Transfer Learning and LSTM to Predict Stock Price

R. Chen, Wanjun Yang, Kuei-Chien Chiu
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引用次数: 2

Abstract

Predicting stock prices has always been an attractive issue. Past literature has focused on the impact of historical stock prices and social media sentiment on stock prices, ignoring the impact on the three major corporations that account for most stock transactions. In this paper, we add the three significant corporations as the dataset in the stock trading price, but the corporate trading data announced by the stock exchange has only been available since May 2012, so the data sample is less than ten years. In the target dataset, we compared the model with the ARIMA and LSTM for error, and the migration learning model outperformed the other two models.
迁移学习与LSTM预测股票价格
预测股价一直是一个有吸引力的问题。过去的文献主要关注历史股价和社交媒体情绪对股价的影响,而忽略了对占股票交易量最多的三大公司的影响。在本文中,我们在股票交易价格中加入了三家重要公司作为数据集,但证券交易所公布的公司交易数据仅为2012年5月以后的数据,因此数据样本不足十年。在目标数据集中,我们将模型与ARIMA和LSTM进行误差比较,结果表明迁移学习模型优于其他两种模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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