股票市场有效预测的LSTM方法

Sanjiv Kumar, Utkarsh Aggarwal, Pratiksha Gautam, Aryan Tuteja, Priya Matta, Sudhanshu Maurya
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引用次数: 0

摘要

股票市场投资对股东来说一直都是困难的,这阻碍了使用标准模型对未来价值做出更准确的预测。尽管许多研究人员和学者已经提出了使股票价格预测更有效的方法。但在仔细研究了这些提案之后,我们发现了一些可以用不同方法解决的漏洞。在这项研究工作中,机器学习和金融研究结合起来构建了一个使用长短期记忆(LSTM)的模型,该模型预测了SENSEX未来的价值。最后,我们对所提出的方法进行了性能评估。因此,本文的研究工作可以为同领域的其他研究人员提供借鉴。我们的研究将鼓励从业者更好地识别未来令人兴奋的领域,同时也帮助初学者理解机器学习范式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LSTM Approach for Efficient Stock Market Prediction
Stock market investing has always been difficult for shareholders and prevents the use of standard models to make more accurate predictions of future values. Although many researchers and academicians have proposed methods to make stock price prediction more efficient. But after going through those proposals, we found a number of loopholes that can be tackled using a different approach. In this research work, machine learning and a study of finance have been combined to construct a model employing long-short term memory (LSTM) that forecasts the value of the SENSEX in the future. Finally, we have evaluated the performance of our proposed method. So this research work can be used by other researchers in the same domain. Our research will encourage practitioners to better identify the exciting sector for future views while also assisting beginners in comprehending the ML paradigm.
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