# Applying Text Mining to Protest Stories as Voice against Media   Censorship

**Authors:** Tahsin Mayeesha, Zareen Tasneem, Jasmine Jones, Nova Ahmed

arXiv: 1812.11430 · 2019-01-01

## TL;DR

This paper explores how analyzing personal protest stories through text mining techniques can provide valuable insights into activism and protests, especially under media censorship conditions.

## Contribution

It introduces a method to analyze protest stories by extracting location networks and performing emotion mining, offering an alternative data source for activism analysis.

## Key findings

- Location networks reveal protest spread patterns
- Emotion mining uncovers underlying sentiments
- Personal stories serve as a voice during censorship

## Abstract

Data driven activism attempts to collect, analyze and visualize data to foster social change. However, during media censorship it is often impossible to collect such data. Here we demonstrate that data from personal stories can also help us to gain insights about protests and activism which can work as a voice for the activists. We analyze protest story data by extracting location network from the stories and perform emotion mining to get insight about the protest.

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Source: https://tomesphere.com/paper/1812.11430