基于词向量和门控循环单元的股票交易数据情感分析

Oscar ., H. Pardede
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摘要

在商业世界中,预测股票走势对于了解买卖商品的股票走势非常重要。股票是一种高风险、高收益、交易灵活的金融产品,受到众多投资者的青睐。通过对股价走势的准确预测,投资者可以获得丰厚的回报。历史价格常被用来预测股票价格,它只能估计股票价格的周期性趋势。然而,可能会有一个特殊的事件可能会影响价格。所以它不能捕捉突然的意外事件。像推特这样的社交媒体文本会对股市产生巨大影响。通过分析社交媒体信息的情绪,可以发现价格趋势的意外行为。在本研究中,我们建议使用门控循环单元(GRU)来预测与股价相关的推文情绪。我们实现了词向量,特别是word2vec,作为GRU的特征。我们的实验表明,该方法优于其他基于深度学习的情感分析,如BERT(双向编码器表示从变形金刚)和BiLSTM(双向长短期记忆)。
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Sentiment Analysis of Stocktwits Data With Word Vector and Gated Recurrent Unit
Prediction of stock movements is important in the business world for knowing the movement of stock both for buying and selling goods. Stock is a financial product characterized by high risk, high return and flexible trading, which is favored by many investors. Investors can get abundant returns by accurately estimating stock price trend. Historical price is often used to predict the stockprice, it can only estimate the periodical trends of the stockprice. However, there could be a particular event that may affect the price. So it cannot capture sudden unexpected events. Social media texts like tweets can have huge impacts on the stock market. By analysing the sentiments of social media information, unexpected behaviour of the price trend could be detected. In this study, we propose to use Gated Recurrent Unit (GRU) for predicting the sentiment of tweets related to stockprice. We implement word vector, in particular word2vec, as features for GRU. Our experiments show that the proposed method is better than other deep learning based sentiment analysis such as BERT (Bidirectional Encoder Representations from Transformers)  and BiLSTM (Bidirectional Long Short Term Memory).
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