network. Further we present the first study of the neural network method with an adaptive domain for the Benes model.