Frontiers in Applied Mathematics and Statistics | |
Financial Forecasting With α-RNNs: A Time Series Modeling Approach | |
Justin London1  Matthew Dixon2  | |
[1] Chicago, IL, United States;Chicago, IL, United States;Chicago, IL, United States; | |
关键词: recurrent neural networks; exponential smoothing; bitcoin; time series modeling; high frequency trading; | |
DOI : 10.3389/fams.2020.551138 | |
来源: Frontiers | |
【 摘 要 】
The era of modern financial data modeling seeks machine learning techniques which are suitable for noisy and non-stationary big data. We demonstrate how a general class of exponential smoothed recurrent neural networks (α-RNNs) are well suited to modeling dynamical systems arising in big data applications such as high frequency and algorithmic trading. Application of exponentially smoothed RNNs to minute level Bitcoin prices and CME futures tick data, highlight the efficacy of exponential smoothing for multi-step time series forecasting. Our α-RNNs are also compared with more complex, “black-box”, architectures such as GRUs and LSTMs and shown to provide comparable performance, but with far fewer model parameters and network complexity.
【 授权许可】
CC BY
【 预 览 】
Files | Size | Format | View |
---|---|---|---|
RO202107160780361ZK.pdf | 1681KB | download |