基于模式股票预测模型的机器学习技术分析

C. Dadiyala, Asha Ambhaikar
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引用次数: 0

摘要

在股票预测中,目标是以理想的准确性预测未来的股票价值。我们的研究旨在提供一种利用机器学习对历史股票数据进行基于模式的股票预测的技术分析方法。新设计的方法是基于遗传算法进行预测所需的适当修改。我们利用几家公司的历史数据进行了各种实验,结果证实了该系统的准确性和效率,因为它产生了有希望的预测。这个设计的模型执行一个不受任何其他外部因素影响的预测过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Technical Analysis of Pattern Based Stock Prediction Model Using Machine Learning
In Stock Prediction, the aim is to predict future stock values with desirable accuracy. Our research aims to offer a method for technical analysis of pattern based stock prediction using Machine Learning on the historical stock data. The newly designed method is based on GA with the appropriate modifications needed for the prediction. We have performed various experiments using the historical data of a few companies and the results confirmed the accuracy and efficiency of the system as it is generating promising predictions. This designed model executes a prediction process that is not influenced by any other external factors.
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