基于GRU-LSTM深度迁移学习方法的多行业股票预测

Ezra Julang Prasetyo, K. Hartomo
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引用次数: 1

摘要

新冠肺炎大流行后,印度尼西亚的投资者数量激增。在管理一个好的股票投资组合时,投资者也需要正确的策略。一种可以应用的方法是通过考虑公司的工业部门来预测股票走势。本文提出了一种将深度迁移学习应用于多行业股票预测的新框架。该框架中使用的模型是门控递归单元(GRU)和长短期记忆(LSTM)之间的组合算法。作者使用Indeks Harga Saham Gabungan(IHSG)建立了预训练模型,并将其转移到基于行业分类的印度尼西亚股指预测中(IDX-IC),作为多个行业股票运动的衡量指标。结果表明,该框架产生了良好的模型预测,可用于帮助分析预训练模型的评估,以有效地进行不同行业的迁移学习存量预测。使用IHSG指数建立的模型可以最好地预测能源、科技和工业部门的股价。
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Multi-industry stock forecasting using GRU-LSTM deep transfer learning method
After the Covid-19 pandemic, the number of investors in Indonesia has proliferated. In managing a good stock portfolio, investors need the right strategy too. One approach that can be applied is to predict stock movements by considering the company's industrial sector. This paper proposed a new framework for applying deep transfer learning for stock forecasting in multi-industry. The model used in the framework is a combined algorithm between Gated Recurrent Unit (GRU) and Long-Short Term Memory (LSTM). The author built the pre-trained model using Indeks Harga Saham Gabungan (IHSG) and transferred it to predict Indonesia's stock indexes based on industry classification (IDX-IC) as the measurer of stock movement in multiple industries. The outcomes reveal that this framework produces good model predictions and can be used to help analyze the evaluation of the pre-trained model to conduct transfer learning stock prediction in different industries efficiently. The model built using the IHSG indexes can predict stock prices best in the energy, technology, and industrial sectors.
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审稿时长
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