基于深度学习算法的比特币价格情绪分析混合模型

Rizky Afrinanda, Lusiana Efrizoni, Wirta Agustin, R. Rahmiati
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引用次数: 1

摘要

比特币是一种去中心化的数字货币,不受单一机构或政府的控制。比特币使用区块链技术验证交易,保证用户的安全和隐私。比特币的波动价值受到各种意见的影响,因为许多人将这些意见作为买卖比特币的依据。根据舆论了解比特币的市场情况是非常必要的。本研究旨在开发一个用于比特币情绪分析的混合模型。使用的数据集来自Indodax网站聊天室的评论,成功收集了多达2890条数据,然后进行数据预处理,翻译成英文,文本标注并使用混合并行CNN和LSTM使用词嵌入手套100维。实验结果表明,在90:10的数据分割和100次epoch下,最佳模型准确率为88%,精密度为86%,召回率为78%,f1-score为81%,而在indodax聊天中对意见文本评论进行分类的结果是中性评论为64.22%,正面评论为21.14%,负面评论为14.63%。根据研究结果,使用并行混合模型对文本分类提供了较高的准确率值,从这些结果来看,正面评论多于负面评论,因此建议投资者购买比特币。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Model for Sentiment Analysis of Bitcoin Prices using Deep Learning Algorithm
Bitcoin is a decentralized digital currency, which is not controlled by a single authority or government. Bitcoin uses blockchain technology to verify transactions and guarantee user security and privacy. The fluctuating value of bitcoin is influenced by opinions that develop because many people use these opinions as a basis for buying or selling bitcoins. Knowledge to find out the market conditions of bitcoin based on public opinion is very necessary. This study aims to develop a hybrid model for bitcoin sentiment analysis. The dataset used came from comments on the Indodax website chat room, as many as 2890 data were successfully collected, then do data preprocessing, translate to english, text labeling and used hybrid parallel CNN and LSTM using word embedding glove 100 dimensions. Results of the experiments conducted, at 90:10 data splitting and 100 epochs is the best model with 88% accuracy, 86% precision, 78% recall and 81% f1-score, while the classification of opinion text comments on indodax chat results in 64.22% neutral comments, 21.14% positive comments and 14.63% negative comments. Based on research results, use of a parallel hybrid model provides a high accuracy value in classifying text, from these results positive comments are more than negative so that investors are advised to buy bitcoins.  
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