Research Area:  Machine Learning
Portfolio optimization is an important part of portfolio management. It realizes the trade-off between maximizing expected return and minimizing risk. A better portfolio optimization model helps investors achieve higher expected returns under the same risk level. This paper proposes a novel prediction based portfolio optimization model. This model uses autoencoder (AE) for feature extraction and long short term memory (LSTM) network to predict stock return, then predicted and historical returns are utilized to build a portfolio optimization model by advancing worst-case omega model. In order to show the effect of AE, the LSTM network without any feature extraction methods is used as a benchmark in stock prediction. Also, an equally weighted portfolio is considered as a comparison to reveal the advantage of the worst-case omega model. Empirical results show that the proposed model significantly outperforms the equally weighted portfolio, and a high risk–return preference is more suitable to this model. In addition, even after deducting transaction fees, this model still achieves a satisfying return and performs better than the state-of-art prediction based portfolio optimization models. Thus, this paper recommends applying this model in practical investment.
Keywords:  
Prediction
Portfolio optimization model
Deep learning
autoencoder (AE)
long short term memory (LSTM)
Author(s) Name:  Yilin Ma, Weizhong Wang, Qianting Ma
Journal name:  Computers & Industrial Engineering
Conferrence name:  
Publisher name:  Elsevier
DOI:  10.1016/j.cie.2023.109023
Volume Information:  Volume 177, March 2023, 109023
Paper Link:   https://www.sciencedirect.com/science/article/abs/pii/S0360835223000475