股市预测、新冠肺炎疫情和神经网络:Levenberg-Marquardt算法的应用

Q2 Business, Management and Accounting Business Perspectives and Research Pub Date : 2023-05-16 DOI:10.1177/22785337221149817
Himanshu Goel, N. Singh
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引用次数: 0

摘要

股票市场预测总是引起广大投资者、从业者和研究人员的兴趣。由于存在固有的噪声和波动环境,股票预测是一个复杂的过程。股票市场的走势受到多种因素的影响。对人工神经网络模型的研究始于1969年,“当时Minsky和Papert发现了人工神经网络技术中的两个关键缺陷。第一个是机器解决复杂问题的能力,第二个是计算机无法有效运行大型人工神经网络模型”。该研究旨在使用宏观经济因素作为两个子时期的输入变量来预测Nifty 50,即新冠疫情前(2018年2月至2020年2月)和新冠疫情期间(2020年3月至2021年12月)。使用LM算法训练的模型用于预测NSE的旗舰指数Nifty 50。研究结果表明,LM算法在新冠疫情前的情况下预测Nifty 50的准确率达到95.18%。而在新冠疫情期间,所提出的人工神经网络模型的准确率为94.21%。实证结果对金融中介机构、投资中介机构、散户投资者等各类投资者都有重要的启示。
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Stock Market Prediction, COVID Pandemic, and Neural Networks: An Levenberg Marquardt Algorithm Application
Stock market forecasting has always piqued the interest of a wide range of investors, practitioners, and researchers. Stock prediction is a complex process due to the presence of an inherent noisy and volatile environment. The stock market’s movement is influenced by a variety of factors. The study of ANN models began in 1969, “when Minsky and Papert discovered two critical flaws in the Artificial Neural Network technique. The first was the machine’s ability to solve complex problems, and the second was the computers’ inability to run large ANN models efficiently”. The study aims to forecast the Nifty 50 using macroeconomic factors as input variables in the two sub-periods, that is, pre-COVID (February 2018–February 2020) and during COVID (March 2020–December 2021). A model trained using the LM algorithm was used for predicting the NSE’s flagship index Nifty 50. The findings reveal that the LM algorithm achieved 95.18% accuracy in predicting the Nifty 50 in the pre-COVID scenario. Whereas during COVID period, the proposed ANN model achieved 94.21% accuracy. The empirical results have important implications for every class of investors, such as FIIs, DIIs, retail investors, and so on.
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来源期刊
Business Perspectives and Research
Business Perspectives and Research Business, Management and Accounting-Business and International Management
CiteScore
5.00
自引率
0.00%
发文量
41
期刊介绍: Business Perspectives and Research (BPR) aims to publish conceptual, empirical and applied research. The empirical research published in BPR focuses on testing, extending and building management theory. The goal is to expand and enhance the understanding of business and management through empirical investigation and theoretical analysis. BPR is also a platform for insightful and theoretically strong conceptual and review papers which would contribute to the body of knowledge. BPR seeks to advance the understanding of for-profit and not-for-profit organizations through empirical and conceptual work. It also publishes critical review of newly released books under Book Review section. The aim is to popularize and encourage discussion on ideas expressed in newly released books connected to management and allied disciplines. BPR also periodically publishes management cases grounded in theory, and communications in the form of research notes or comments from researchers and practitioners on published papers for critiquing and/or extending thinking on the area under consideration. The overarching aim of Business Perspectives and Research is to encourage original/innovative thinking through a scientific approach.
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