Stock Prediction for ARGAAM Companies Dataset

Noman Islam, Salis Khizar Khan, Abdul Rehman, Usman Aftab, Darakhshan Syed
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引用次数: 1

Abstract

Economic forecasting provides excellent profit opportunities and is a major motivator for most researchers in this field. In the fast-growing business world, the behavior of stock prediction is challenging for most stockholders and commercial investors. It provides benefits to investors to invest more confidently. Machine learning is an emerging technology that provides the capability to learn on its own through real-world intercommunications. Regression is the fundamental technique in machine learning which is useful for real-time applications. This paper experiments with stock price prediction effectively by using three machine learning techniques i.e. linear regression, decision tree, and support vector machine. The techniques were applied to the ARAMCO and Saudi Dairy dataset and the performance is evaluated using various parameters such as R2 value, MAPE, and RMSE. The results substantiated the hypothesis.
ARGAAM公司数据集的股票预测
经济预测提供了极好的盈利机会,是该领域大多数研究人员的主要动力。在快速发展的商业世界中,股票预测行为对大多数股东和商业投资者来说是具有挑战性的。它为投资者提供了更有信心投资的好处。机器学习是一种新兴的技术,它提供了通过现实世界的相互交流来自主学习的能力。回归是机器学习的基本技术,对实时应用非常有用。本文利用线性回归、决策树和支持向量机这三种机器学习技术对股票价格预测进行了有效的实验。将这些技术应用于沙特阿美和沙特乳业的数据集,并使用R2值、MAPE和RMSE等各种参数对性能进行评估。结果证实了这个假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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