推特情绪对加密货币回报率的影响:基于规则的方法与机器学习方法

Peyman Alipour, Sina Esmaeilpour Charandabi
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引用次数: 0

摘要

为了评估基于最佳实践词典的方法与基于新颖学习的模型在加密货币市场背景下提取文本内容情感的适当性,本研究进一步深入探讨了数字活动与加密货币价格走势之间的关联。本研究使用比特币和以太坊交易数据样本,比较了哈佛 IV-4 模型和 BERT 模型与著名的机器学习分类器的性能。与基于词库的方法相比,本研究探讨了基于学习的情感模型能在多大程度上提高价格走势预测能力,以及将不同特征作为分类器的输入后,预测能力是提高了还是降低了。结果表明,所选的基于学习的模型对两种加密货币的贡献各不相同,在没有交易量作为分类器输入特征的情况下,预测效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impact of Tweet Sentiments on the Return of Cryptocurrencies: Rule-Based vs. Machine Learning Approaches
In an attempt to assess the appropriateness of the best-practice lexicon-based approaches as opposed to novel learning-based models to extract the sentiment of textual content in the context of the cryptocurrency market, the current study provides further insights into the association between digital activity and price movement of cryptocurrencies. Using a sample of Bitcoin and Ethereum trade data, this study compares the performance of Harvard IV-4 and BERT models in conjunction with the well-known machine learning classifiers. It examines to what extent learning-based sentiment models can enhance the price movement prediction, compared to lexicon-based approaches, and whether the prediction is improved or impaired by introducing different features as input to the classifiers. Results indicate that the contribution of the selected learning-based model varies across the two cryptocurrencies, and predictions are better in the absence of trade volume as an input feature to the classifiers.
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