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2024 | OriginalPaper | Buchkapitel

Using Machine Learning to Improve Forecasting Efficiency for the Stock Market

verfasst von : Lan Dong Thi Ngoc, Duy-Linh Bui, Sang Van Ha, Huong Tran Thi, Viet Pham Minh, Ha-Nam Nguyen

Erschienen in: Proceedings of the 4th International Conference on Research in Management and Technovation

Verlag: Springer Nature Singapore

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Abstract

This article explores the application of machine learning techniques to improve forecasting efficiency for the stock market. Machine learning models have the potential to capture complex patterns and dependencies in stock market trends, enabling more accurate predictions and informed investment decisions. The article discusses the various machine learning algorithms suitable for stock market forecasting, including regression models, classification models, ensemble methods, and reinforcement learning techniques. Evaluation metrics, backtesting, and validation techniques are emphasized as crucial elements in assessing the performance of machine learning models. Additionally, a case study is presented, illustrating the implementation of machine learning in the stock market and highlighting the results and implications of the study. The article concludes by discussing future directions for further enhancing forecasting efficiency, including incorporating alternative data sources, enhancing model interpretability, and utilizing real-time forecasting capabilities. Overall, the application of machine learning in the stock market has the potential to revolutionize forecasting and contribute to a more informed and prosperous investment landscape.

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Literatur
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Zurück zum Zitat Dagum, E.B., Bianconcini, S.: Seasonal Adjustment Methods and Real-Time Trend-Cycle Estimation, 1st edn. Springer, Switzerland (2016) Dagum, E.B., Bianconcini, S.: Seasonal Adjustment Methods and Real-Time Trend-Cycle Estimation, 1st edn. Springer, Switzerland (2016)
Metadaten
Titel
Using Machine Learning to Improve Forecasting Efficiency for the Stock Market
verfasst von
Lan Dong Thi Ngoc
Duy-Linh Bui
Sang Van Ha
Huong Tran Thi
Viet Pham Minh
Ha-Nam Nguyen
Copyright-Jahr
2024
Verlag
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-8472-5_41

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