Futuristic portfolio optimization problem: wavelet based long short-term memory

被引:0
作者
Abolmakarem, Shaghayegh [1 ]
Abdi, Farshid [1 ]
Khalili-Damghani, Kaveh [1 ]
Didehkhani, Hosein [2 ]
机构
[1] Islamic Azad Univ, South Tehran Branch, Dept Ind Engn, Tehran, Iran
[2] Islamic Azad Univ, Aliabad Katoul Branch, Dept Ind Engn, Aliabad, Iran
关键词
Deep learning; Long short-term memory (LSTM); Wavelet transformation; Mean-variance portfolio optimization problem; Epsilon-constraint method; STOCK-MARKET; MODEL; SYSTEM; FRAMEWORK; MACHINE; REGRESSION;
D O I
10.1108/JM2-09-2022-0232
中图分类号
C93 [管理学];
学科分类号
12 ; 1201 ; 1202 ; 120202 ;
摘要
PurposeThis paper aims to propose an improved version of portfolio optimization model through the prediction of the future behavior of stock returns using a combined wavelet-based long short-term memory (LSTM).Design/methodology/approachFirst, data are gathered and divided into two parts, namely, "past data" and "real data." In the second stage, the wavelet transform is proposed to decompose the stock closing price time series into a set of coefficients. The derived coefficients are taken as an input to the LSTM model to predict the stock closing price time series and the "future data" is created. In the third stage, the mean-variance portfolio optimization problem (MVPOP) has iteratively been run using the "past," "future" and "real" data sets. The epsilon-constraint method is adapted to generate the Pareto front for all three runes of MVPOP.FindingsThe real daily stock closing price time series of six stocks from the FTSE 100 between January 1, 2000, and December 30, 2020, is used to check the applicability and efficacy of the proposed approach. The comparisons of "future," "past" and "real" Pareto fronts showed that the "future" Pareto front is closer to the "real" Pareto front. This demonstrates the efficacy and applicability of proposed approach.Originality/valueMost of the classic Markowitz-based portfolio optimization models used past information to estimate the associated parameters of the stocks. This study revealed that the prediction of the future behavior of stock returns using a combined wavelet-based LSTM improved the performance of the portfolio.
引用
收藏
页码:523 / 555
页数:33
相关论文
共 50 条
  • [31] Bi-directional long short-term memory method based on attention mechanism and rolling update for short-term load forecasting
    Wang, Shouxiang
    Wang, Xuan
    Wang, Shaomin
    Wang, Dan
    INTERNATIONAL JOURNAL OF ELECTRICAL POWER & ENERGY SYSTEMS, 2019, 109 : 470 - 479
  • [32] Long-term and short-term memory networks based on forgetting memristors
    Liu, Yi
    Chen, Ling
    Li, Chuandong
    Liu, Xin
    Zhou, Wenhao
    Li, Ke
    SOFT COMPUTING, 2023, 27 (23) : 18403 - 18418
  • [33] Forecasting Bitcoin returns with long short-term memory networks and wavelet decomposition: A comparison of several market determinants
    Parvini, Navid
    Abdollahi, Mahsa
    Seifollahi, Sattar
    Ahmadian, Davood
    APPLIED SOFT COMPUTING, 2022, 121
  • [34] Production optimization under waterflooding with long short-term memory and metaheuristic algorithm
    Ng, Cuthbert Shang Wui
    Ghahfarokhi, Ashkan Jahanbani
    Amar, Menad Nait
    PETROLEUM, 2023, 9 (01) : 53 - 60
  • [35] Detection and identification drones using long short-term memory and Bayesian optimization
    El-Latif E.I.A.
    Multimedia Tools and Applications, 2025, 84 (14) : 13983 - 13999
  • [36] The importance of short lag-time in the runoff forecasting model based on long short-term memory
    Chen, Xi
    Huang, Jiaxu
    Han, Zhen
    Gao, Hongkai
    Liu, Min
    Li, Zhiqiang
    Liu, Xiaoping
    Li, Qingli
    Qi, Honggang
    Huang, Yonggui
    JOURNAL OF HYDROLOGY, 2020, 589
  • [37] Long Short-Term Memory Networks for Automatic Generation of Conversations
    Fujita, Tomohiro
    Bai, Wenjun
    Quan, Changqin
    2017 18TH IEEE/ACIS INTERNATIONAL CONFERENCE ON SOFTWARE ENGINEERING, ARTIFICIAL INTELLIGENCE, NETWORKING AND PARALLEL/DISTRIBUTED COMPUTING (SNDP 2017), 2017, : 483 - 487
  • [38] An accident diagnosis algorithm using long short-term memory
    Yang, Jaemin
    Kim, Jonghyun
    NUCLEAR ENGINEERING AND TECHNOLOGY, 2018, 50 (04) : 582 - 588
  • [39] Prediction of air pollutant concentrations based on the long short-term memory neural network
    Wu, Zechuan
    Tian, Yuping
    Li, Mingze
    Wang, Bin
    Quan, Ying
    Liu, Jianyang
    JOURNAL OF HAZARDOUS MATERIALS, 2024, 465
  • [40] Stock Market Prediction Using Long Short-Term Memory
    Ukrit, M. Ferni
    Saranya, A.
    Anurag, Rallabandi
    ARTIFICIAL INTELLIGENCE AND EVOLUTIONARY COMPUTATIONS IN ENGINEERING SYSTEMS, 2020, 1056 : 205 - 212