利用情绪分析预测油价走势方向

Róbert Lakatos, G. Bogacsovics, A. Hajdu
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引用次数: 1

摘要

在本文中,我们提出了一个基于机器学习和一般统计的自然文本处理模型,用于预测交易所交易产品的价格。在我们的模型的帮助下,我们正在预测最重要的能源之一的趋势,每天从推特上的油价。我们的模型的主干是在递归神经网络框架中基于变压器的技术,并具有相应的超参数优化。我们的解决方案的本质是使用可以从推特新闻中提取的情感特征和词汇。我们发现一些新闻来源与油价变化有更好的相关性,我们使用观察来改进训练语料库。此外,我们还通过去除文本信息中不重要的单词来进行噪声滤波。通过这种方式,我们生成了一个数据源,从中情绪值与油价的真实方向显示出84.08%的高精度相关性。
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Predicting the direction of the oil price trend using sentiment analysis
In this paper, we present a natural text processing model for predicting the price of exchange-traded products based on machine learning and general statistics. With the help of our model, we are forecasting the trend of one of the most important energy, the oil prices daily basis from tweets. The backbone of our model consists of transformer-based techniques in a recurrent neural network framework with corresponding hyperparameter optimization. The essence of our solution is to use the sentiment characteristics and vocabulary that can be extracted from the tweeter news. We have found that some of the news sources have better correlated to the oil price change which observation was used to refine the training corpus. Furthermore, we have applied noise filtering by removing the insignificant words from the textual information. In this way, we have generated a data source from which the sentiment values showed a high-precision correlation of 84.08% with the true direction of the oil price.
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