Mining Tweets to Predict Future Bitcoin Price
- URL: http://arxiv.org/abs/2412.02148v1
- Date: Tue, 03 Dec 2024 04:09:19 GMT
- Title: Mining Tweets to Predict Future Bitcoin Price
- Authors: Ashutosh Hathidara, Gaurav Atavale, Suyash Chaudhary,
- Abstract summary: We have seen an increase in the number of posts on social media platforms about cryptocurrency, especially Bitcoin.
This project focuses on analyzing user tweet data in combination with Bitcoin price data to see the relevance between price fluctuations and the conversation between millions of people on Twitter.
- Score: 0.0
- License:
- Abstract: Bitcoin has increased investment interests in people during the last decade. We have seen an increase in the number of posts on social media platforms about cryptocurrency, especially Bitcoin. This project focuses on analyzing user tweet data in combination with Bitcoin price data to see the relevance between price fluctuations and the conversation between millions of people on Twitter. This study also exploits this relationship between user tweets and bitcoin prices to predict the future bitcoin price. We are utilizing novel techniques and methods to analyze the data and make price predictions.
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