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An Intelligent Approach for Predicting Stock Market Movements in Emerging Markets Using Optimized Technical Indicators and Neural Networks

Author

Listed:
  • Sagaceta-Mejía Alma Rocío

    (Departamento de Física y Matemáticas, Universidad Iberoamericana, Ciudad de México, México)

  • Sánchez-Gutiérrez Máximo Eduardo

    (Colegio de Ciencia y Tecnología, Universidad Autónoma de la Ciudad de México, Ciudad de México, México)

  • Fresán-Figueroa Julián Alberto

    (Departamento de Matemáticas Aplicadas y Sistemas, Universidad Autónoma Metropolitana Unidad Cuajimalpa, Ciudad de México, México)

Abstract

Integrating big data analytics and machine learning algorithms has become increasingly important in the fast-changing landscape of stock market investment. The numerical findings showcase the tangible impact of our methodology on the accuracy and efficiency of stock market trend predictions. Identifying and selecting the most salient features (technical indicators) is critical in predicting the trend direction of exchange-traded funds (ETFs) in emerging markets, leveraging financial and economic indicators. Our methodology encompasses an array of statistical techniques strategically employed to identify critical technical indicators with significant implications for time series problems. We improve the efficacy of our model by performing systematic evaluations of statistical and machine learning methods across multiple sets of features or technical indicators, resulting in a more accurate trend prediction mechanism. Notably, our approach not only achieves a substantial reduction in the computational cost of the proposed neural network model by selecting only 5% of the total technical indicators for predicting ETF trends but also enhances the accuracy rate by approximately 2%.

Suggested Citation

  • Sagaceta-Mejía Alma Rocío & Sánchez-Gutiérrez Máximo Eduardo & Fresán-Figueroa Julián Alberto, 2024. "An Intelligent Approach for Predicting Stock Market Movements in Emerging Markets Using Optimized Technical Indicators and Neural Networks," Economics - The Open-Access, Open-Assessment Journal, De Gruyter, vol. 18(1), pages 1-14.
  • Handle: RePEc:bpj:econoa:v:18:y:2024:i:1:p:14:n:1019
    DOI: 10.1515/econ-2022-0073
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    References listed on IDEAS

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    1. Laurent Deville, 2008. "Exchange Traded Funds: History, Trading, and Research," Springer Optimization and Its Applications, in: Constantin Zopounidis & Michael Doumpos & Panos M. Pardalos (ed.), Handbook of Financial Engineering, pages 67-98, Springer.
    2. José Luis Miralles‐Quirós & María Mar Miralles‐Quirós & José Manuel Nogueira, 2019. "Diversification benefits of using exchange‐traded funds in compliance to the sustainable development goals," Business Strategy and the Environment, Wiley Blackwell, vol. 28(1), pages 244-255, January.
    3. repec:dau:papers:123456789/903 is not listed on IDEAS
    4. Jun Zhang & Lan Li & Wei Chen, 2021. "Predicting Stock Price Using Two-Stage Machine Learning Techniques," Computational Economics, Springer;Society for Computational Economics, vol. 57(4), pages 1237-1261, April.
    5. Laurens Haan & Cécile Mercadier & Chen Zhou, 2016. "Adapting extreme value statistics to financial time series: dealing with bias and serial dependence," Finance and Stochastics, Springer, vol. 20(2), pages 321-354, April.
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