The ability to track and monitor relevant and important news in real-time is of crucial interest in multiple industrial sectors. In this work, we focus on cryptocurrency news, which recently became of emerging interest to the general and financial audience. In order to track popular news in real-time, we (i) match news from the web with tweets from social media, (ii) track their intraday tweet activity and (iii) explore different machine learning models for predicting the number of article mentions on Twitter after its publication. We compare several machine learning models, such as linear extrapolation, linear and random forest autoregressive models, and a sequence-to-sequence neural network.
Sensing Social Media Signals for Cryptocurrency News
J. Beck,Roberta Huang,David Lindner,Tian Guo,C. Zhang,D. Helbing,Nino Antulov-Fantulin
Published 2019 in The Web Conference
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- Publication year
2019
- Venue
The Web Conference
- Publication date
2019-03-27
- Fields of study
Mathematics, Business, Computer Science
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Semantic Scholar
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