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Deep Stock Representation Learning: From Candlestick Charts to Investment Decisions

Authors :
Hu, Guosheng
Hu, Yuxin
Yang, Kai
Yu, Zehao
Sung, Flood
Zhang, Zhihong
Xie, Fei
Liu, Jianguo
Robertson, Neil
Hospedales, Timothy
Miemie, Qiangwei
Publication Year :
2017

Abstract

We propose a novel investment decision strategy (IDS) based on deep learning. The performance of many IDSs is affected by stock similarity. Most existing stock similarity measurements have the problems: (a) The linear nature of many measurements cannot capture nonlinear stock dynamics; (b) The estimation of many similarity metrics (e.g. covariance) needs very long period historic data (e.g. 3K days) which cannot represent current market effectively; (c) They cannot capture translation-invariance. To solve these problems, we apply Convolutional AutoEncoder to learn a stock representation, based on which we propose a novel portfolio construction strategy by: (i) using the deeply learned representation and modularity optimisation to cluster stocks and identify diverse sectors, (ii) picking stocks within each cluster according to their Sharpe ratio (Sharpe 1994). Overall this strategy provides low-risk high-return portfolios. We use the Financial Times Stock Exchange 100 Index (FTSE 100) data for evaluation. Results show our portfolio outperforms FTSE 100 index and many well known funds in terms of total return in 2000 trading days.<br />Comment: Accepted to International Conference on Acoustics, Speech and Signal Processing (ICASSP) 2018

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1709.03803
Document Type :
Working Paper