An Exploratory Comparison of Stock Price Prediction: Using Multiple Machine Learning Approaches based on Global Stock Indices

Resource type
Authors/contributors
Title
An Exploratory Comparison of Stock Price Prediction: Using Multiple Machine Learning Approaches based on Global Stock Indices
Abstract
Predicting stock prices is difficult because of their multiple input variables, volatility, and unpredictable nature. To provide a suitable model for forecasting the global stock market, this study conducts an exploratory analysis comparing two models based on Artificial Intelligence: Support Vector Machine (SVM) and Long Short-Term Memory (LSTM) Neural Networks. The work considers a publicly accessible dataset and uses feature engineering to extract time-series features. Stock price predictions are made using the SVM and LSTM algorithms. For this purpose, Accuracy (ACC) and Root Mean Squared Error (RMSE) are considered accuracy and performance measures. According to the results, LSTM with mean accuracy (ACC) = 0.9061 achieved better accuracy than SVM with mean accuracy (ACC) = 0.881. SVM with mean RMSE = 0.729 achieved better performance and the degree of fit to the data than LSTM with mean RMSE = 427.1. According to the results, the study demonstrates the effectiveness and applicability of machine learning methods for estimating the values of the global stock market and providing valuable models for researchers, analysts, and investors.
Publication
Palgrave Studies of Entrepreneurship and Social Challenges in Developing Economies
Date
2024
Language
en
Short Title
An Exploratory Comparison of Stock Price Prediction
Accessed
11/11/25, 4:16 AM
Library Catalog
dspace.usj.edu.mo
Extra
ISBN: 9783031653131 Publisher: Springer Nature Switzerland
Citation
Lin, C. Y., & Lobo Marques, J. A. (2024). An Exploratory Comparison of Stock Price Prediction: Using Multiple Machine Learning Approaches based on Global Stock Indices. Palgrave Studies of Entrepreneurship and Social Challenges in Developing Economies. https://doi.org/10.1007/978-3-031-65314-8_14