用LSTM模型预测谷歌股价

Tianlei Zhu, Yuexin Liao, Zheng Tao
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引用次数: 4

摘要

股票市场对市场经济有着深远的影响,因此,对股票未来走势的预测对投资者来说意义重大。因此,一个高效的预测系统可以在很大程度上解决这一问题。本文以Google Inc.的股价作为预测对象,选取3810个调整后的收盘价,采用长短期记忆(LSTM)方法预测该股票未来的价格走势。我们构建了一个三层LSTM模型,并将整个数据按照8:2的比例划分为一个测试集和一个训练集。最终结果表明,LSTM模型可以很好地预测Google Inc.的股票走势,但不能准确预测具体价格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Google’s Stock Price with LSTM Model
Stock market has a profound impact on the market economy, Hence, the prediction of future movement of stocks is of great significance to investors. Therefore, an efficient prediction system can solve this problem to a great extent. In this paper, we used the stock price of Google Inc. as a prediction object, selected 3810 adjusted closing prices, and used long short-term memory (LSTM) method to predict the future price trend of the stock. We built a three-layer LSTM model and divided the entire data into a test set and a training set according to the ratio of 8 to 2. The final results show that while the LSTM model can predict the stock trend of Google Inc. very well, it cannot predict the specific price accurately.
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