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Portfolio formation with preselection using deep learning from long-term financial data.

Authors :
Wang, Wuyu
Li, Weizi
Zhang, Ning
Liu, Kecheng
Source :
Expert Systems with Applications. Apr2020, Vol. 143, pN.PAG-N.PAG. 1p.
Publication Year :
2020

Abstract

• A novel method for investment builds from classic statistics and deep-learning. • Portfolio formation by mean-variance and deep learning for predictive finance. • Emphasis on preselection of high quality assets. • Considering long-term dependences in time-series fluctuation. • The results outperform other strategies with respect to potential returns and risks. Portfolio theory is an important foundation for portfolio management which is a well-studied subject yet not fully conquered territory. This paper proposes a mixed method consisting of long short-term memory networks and mean-variance model for optimal portfolio formation in conjunction with the asset preselection, in which long-term dependences of financial time-series data can be captured. The experiment uses a large volume of sample data from the UK Stock Exchange 100 Index between March 1994 and March 2019. In the first stage, long short-term memory networks are used to forecast the return of assets and select assets with higher potential returns. After comparing the outcomes of the long short-term memory networks against support vector machine, random forest, deep neural networks, and autoregressive integrated moving average model, we discover that long short-term memory networks are appropriate for financial time-series forecasting, to beat the other benchmark models by a very clear margin. In the second stage, based on selected assets with higher returns, the mean-variance model is applied for portfolio optimisation. The validation of this methodology is carried out by comparing the proposed model with the other five baseline strategies, to which the proposed model clearly outperforms others in terms of the cumulative return per year, Sharpe ratio per triennium as well as average return to the risk per month of each triennium. i.e. potential returns and risks. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
09574174
Volume :
143
Database :
Academic Search Index
Journal :
Expert Systems with Applications
Publication Type :
Academic Journal
Accession number :
140985096
Full Text :
https://doi.org/10.1016/j.eswa.2019.113042