The role of artificial intelligence in the decision-making process: a study on the financial analysis and movement forecasting of the world’s largest stock exchanges

IF 4.1 3区 管理学 Q2 BUSINESS
Ewerton Alex Avelar, Ricardo Vinícius Dias Jordão
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引用次数: 0

Abstract

Purpose

This paper aims to analyze the role and performance of different artificial intelligence (AI) algorithms in forecasting future movements in the main indices of the world’s largest stock exchanges.

Design/methodology/approach

Drawing on finance-based theory, an empirical and experimental study was carried out using four AI-based models. The investigation comprised training, testing and analysis of model performance using accuracy metrics and F1-Score on data from 34 indices, using 9 technical indicators, descriptive statistics, Shapiro–Wilk, Student’s t and Mann–Whitney and Spearman correlation coefficient tests.

Findings

All AI-based models performed better than the markets' return expectations, thereby supporting financial, strategic and organizational decisions. The number of days used to calculate the technical indicators enabled the development of models with better performance. Those based on the random forest algorithm present better results than other AI algorithms, regardless of the performance metric adopted.

Research limitations/implications

The study expands knowledge on the topic and provides robust evidence on the role of AI in financial analysis and decision-making, as well as in predicting the movements of the largest stock exchanges in the world. This brings theoretical, strategic and managerial contributions, enabling the discussion of efficient market hypothesis (EMH) in a complex economic reality – in which the use of automation and application of AI has been expanded, opening new avenues of future investigation and the extensive use of technical analysis as support for decisions and machine learning.

Practical implications

The AI algorithms' flexibility to determine their parameters and the window for measuring and estimating technical indicators provide contextually adjusted models that can entail the best possible performance. This expands the informational and decision-making capacity of investors, managers, controllers, market analysts and other economic agents while emphasizing the role of AI algorithms in improving resource allocation in the financial and capital markets.

Originality/value

The originality and value of the research come from the methodology and systematic testing of the EMH through the main indices of the world’s largest stock exchanges – something still unprecedented despite being widely expected by scholars and the market.

人工智能在决策过程中的作用:对全球最大证券交易所的财务分析和走势预测的研究
目的 本文旨在分析不同人工智能(AI)算法在预测全球最大证券交易所主要指数未来走势方面的作用和性能。研究包括对 34 个指数的数据进行训练、测试和模型性能分析,使用准确度指标和 F1 分数,并使用 9 个技术指标、描述性统计、Shapiro-Wilk、Student's t 和 Mann-Whitney 及 Spearman 相关系数测试。用于计算技术指标的天数有助于开发出性能更佳的模型。无论采用哪种性能指标,基于随机森林算法的模型都比其他人工智能算法取得了更好的结果。研究局限/影响这项研究拓展了有关该主题的知识,为人工智能在金融分析和决策以及预测全球最大证券交易所走势方面的作用提供了有力证据。这带来了理论、战略和管理方面的贡献,使人们能够在复杂的经济现实中讨论有效市场假说(EMH)--其中自动化的使用和人工智能的应用得到了扩展,为未来的调查和广泛使用技术分析作为决策支持和机器学习开辟了新的途径。这扩大了投资者、管理者、控制者、市场分析师和其他经济行为主体的信息和决策能力,同时强调了人工智能算法在改善金融和资本市场资源配置方面的作用。原创性/价值该研究的原创性和价值来自于通过世界上最大的证券交易所的主要指数对 EMH 进行的方法论和系统测试--尽管这是学者和市场的普遍预期,但仍然是前所未有的。
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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来源期刊
CiteScore
8.20
自引率
8.70%
发文量
126
期刊介绍: ■In-depth studies of major issues ■Operations management ■Financial management ■Motivation ■Entrepreneurship ■Problem solving and proactivity ■Serious management argument ■Strategy and policy issues ■Tactics for turning around company crises Management Decision, considered by many to be the best publication in its field, consistently offers thoughtful and provocative insights into current management practice. As such, its high calibre contributions from leading management philosophers and practitioners make it an invaluable resource in the aggressive and demanding trading climate of the Twenty-First Century.
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