Pachinko Prediction: A Bayesian method for event prediction from social media data

09/22/2018
by   Jonathan Tuke, et al.
0

The combination of large open data sources with machine learning approaches presents a potentially powerful way to predict events such as protest or social unrest. However, accounting for uncertainty in such models, particularly when using diverse, unstructured datasets such as social media, is essential to guarantee the appropriate use of such methods. Here we develop a Bayesian method for predicting social unrest events in Australia using social media data. This method uses machine learning methods to classify individual postings to social media as being relevant, and an empirical Bayesian approach to calculate posterior event probabilities. We use the method to predict events in Australian cities over a period in 2017/18.

READ FULL TEXT
research
06/04/2021

A General Method for Event Detection on Social Media

Event detection on social media has attracted a number of researches, gi...
research
07/19/2019

I Stand With You: Using Emojis to Study Solidarity in Crisis Events

We study how emojis are used to express solidarity in social media in th...
research
10/07/2022

The Ethical Risks of Analyzing Crisis Events on Social Media with Machine Learning

Social media platforms provide a continuous stream of real-time news reg...
research
12/05/2020

Urban Crowdsensing using Social Media: An Empirical Study on Transformer and Recurrent Neural Networks

An important aspect of urban planning is understanding crowd levels at v...
research
08/21/2017

A Tutorial on Hawkes Processes for Events in Social Media

This chapter provides an accessible introduction for point processes, an...
research
10/06/2017

Using Sparse Digital Traces to Fill in Individual Level Mobility Timelines

Predicting individual-level mobility patterns is an imperative part of u...
research
03/05/2020

Hadath: From Social Media Mapping to Multi-Resolution Event-Enriched Maps

Publicly available data is increasing rapidly, and will continue to grow...

Please sign up or login with your details

Forgot password? Click here to reset