Forecasting of Forex Time Series Data Based on Deep Learning
Lina Ni(Tongji University), Yujie Li(Shandong University of Science and Technology), Xiao Wang(Shandong University of Science and Technology), Jinquan Zhang(Shandong University of Science and Technology), Jiguo Yu(Qilu University of Technology), Chengming Qi(Beijing Union University)
Cited by 120Open Access
Abstract
This paper proposes a C-RNN forecasting method for Forex time series data based on deep-Recurrent Neural Network (RNN) and deep Convolutional Neural Network (CNN), which can further improve the prediction accuracy of deep learning algorithm for the time series data of exchange rate. We fully exploit the spatio-temporal characteristics of forex time series data based on the data-driven method. On the exchange rate data of nine major foreign exchange currencies, the experimental comparison of the forecasting method shows that the C-RNN foreign exchange time series data prediction method constructed in this paper has better applicability and higher accuracy.
Related Papers
No related papers found
Powered by citation graph analysis