Empirical mode decomposition using deep learning model for financial market forecasting

被引:5
|
作者
Jin, Zebin [1 ]
Jin, Yixiao [2 ]
Chen, Zhiyun [3 ]
机构
[1] Ocean Univ China, Coll Management, Qingdao, Shandong, Peoples R China
[2] Shanghai Yingcai Informat Technol Ltd, Fengxian, Shanghai, Peoples R China
[3] Jinan Univ, Shenzhen, Peoples R China
关键词
Deep learning; Decision making and analysis; EMD; Eigenmode function; Interval EMD; Particle swarm optimization; Time series; CRUDE-OIL PRICE; NEURAL-NETWORK; EXCHANGE-RATE; VOLATILITY; ALGORITHM; MOVEMENT; INTERNET; SPECTRUM;
D O I
10.7717/peerj-cs.1076
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Financial market forecasting is an essential component of financial systems; however, predicting financial market trends is a challenging job due to noisy and non-stationary information. Deep learning is renowned for bringing out excellent abstract features from the huge volume of raw data without depending on prior knowledge, which is potentially fascinating in forecasting financial transactions. This article aims to propose a deep learning model that autonomously mines the statistical rules of data and guides the financial market transactions based on empirical mode decomposition (EMD) with back-propagation neural networks (BPNN). Through the characteristic time scale of data, the intrinsic wave pattern was obtained and then decomposed. Financial market transaction data were analyzed, optimized using PSO, and predicted. Combining the nonlinear and non-stationary financial time series can improve prediction accuracy. The predictive model of deep learning, based on the analysis of the massive financial trading data, can forecast the future trend of financial market price, forming a trading signal when particular confidence is satisfied. The empirical results show that the EMD-based deep learning model has an excellent predicting performance.
引用
收藏
页数:28
相关论文
共 50 条
  • [11] Forecasting stochastic neural network based on financial empirical mode decomposition
    Wang, Jie
    Wang, Jun
    NEURAL NETWORKS, 2017, 90 : 8 - 20
  • [12] Empirical Mode Decomposition based ensemble deep learning for load demand time series forecasting
    Qiu, Xueheng
    Ren, Ye
    Suganthan, Ponnuthurai Nagaratnam
    Amaratunga, Gehan A. J.
    APPLIED SOFT COMPUTING, 2017, 54 : 246 - 255
  • [13] Hybrid deep learning and empirical mode decomposition model for time series applications
    Yang, Hao-Fan
    Chen, Yi-Ping Phoebe
    EXPERT SYSTEMS WITH APPLICATIONS, 2019, 120 : 128 - 138
  • [14] Forecasting Electricity Market Risk Using Empirical Mode Decomposition (EMD)-Based Multiscale Methodology
    He, Kaijian
    Wang, Hongqian
    Du, Jiangze
    Zou, Yingchao
    ENERGIES, 2016, 9 (11)
  • [15] An Improved Deep-Learning-Based Financial Market Forecasting Model in the Digital Economy
    Dexiang, Yang
    Shengdong, Mu
    Liu, Yunjie
    Jijian, Gu
    Chaolung, Lien
    MATHEMATICS, 2023, 11 (06)
  • [16] Analysis of Financial Time Series Forecasting using Deep Learning Model
    Kumar, Raghavendra
    Kumar, Pardeep
    Kumar, Yugal
    2021 11TH INTERNATIONAL CONFERENCE ON CLOUD COMPUTING, DATA SCIENCE & ENGINEERING (CONFLUENCE 2021), 2021, : 877 - 881
  • [17] A stacked ensemble learning method for traffic speed forecasting using empirical mode decomposition
    Kianifar, Mohammad-Ali
    Motallebi, Hassan
    Bardsiri, Vahid Khatibi
    JOURNAL OF THE CHINESE INSTITUTE OF ENGINEERS, 2022, 45 (03) : 282 - 291
  • [18] Forecasting Financial Markets using Deep Learning
    Zanc, Razvan
    Cioara, Tudor
    Anghel, Ionut
    2019 IEEE 15TH INTERNATIONAL CONFERENCE ON INTELLIGENT COMPUTER COMMUNICATION AND PROCESSING (ICCP 2019), 2019, : 459 - 466
  • [19] Ensemble empirical mode decomposition based deep learning models for forecasting river flow time series
    Maiti, Reetun
    Menon, Balagopal G.
    Abraham, Anand
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 255
  • [20] User-side Net Load Forecasting Method Integrating Empirical Mode Decomposition and Deep Learning
    Liu Y.
    Wu H.
    Liu T.
    Yang Z.
    Liu J.
    Li Q.
    Dianli Xitong Zidonghua/Automation of Electric Power Systems, 2021, 45 (24): : 57 - 64