Crisis Communication Patterns in Social Media during Hurricane Sandy
Arif Mohaimin Sadri, Samiul Hasan, Satish V. Ukkusuri, Manuel Cebrian

TL;DR
This study analyzes social media communication during Hurricane Sandy, revealing evolving user concerns and patterns that can inform targeted crisis communication and real-time response strategies.
Contribution
It introduces a machine learning-based pattern recognition approach to identify and analyze communication patterns and user concerns during a major disaster.
Findings
Identified 250 distinct communication patterns.
Mapped storm-phase specific topics and concerns.
Highlighted keywords for targeted information dissemination.
Abstract
Hurricane Sandy was one of the deadliest and costliest of hurricanes over the past few decades. Many states experienced significant power outage, however many people used social media to communicate while having limited or no access to traditional information sources. In this study, we explored the evolution of various communication patterns using machine learning techniques and determined user concerns that emerged over the course of Hurricane Sandy. The original data included ~52M tweets coming from ~13M users between October 14, 2012 and November 12, 2012. We run topic model on ~763K tweets from top 4,029 most frequent users who tweeted about Sandy at least 100 times. We identified 250 well-defined communication patterns based on perplexity. Conversations of most frequent and relevant users indicate the evolution of numerous storm-phase (warning, response, and recovery) specific…
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