DSS for Oil Price Prediction Using Machine Learning

Guzel Khuziakhmetova, V. Martynov, K. Heinrich
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引用次数: 1

Abstract

The oil price affects the economic situation of many countries in the world, therefore, there is always an increased interest. A number of efforts have been made by researchers towards developing efficient methods for forecasting oil prices. In this paper, three types of models for forecasting oil prices were created: Linear Regression, Support Vector Machine (SVM) and Convolutional Neural Network (CNN). The root mean square error and standard error were chosen to estimate the constructed models by quantitative characteristics. For visual analysis the graphs depicting the actual and forecast values were plotted. According to the interpretation of the results to the evaluation criteria of the models, when using the price of Brent oil as input data, the SVM has the best predictive ability. This makes it a good tool for forecasting dynamically changing data of large volumes. Also a model of the decision support system (DSS) architecture, a forecasting subsystem and a forecasting module are designed to show how the results of the study can be used in the work of commodity market traders. Keywords—oil prices, time series, prediction, neural network, support vector machine, machine learning, energy resources, deep learning
基于机器学习的DSS油价预测
石油价格影响着世界上许多国家的经济形势,因此,人们的兴趣一直在增加。研究人员为开发预测石油价格的有效方法作出了许多努力。本文建立了三种预测油价的模型:线性回归、支持向量机(SVM)和卷积神经网络(CNN)。选取均方根误差和标准误差对所构建的模型进行定量特征估计。为了便于直观分析,绘制了实际值和预测值的图表。从结果对模型评价准则的解释来看,以布伦特原油价格为输入数据时,支持向量机的预测能力最好。这使得它成为预测大量动态变化数据的好工具。此外,本文还设计了决策支持系统(DSS)架构模型、预测子系统和预测模块,以展示如何将研究结果应用于商品市场交易者的工作中。关键词:油价,时间序列,预测,神经网络,支持向量机,机器学习,能源资源,深度学习
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