Title
Twitter Reveals: Using Twitter Analytics to Predict Public Protests.
Abstract
The right to protest is perceived as one of the primary civil rights. Citizens participate in mass demonstrations to express themselves and exercise their democratic rights. However, because of the large number of participants, protests may lead to violence and destruction, and hence can be costly. Thus, it is important to predict such demonstrations in advance to safeguard against such damages. Recent research has shown that about 75 percent of protests that are regarded as legal, are planned in advance. Twitter, the prominent micro-blogging website, has been used as a tool by protestors for planning, organizing, and announcing many of the recent protests worldwide such as those that led to the Arab Spring, Britain riots, and those against Mr. Trump after the presidential election in the U.S. In this paper, we aim to predict protests by means of machine learning algorithms. In particular, we consider the case of protests against the then-president-elect Mr. Trump after the results of the presidential election were announced in November 2016. We first identify the hashtags calling for demonstration from Trending Topics on Twitter, and download the corresponding tweets. We then apply four machine learning algorithms to make predictions. Our findings indicate that Twitter can be used as a powerful tool for predicting future protests with an average prediction accuracy of over 75 percent (up to 100 percent). We further validate our model by predicting the protests held in the U.S. airports after President Trumpu0027s executive order banning citizens of seven Muslim countries from entering the U.S. An important contribution of our study is the inclusion of event specific features for prediction purposes which helps to achieve high levels of accuracy.
Year
Venue
Field
2018
arXiv: Social and Information Networks
Damages,Presidential election,Computer science,Public relations,Download,Artificial intelligence,Democracy,Analytics,Machine learning
DocType
Volume
Citations 
Journal
abs/1805.00358
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Mohsen Bahrami101.35
Yasin Findik200.34
Burçin Bozkaya3244.71
Selim Balcisoy426437.15