基于RNN-LSTM方法的多数据源泰国股指预测

P. Boonrawd, Korawat Phonyiam
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引用次数: 0

摘要

股票投资是一种有趣的选择,吸引了投资者的注意。本研究以泰国证券交易所(SET)为研究对象,应用具有长短期记忆的递归神经网络(RNN-LTSM)进行泰国股指预测。本研究使用了多个数据源,从2006年到2020年的15年SET市场数据进行股票预测,分为训练集80%和测试集20%。采用均方误差(MSE)作为评价模型。结果表明,RNN-LTSM方法对本研究使用的5家股票资产公司的模型性能进行了优化。因此,本文提出的模型可用于未来开发相关的预测或推荐系统,以帮助投资者考虑投资风险,支持投资决策。
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Thailand Stock Index Forecasting Based on Multiple Data Sources Using RNN-LSTM Approach
Stock investment is an interesting option that has attracted the attention of investors. This research presents Thailand Stock Index Forecasting, a case study of the Stock Exchange of Thailand (SET) applying Recurrent Neural Networks with Long Short-Term Memory (RNN-LTSM). The research used multiple data sources 15 years of SET Market Data from 2006 to 2020 for stock forecasting divided into Training Set 80% and Test Set 20%. Mean Square Error (MSE) was used for the evaluation model. The results showed that RNN-LTSM Approach optimized the model’s performance based on 5 stock asset companies used in this research. Therefore, the proposed model can be used to develop related forecasting or recommendation systems in the future to help investors consider the risks of investment and support investment decisions.
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