机器学习在股票市场预测中的应用

IF 0.3 4区 材料科学 Q4 MATERIALS SCIENCE, CERAMICS Glass Technology-European Journal of Glass Science and Technology Part a Pub Date : 2020-12-31 DOI:10.47672/EJT.634
Memoona Shaheen, M. Arshad
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引用次数: 0

摘要

目的:本研究的目的是在回顾当前文献的基础上,研究和确定未来机器学习技术的未来方向。方法:采用系统回顾的方法,回顾了近二十年来同行评议期刊文章的当前趋势。本研究分为四类:神经网络的使用、支持向量机的使用、遗传算法的使用以及混合技术的组合。对每一类的研究都进行了评估。发现:首先,机器学习方法与其相关的预测问题之间存在很强的联系。从这篇综述中我们可以得出的第二个结论是,过去的研究需要提高其概括性结果。本分析中回顾的大多数研究仅通过使用一个市场或仅在一个时间段内使用机器学习系统,而没有考虑系统是否可适应其他情况和条件。已经确定了限制、未来趋势以及政策影响。
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Use of Machine Learning in Stock Market Prediction
Objective: The objective of this study was to examine and determine future directions in regard to future machine learning techniques based on the review of the current literature. Methodology: A systematic review has been used to review the current trends from the peer-reviewed journal articles in the past twenty years. For this study, four categories have been categorized, the use of neural networks, support vector machines, the use of a genetic algorithm, and the combination of hybrid techniques. Studies in each of these categorize have been evaluated. Finding: Firstly, there is a strong link between machine learning methods and the prediction problems they are associated with. The second conclusion that we can conclude from this review is that past studies need to improve its generalizability results. Most of the studies that have been reviewed in this analysis has only used the machine learning systems through the use of one market or during only a one time period without taking into consideration whether the system would be adaptable in other situations and conditions. Limitations, future trends, as well as policy implications have been defined.
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来源期刊
CiteScore
0.30
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: The Journal of the Society of Glass Technology was published between 1917 and 1959. There were four or six issues per year depending on economic circumstances of the Society and the country. Each issue contains Proceedings, Transactions, Abstracts, News and Reviews, and Advertisements, all thesesections were numbered separately. The bound volumes collected these pages into separate sections, dropping the adverts. There is a list of Council members and Officers of the Society and earlier volumes also had lists of personal and company members. JSGT was divided into Part A Glass Technology and Part B Physics and Chemistry of Glasses in 1960.
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