Forecasting financial asset processes: stochastic dynamics via learning neural networks.

S Giebel, M Rainer
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Abstract

Models for financial asset dynamics usually take into account their inherent unpredictable nature by including a suitable stochastic component into their process. Unknown (forward) values of financial assets (at a given time in the future) are usually estimated as expectations of the stochastic asset under a suitable risk-neutral measure. This estimation requires the stochastic model to be calibrated to some history of sufficient length in the past. Apart from inherent limitations, due to the stochastic nature of the process, the predictive power is also limited by the simplifying assumptions of the common calibration methods, such as maximum likelihood estimation and regression methods, performed often without weights on the historic time series, or with static weights only. Here we propose a novel method of "intelligent" calibration, using learning neural networks in order to dynamically adapt the parameters of the stochastic model. Hence we have a stochastic process with time dependent parameters, the dynamics of the parameters being themselves learned continuously by a neural network. The back propagation in training the previous weights is limited to a certain memory length (in the examples we consider 10 previous business days), which is similar to the maximal time lag of autoregressive processes. We demonstrate the learning efficiency of the new algorithm by tracking the next-day forecasts for the EURTRY and EUR-HUF exchange rates each.

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预测金融资产过程:通过学习神经网络的随机动力学。
金融资产动态模型通常通过在其过程中包含合适的随机成分来考虑其固有的不可预测性。金融资产的未知(远期)价值(在未来的给定时间)通常被估计为随机资产在合适的风险中性度量下的期望。这种估计需要将随机模型校准到过去足够长的历史上。除了固有的限制之外,由于过程的随机性,预测能力也受到常见校准方法的简化假设的限制,例如最大似然估计和回归方法,这些方法通常在历史时间序列上没有权重,或者只有静态权重。在这里,我们提出了一种新的“智能”校准方法,利用学习神经网络来动态适应随机模型的参数。因此,我们有一个具有时间依赖参数的随机过程,参数的动态是由神经网络连续学习的。训练前一个权重的反向传播被限制在一定的记忆长度内(在示例中我们考虑10个前一个工作日),这类似于自回归过程的最大时滞。我们通过跟踪EURTRY和EUR-HUF汇率的第二天预测来证明新算法的学习效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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