Forecasting ASEAN-5 Stock Index Price Movement Using Machine Learning Techniques

Muneer Shaik, Abhishek Sahjwani, Kesava Sai Krishna Kondepudi
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Abstract

This research investigates the effectiveness of various machine learning models, including Random Forest, Neural Networks, Adaboost, Discriminant Analysis, Logit Model, Support Vectors, and Kernel Factory. The study aims to forecast fluctuations in the ASEAN-5 stock index prices within an eleven-year period. The study provides useful information about how well machine learning techniques can predict changes in the stock market, with potential implications for both academic researchers and market participants. The findings imply that Adaboost consistently outperforms all others in predicting price changes accurately. This shows that machine learning algorithms are capable of accurately forecasting the movement of the ASEAN-5 stock index values. This study contributes to the growing body of research on the use of machine learning techniques in finance and provides investors with information to make informed decisions about investments in the ASEAN-5 region, ultimately leading to increased returns and improved portfolio performance.
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利用机器学习技术预测东盟五国股票指数价格走势
本研究调查了各种机器学习模型的有效性,包括随机森林、神经网络、Adaboost、判别分析、Logit 模型、支持向量和核工厂。该研究旨在预测东盟五国股票指数价格在十一年内的波动。该研究提供了有关机器学习技术如何预测股市变化的有用信息,对学术研究人员和市场参与者都有潜在的影响。研究结果表明,Adaboost 在准确预测价格变化方面始终优于其他所有算法。这表明,机器学习算法能够准确预测东盟五国股票指数的变动。这项研究有助于推动机器学习技术在金融领域的应用研究,并为投资者在东盟五国地区投资做出明智决策提供信息,最终提高回报率,改善投资组合表现。
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