Predicting Bitcoin Prices Using Sentiment Analysis Results

Chunze Li
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Abstract

Sentiment Analysis is a technique to determine the tone of a statement using computer software. It is an appliance of a linguistic and computer science intersection that could make a great impact on the business field. Lately, Sentiment Analysis has been used on social media platforms such as Twitter or Facebook to observe the tone of a statement. Examining the tone of tweets using the computer could be time-efficient and precise. SA studies could also be linked to Bitcoin. In this paper, I am using SA results of tweets on a given day to predict changes in the Bitcoin price and its returns. First, I collected the data, which included 31 data points of average sentiment scores and the corresponding 31 Bitcoin prices on the same day. The average sentiment scores were evaluated by VADER from a scale of -1 to 1 (-1 being the statements with the most negative tone, and 1 with the most positive). Then, I used linear regressions to predict Bitcoin price and returns using sentiment scores on the previous day/days. Predicting returns based on sentiments could allow me to find the relationship between Twitter users and Bitcoin and help me better understand the potential challenges. In the end, the predicted price was positively correlated to the sentiment scores the day before. Interestingly, the predicted return was negatively correlated with the sentiment scores and showed less correlation with a M coefficient of -0.86125.
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使用情绪分析结果预测比特币价格
情绪分析是一种使用计算机软件确定语句语气的技术。它是语言学和计算机科学交叉的一种应用,可以对商业领域产生重大影响。最近,情绪分析被用于Twitter或Facebook等社交媒体平台,以观察声明的语气。用电脑检查推文的语气既省时又精确。SA研究也可能与比特币有关。在本文中,我使用某一天推文的SA结果来预测比特币价格及其回报的变化。首先,我收集了数据,包括31个数据点的平均情绪得分和对应的31个比特币当天的价格。平均情绪得分由维德从-1到1进行评估(-1代表最消极的语气,1代表最积极的语气)。然后,我使用线性回归来预测比特币的价格,并使用前一天的情绪得分来预测回报。基于情绪预测回报可以让我找到Twitter用户和比特币之间的关系,并帮助我更好地理解潜在的挑战。最后,预测价格与前一天的情绪得分呈正相关。有趣的是,预测收益与情绪得分呈负相关,M系数为-0.86125,相关性较低。
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