Quantifying societal emotional resilience to natural disasters from geo-located social media content

Author:

Bathina KrishnaORCID,ten Thij MarijnORCID,Bollen Johan

Abstract

Natural disasters can have devastating and long-lasting effects on a community’s emotional well-being. These effects may be distributed unequally, affecting some communities more profoundly and possibly over longer time periods than others. Here, we analyze the effects of four major US hurricanes, namely, Irma, Harvey, Florence, and Dorian on the emotional well-being of the affected communities and regions. We show that a community’s emotional response to a hurricane event can be measured from the content of social media that its population posted before, during, and after the hurricane. For each hurricane making landfall in the US, we observe a significant decrease in sentiment in the affected areas before and during the hurricane followed by a rapid return to pre-hurricane baseline, often within 1-2 weeks. However, some communities exhibit markedly different rates of decline and return to previous equilibrium levels. This points towards the possibility of measuring the emotional resilience of communities from the dynamics of their online emotional response.

Funder

national science foundation

economic development administration

wageningen university

vice provost of research at indiana university

the center for mental health at the university of amsterdam

institute for scientific interchange

Publisher

Public Library of Science (PLoS)

Subject

Multidisciplinary

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