Tweet Sentiment Analysis for Cryptocurrencies

Emre Sasmaz, F. Tek
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引用次数: 15

Abstract

Many traders believe in and use Twitter tweets to guide their daily cryptocurrency trading. In this project, we investigated the feasibility of automated sentiment analysis for cryptocurrencies. For the study, we targeted one cryptocurrency (NEO) altcoin and collected related data. The data collection and cleaning were essential components of the study. First, the last five years of daily tweets with NEO hashtags were obtained from Twitter. The collected tweets were then filtered to contain or mention only NEO. We manually tagged a subset of the tweets with positive, negative, and neutral sentiment labels. We trained and tested a Random Forest classifier on the labeled data where the test set accuracy reached 77%. In the second phase of the study, we investigated whether the daily sentiment of the tweets was correlated with the NEO price. We found positive correlations between the number of tweets and the daily prices, and between the prices of different crypto coins. We share the data publicly.
加密货币的推特情绪分析
许多交易者相信并使用推特来指导他们的日常加密货币交易。在这个项目中,我们研究了加密货币自动情绪分析的可行性。在这项研究中,我们针对一种加密货币(NEO)山寨币并收集了相关数据。数据收集和清理是研究的基本组成部分。首先,过去五年NEO标签的每日推文都是从Twitter上获得的。收集到的推文然后被过滤,只包含或提到NEO。我们用积极、消极和中立的情绪标签手动标记推文的一个子集。我们在标记数据上训练和测试了一个随机森林分类器,测试集的准确率达到77%。在研究的第二阶段,我们调查了推文的每日情绪是否与NEO价格相关。我们发现推文的数量与每日价格之间,以及不同加密货币的价格之间存在正相关关系。我们公开分享数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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