使用机器学习技术预测优质汽车精神(PMS)和能源商品价格:综述

Sunday Ojogbane Agbo, Yemi-Peters Victoria Ifeoluwa, Adewumi Sunday Eric
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引用次数: 0

摘要

高价汽油和其他能源商品价格的不稳定,由于价格的波动和动态变化而引起,已被发现影响到尼日利亚的生产成本。因此,本文研究了当前关于机器学习技术在预测PMS(汽油)和其他能源商品价格中的应用的文献。通过电子检索近4年(2019-2022年)发表的论文进行审查。本研究共选择了29份关于PMS(汽油)和其他能源商品价格预测的出版物,以确定研究差距和未来的工作。本文概述了已发表的关于使用机器学习技术预测PMS(汽油)和其他能源商品价格的论文,所使用算法的语义分析以及已发表论文中采用的模型分类。结果表明,有研究提出了机器学习模型在预测其他国家PMS(汽油)和其他能源商品价格方面的应用。然而,很少有人提出构建机器学习模型来预测尼日利亚PMS(汽油)和其他能源商品的价格。这就需要开发新的模型,尤其是深度学习混合模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Premium Motor Spirit (PMS) and Energy Commodities Prices Using Machine Learning Techniques: A Review
The instability of Premium Motor Spirit (PMS/Petrol) and other energy commodities prices, occasioned by volatile and dynamic movement of prices has been found to affect the cost of production in Nigeria. As a result, this paper studies current literature on the applications of machine learning techniques in forecasting PMS (Petrol) and other energy commodities prices. The review has been done through an electronic search of the published papers in the last 4 years (2019-2022). A total number of twenty-nine (29) publications on PMS (Petrol) and other energy commodities prices forecasting using machine learning models were selected for the study to identify research gaps and future works. This paper covers a summary of reviewed published papers on forecasting PMS (Petrol) and other energy commodities prices using machine learning techniques, semantic analysis of algorithms used, and the taxonomy of the models adopted in the published papers. The results showed that there are studies that presented the application of machine learning models in forecasting the prices of PMS (Petrol) and other energy commodities in other countries. However, very few of them have proposed the construction of machine learning models for forecasting PMS (Petrol) and other energy commodities prices in Nigeria. This leads to the need to develop new models, especially deep learning hybrid models.
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