A Novel Linear-Model-Based Methodology for Predicting the Directional Movement of the Euro-Dollar Exchange Rate

被引:1
|
作者
Argotty-Erazo, Mauricio [1 ,2 ]
Blazquez-Zaballos, Antonio [1 ]
Argoty-Eraso, Carlos A. [3 ]
Lorente-Leyva, Leandro L. [2 ,4 ]
Sanchez-Pozo, Nadia N. [5 ]
Peluffo-Ordonez, Diego H. [2 ,6 ]
机构
[1] Univ Salamanca, Dept Stat, Campus Miguel Unamuno, Salamanca 37007, Spain
[2] Smart Data Anal Syst Grp SDAS Res Grp, Ben Guerir 43150, Morocco
[3] Univ Narino, Fac Ciencias Econ & Adm, Torobajo 52001, San Juan De Pas, Colombia
[4] Univ UTE, Fac Derecho Ciencias Adm & Sociales, Quito 170147, Ecuador
[5] Univ Politecn Estatal Carchi, Ctr Posgrad, Tulcan 040101, Ecuador
[6] Mohammed VI Polytech Univ, Coll Comp, Hay Moulay Rachid 43150, Ben Guerir, Morocco
关键词
Linear discriminant analysis (LDA); foreign exchange market (FOREX); machine learning (ML); supervised learning (SL); time series forecasting (TSF); trading systems; DISCRIMINANT-ANALYSIS; ARTIFICIAL-INTELLIGENCE; BLACK-BOX; MARKET; GARCH; CLASSIFICATION; VOLATILITY; NETWORKS; MACHINE; FINANCE;
D O I
10.1109/ACCESS.2023.3285082
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Predicting the price and trends of financial instruments is a major challenge in the financial industry, impacting investment decision-making efficiency for various stakeholders. Although numerous and effective artificial intelligence techniques have been applied to time series analysis, the prediction of exchange rate movements in the Forex market still necessitates parsimonious, interpretable, and accurate solutions. This paper presents a novel methodology for predicting the short-term directional movement of the euro-dollar exchange rate using market data, specifically by measuring price action. The proposed methodology prioritizes using market inflection points and the multidimensional nature of the differences between uptrends and downtrends to construct a linear discriminant function (LDA). The core of our methodology is our novel Linear Classifier Configurator (LCC) which includes stages for data preparation, feature selection, and detection of underlying structures. We validate the results and interpretations using the statistical power of parametric tests. The experiments use market data of the euro-dollar exchange rate in 15-minute and 1-week time frames. Additionally, we incorporate a collection of intraday winning trades provided by an algorithmic trading model applied between January 1999 and April 2023. The proposed LCC methodology achieves an out-of-sample classification accuracy of 98.77%, outperforming other methodologies based on sophisticated approaches such as Long Short-Term Memory (LSTM), Deep reinforcement learning (DRL), Wavelet analysis (WA), Sentiment analysis of textual content, Support Vector Machines (SVM), and Genetic Algorithms (GA). Furthermore, our methodology improves financial performance and reduces risk exposure in trading strategies, as well as it is useful in selecting variables and transferable to other financial assets.
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收藏
页码:67249 / 67284
页数:36
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