The article is concerned with the problem of multi-step financial time series forecasting of Foreign Exchange (FX) rates. To address this problem, we introduce a parameter-free regression network termed RegPred Net. The exchange rate to forecast is treated as a stochastic process. It is assumed to follow a generalization of Brownian motion and the mean-reverting process referred to as the generalized Ornstein-Uhlenbeck (OU) process, with time-dependent coefficients. Using past observed values of the input time series, these coefficients can be regressed online by the cells of the first half of the network (Reg). The regressed coefficients depend only on - but are very sensitive to - a small number of hyperparameters required to be set by a global optimization procedure for which, Bayesian optimization is an adequate heuristic. Thanks to its multi-layered architecture, the second half of the regression network (Pred) can project time-dependent values for the OU process coefficients and generate realistic trajectories of the time series. Predictions can be easily derived in the form of expected values estimated by averaging values obtained by Monte Carlo simulation. The forecasting accuracy on a 100 days horizon is evaluated for several of the most important FX rates such as EUR/USD, EUR/CNY, and EUR/GBP. Our experimental results show that the RegPred Net significantly outperforms ARMA, ARIMA, LSTMs, and Autoencoder-LSTM models in this task.
翻译:文章涉及对外汇汇率进行多步金融时间序列预测的问题。为了解决这个问题,我们引入了一个称为RegPred Net 的无参数回归网络。预测的汇率被视为一个随机过程。假设采用布朗运动的概括化和称为普遍Ornstein-Uhlenbeck(OU)进程的中位反转过程,该过程具有基于时间的系数。利用输入时间序列过去观察到的数值,这些系数可以由网络上半部的细胞(Reg)在网上回落。回退系数仅取决于----但对于----一个全球优化程序需要设定的少量超分数参数非常敏感,为此,Bayesian优化是一个适当的超度过程。由于它的多层次结构,回归网络(Pred)的第二半部分可以预测基于时间序列计算的时间值,并产生时间序列中现实的轨迹值。 REBLLLMA/EUR的预测值可以很容易地以A-NURIMA的预期值的形式在A/CURIMA中推算出这一重要水平。