Bolland P J, Connor J T
London Business School, Department of Decision Science, UK.
Int J Neural Syst. 1997 Aug;8(4):399-415. doi: 10.1142/s0129065797000409.
In this paper we present a neural network extended Kalman filter for modeling noisy financial time series. The neural network is employed to estimate the nonlinear dynamics of the extended Kalman filter. Conditions for the neural network weight matrix are provided to guarantee the stability of the filter. The extended Kalman filter presented is designed to filter three types of noise commonly observed in financial data: process noise, measurement noise, and arrival noise. The erratic arrival of data (arrival noise) results in the neural network predictions being iterated into the future. Constraining the neural network to have a fixed point at the origin produces better iterated predictions and more stable results. The performance of constrained and unconstrained neural networks within the extended Kalman filter is demonstrated on "Quote" tick data from the $/DM exchange rate (1993-1995).
在本文中,我们提出了一种用于对有噪声的金融时间序列进行建模的神经网络扩展卡尔曼滤波器。该神经网络用于估计扩展卡尔曼滤波器的非线性动态。给出了神经网络权重矩阵的条件以保证滤波器的稳定性。所提出的扩展卡尔曼滤波器旨在过滤金融数据中常见的三种噪声:过程噪声、测量噪声和到达噪声。数据的不规则到达(到达噪声)导致神经网络预测被迭代到未来。约束神经网络在原点处有一个固定点可产生更好的迭代预测和更稳定的结果。在美元/德国马克汇率(1993 - 1995年)的“报价”tick数据上展示了扩展卡尔曼滤波器内受约束和无约束神经网络的性能。