Forecasting Daily and Monthly Exchange Rates with Machine Learning Techniques

被引:44
|
作者
Plakandaras, Vasilios [1 ]
Papadimitriou, Theophilos [1 ]
Gogas, Periklis [1 ]
机构
[1] Democritus Univ Thrace, Dept Econ, Komotini 69100, Greece
关键词
exchange rate forecasting; support vector regression; multivariate adaptive regression splines; ensemble empirical mode decomposition; EMPIRICAL MODE DECOMPOSITION; SUPPORT VECTOR MACHINES; TIME-SERIES; TEMPORAL AGGREGATION; SELECTION; TREND; RISK; FIT;
D O I
10.1002/for.2354
中图分类号
F [经济];
学科分类号
02 ;
摘要
In this paper we propose and test a forecasting model on monthly and daily spot prices of five selected exchange rates. In doing so, we combine a novel smoothing technique (initially applied in signal processing) with a variable selection methodology and two regression estimation methodologies from the field of machine learning (ML). After the decomposition of the original exchange rate series using an ensemble empirical mode decomposition (EEMD) method into a smoothed and a fluctuation component, multivariate adaptive regression splines (MARS) are used to select the most appropriate variable set from a large set of explanatory variables that we collected. The selected variables are then fed into two distinctive support vector machines (SVR) models that produce one-period-ahead forecasts for the two components. Neural networks (NN) are also considered as an alternative to SVR. The sum of the two forecast components is the final forecast of the proposed scheme. We show that the above implementation exhibits a superior in-sample and out-of-sample forecasting ability when compared to alternative forecasting models. The empirical results provide evidence against the efficient market hypothesis for the selected foreign exchange markets. Copyright (c) 2015 John Wiley & Sons, Ltd.
引用
收藏
页码:560 / 573
页数:14
相关论文
共 50 条
  • [31] CryptoAnalytics: Cryptocoins price forecasting with machine learning techniques
    De Rosa, Pasquale
    Felber, Pascal
    Schiavoni, Valerio
    SOFTWAREX, 2024, 26
  • [32] Forecasting of sales by using fusion of Machine Learning techniques
    Gurnani, Mohit
    Korkey, Yogesh
    Shah, Prachi
    Udmale, Sandeep
    Sambhe, Vijay
    Bhirud, Sunil
    2017 1ST IEEE INTERNATIONAL CONFERENCE ON DATA MANAGEMENT, ANALYTICS AND INNOVATION (ICDMAI), 2017, : 93 - 101
  • [33] Forecasting Bitcoin volatility using machine learning techniques
    Huang, Zih-Chun
    Sangiorgi, Ivan
    Urquhart, Andrew
    JOURNAL OF INTERNATIONAL FINANCIAL MARKETS INSTITUTIONS & MONEY, 2024, 97
  • [34] Stock Price Forecasting by Hybrid Machine Learning Techniques
    Tsai, C-F
    Wang, S-P
    IMECS 2009: INTERNATIONAL MULTI-CONFERENCE OF ENGINEERS AND COMPUTER SCIENTISTS, VOLS I AND II, 2009, : 755 - +
  • [35] USD to INR Exchange Rate Prediction: A Deep Learning Approach for Forecasting Currency Exchange Rates Using Different Techniques of LSTM
    Vibhute, Mrunal
    Mote, Shreya
    Pimprale, Varsha
    PROCEEDINGS OF NINTH INTERNATIONAL CONGRESS ON INFORMATION AND COMMUNICATION TECHNOLOGY, ICICT 2024, VOL 3, 2024, 1013 : 305 - 316
  • [36] Monthly discharge forecasting using wavelet neural networks with extreme learning machine
    LI Bao Jian
    CHENG Chun Tian
    Science China(Technological Sciences), 2014, 57 (12) : 2441 - 2452
  • [37] Machine Learning and the GR2M Model for Monthly Runoff Forecasting
    Kaewthong, Natapon
    Kanplumjit, Torlap
    Kwanthong, Naras
    Sureeya, Kritsana
    Buathongkhue, Chayanat
    CIVIL ENGINEERING JOURNAL-TEHRAN, 2025, 11 (01): : 393 - 405
  • [38] Monthly discharge forecasting using wavelet neural networks with extreme learning machine
    Li BaoJian
    Cheng ChunTian
    SCIENCE CHINA-TECHNOLOGICAL SCIENCES, 2014, 57 (12) : 2441 - 2452
  • [39] Monthly discharge forecasting using wavelet neural networks with extreme learning machine
    LI Bao Jian
    CHENG Chun Tian
    Science China(Technological Sciences), 2014, (12) : 2441 - 2452
  • [40] Monthly discharge forecasting using wavelet neural networks with extreme learning machine
    BaoJian Li
    ChunTian Cheng
    Science China Technological Sciences, 2014, 57 : 2441 - 2452