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A systematic review of fundamental and technical analysis of stock market predictions

机译:股市预测基本与技术分析的系统综述

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The stock market is a key pivot in every growing and thriving economy, and every investment in the market is aimed at maximising profit and minimising associated risk. As a result, numerous studies have been conducted on the stock-market prediction using technical or fundamental analysis through various soft-computing techniques and algorithms. This study attempted to undertake a systematic and critical review of about one hundred and twenty-two (122) pertinent research works reported in academic journals over 11 years (2007-2018) in the area of stock market prediction using machine learning. The various techniques identified from these reports were clustered into three categories, namely technical, fundamental, and combined analyses. The grouping was done based on the following criteria: the nature of a dataset and the number of data sources used, the data timeframe, the machine learning algorithms used, machine learning task, used accuracy and error metrics and software packages used for modelling. The results revealed that 66% of documents reviewed were based on technical analysis; whiles 23% and 11% were based on fundamental analysis and combined analyses, respectively. Concerning the number of data source, 89.34% of documents reviewed, used single sources; whiles 8.2% and 2.46% used two and three sources respectively. Support vector machine and artificial neural network were found to be the most used machine learning algorithms for stock market prediction.
机译:股市是每一个不断增长和繁荣的经济中的关键枢轴,而且市场的每一项投资都是最大限度地利用利润和最小化相关风险。因此,通过各种软计算技术和算法使用技术或基本分析,在股票市场预测上进行了许多研究。本研究试图对在使用机器学习的股票市场预测中的学术期刊(2007 - 2018年)中报告的大约二十二(122)次相关研究作品的系统和批评审查。从这些报告中识别的各种技术被聚集成三类,即技术,基本和组合分析。该分组是根据以下标准完成的:数据集的性质和所使用的数据源的数量,数据时间帧,使用的机器学习算法,机器学习任务,使用用于建模的准确性和错误指标和软件包。结果表明,66%的文件审查了基于技术分析; 23%和11%分别基于基本分析和组合分析。关于数据源的数量,89.34%的文件审查,使用单个来源;虽然8.2%和2.46%使用了两和三个来源。发现支持向量机和人工神经网络是股票市场预测最常用的机器学习算法。

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