机器学习分类器在汇率趋势预测中的比较

Elissaios Sarmas, Themistoklis Koutsellis, Christopher Ververidis, Thomas Papapolyzos, Stylianos Choumas, Anastasios Bitsikas, H. Doukas
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引用次数: 0

摘要

外汇市场是世界上最大的市场之一。然而,预测外汇货币对的价格是一个非常困难的问题,因为汇率时间序列表现出高度非线性和非平稳的行为,受到一系列难以有效建模的参数的影响。本研究尝试比较五种机器学习和神经网络分类器:逻辑回归模型、支持向量分类器、高斯朴素贝叶斯、随机森林和多层感知器。评估和比较相关度最高的特征,以预测欧元-美元(EUR-USD)货币对的未来趋势。结果表明,模型选择对预测精度的影响不如最重要特征的组合重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Machine Learning Classifiers for Exchange Rate Trend Forecasting
The market of foreign exchange is one of the largest markets worldwide. However, predicting the price of exchange currency pairs is a very difficult problem due to the fact that exchange rate time series demonstrate a highly non-linear and non-stationary behavior, being affected by a series of parameters which are difficult to model efficiently. This study attempts to compare five machine learning and neural network classifiers: Logistic Regression model, Support Vector Classifier, Gaussian Naive Bayes, Random Forest and Multi-layer Perceptron. The most highly correlated features are evaluated and compared for predicting the day ahead trend of the Euro-United States Dollar (EUR-USD) currency pair. Results indicate that model selection is not as significant as the combination of the most important features for the accuracy of the prediction.
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