Dilated Convolutional Neural Networks for Time Series Forecasting

IF 0.8 4区 经济学 Q4 BUSINESS, FINANCE Journal of Computational Finance Pub Date : 2018-10-24 DOI:10.21314/JCF.2019.358
A. Borovykh, S. Bohté, C. Oosterlee
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引用次数: 79

Abstract

We present a method for conditional time series forecasting based on an adaptation of the recent deep convolutional WaveNet architecture. The proposed network contains stacks of dilated convolutions that allow it to access a broad range of historical data when forecasting. It also uses a rectified linear unit (ReLU) activation function, and conditioning is performed by applying multiple convolutional filters in parallel to separate time series, which allows for the fast processing of data and the exploitation of the correlation structure between the multivariate time series. We test and analyze the performance of the convolutional network both unconditionally and conditionally for financial time series forecasting using the Standard & Poor’s 500 index, the volatility index, the Chicago Board Options Exchange interest rate and several exchange rates, and we extensively compare its performance with those of the well-known autoregressive model and a long short-term memory network. We show that a convolutional network is well suited to regression-type problems and is able to effectively learn dependencies in and between the series without the need for long historical time series, that it is a time-efficient and easy-to-implement alternative to recurrent-type networks, and that it tends to outperform linear and recurrent models.
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扩展卷积神经网络用于时间序列预测
我们提出了一种基于深度卷积WaveNet结构的条件时间序列预测方法。所提出的网络包含扩展卷积堆栈,允许它在预测时访问广泛的历史数据。它还使用了一个整流线性单元(ReLU)激活函数,并通过并行地将多个卷积滤波器应用于单独的时间序列来执行条件调节,这允许快速处理数据并利用多元时间序列之间的相关结构。我们使用标准普尔500指数、波动率指数、芝加哥期权交易所利率和几种汇率对卷积网络在金融时间序列预测中的无条件和有条件性能进行了测试和分析,并将其与著名的自回归模型和长短期记忆网络的性能进行了广泛的比较。我们表明,卷积网络非常适合于回归型问题,并且能够有效地学习序列内和序列之间的依赖关系,而不需要长时间的历史时间序列,它是递归型网络的一种时间效率高且易于实现的替代方案,并且它倾向于优于线性和递归模型。
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来源期刊
CiteScore
0.90
自引率
0.00%
发文量
8
期刊介绍: The Journal of Computational Finance is an international peer-reviewed journal dedicated to advancing knowledge in the area of financial mathematics. The journal is focused on the measurement, management and analysis of financial risk, and provides detailed insight into numerical and computational techniques in the pricing, hedging and risk management of financial instruments. The journal welcomes papers dealing with innovative computational techniques in the following areas: Numerical solutions of pricing equations: finite differences, finite elements, and spectral techniques in one and multiple dimensions. Simulation approaches in pricing and risk management: advances in Monte Carlo and quasi-Monte Carlo methodologies; new strategies for market factors simulation. Optimization techniques in hedging and risk management. Fundamental numerical analysis relevant to finance: effect of boundary treatments on accuracy; new discretization of time-series analysis. Developments in free-boundary problems in finance: alternative ways and numerical implications in American option pricing.
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