Title

Crisis Communication Patterns In Social Media During Hurricane Sandy

Abstract

Hurricane Sandy was one of the deadliest and costliest of hurricanes of 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. Using machine learning techniques, this study explored the evolution of various communication patterns 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. A topic model was run on ;763K tweets from the top 4,029 most frequent users who tweeted about Sandy at least 100 times. Some 250 well-defined communication patterns based on perplexity were identified. Conversations of the most frequent and relevant users indicate the evolution of numerous storm-phase (warning, response, and recovery) specific topics. People were also concerned about storm location and time, media coverage, and activities of political leaders and celebrities. Also presented is each relevant keyword that contributed to one particular pattern of user concerns. Such keywords would be particularly meaningful in targeted informationspreading and effective crisis communication in similar major disasters. Each of these words can also be helpful for efficient hash-tagging to reach the target audience as needed via social media. The pattern recognition approach of this study can be used in identifying real-time user needs in future crises.

Publication Date

5-1-2018

Publication Title

Transportation Research Record

Volume

2672

Issue

1

Number of Pages

125-137

Document Type

Article

Personal Identifier

scopus

DOI Link

https://doi.org/10.1177/0361198118773896

Socpus ID

85047956777 (Scopus)

Source API URL

https://api.elsevier.com/content/abstract/scopus_id/85047956777

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