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Crisis communication: a comparative study of communication patterns across crisis events in social media

Published: 22 April 2021 Publication History
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  • Abstract

    Valuable and timely information about crisis situations such as natural disasters, can be rapidly obtained from user-generated content in social media. This has created an emergent research field that has focused mostly on the problem of filtering and classifying potentially relevant messages during emergency situations. However, we believe important insight can be gained from studying online communications during disasters at a more comprehensive level. In this sense, a higher-level analysis could allow us to understand if there are collective patterns associated to certain characteristics of events. Following this motivation, we present a novel comparative analysis of 41 real-world crisis events. This analysis is based on textual and linguistic features of social media messages shared during these crises. For our comparison we considered hazard categories (i.e., human-induced and natural crises) as well as subcategories (i.e., intentional, accidental and so forth). Among other things, our results show that using only a small set of textual features, we can differentiate among types of events with 75% accuracy. Indicating that there are clear patterns in how people react to different extreme situations, depending on, for example, whether the event was triggered by natural causes or by human action. These findings have implications from a crisis response perspective, as they will allow experts to foresee patterns in emerging situations, even if there is no prior experience with an event of such characteristics.

    References

    [1]
    Firoj Alam, Shafiq Joty, and Muhammad Imran. 2018. Domain adaptation with adversarial training and graph embeddings. arXiv preprint arXiv:1805.05151 (2018).
    [2]
    Frederike Albrecht. 2017. The social and political impact of natural disasters: Investigating attitudes and media coverage in the wake of disasters. Ph.D. Dissertation. Acta Universitatis Upsaliensis.
    [3]
    Mohammad Assar. 1971. Guide to sanitation in natural disasters. (1971).
    [4]
    Andrew Baum, Raymond Fleming, and Laura M Davidson. 1983. Natural disaster and technological catastrophe. Environment and Behavior 15, 3 (1983), 333--354.
    [5]
    Wibecke Brun. 1992. Cognitive components in risk perception: Natural versus manmade risks. Journal of Behavioral Decision Making 5, 2 (1992), 117--132.
    [6]
    Web Archive Dataverse Scholar Portal. 2019. 2016 Fort McMurray Wildfire. https://dataverse.scholarsportal.info/dataset.xhtml?persistentId=hdl:10864/12033. [accessed May 29, 2020].
    [7]
    Michela Ferron and Paolo Massa. 2012. Psychological processes underlying Wikipedia representations of natural and manmade disasters. In Proceedings of the eighth annual international symposium on wikis and open collaboration. 1--10.
    [8]
    Henry W Fischer. 1998. Response to disaster: Fact versus fiction & its perpetuation: The sociology of disaster. University press of America.
    [9]
    David Graf, Werner Retschitzegger, Wieland Schwinger, Birgit Pröll, and Elisabeth Kapsammer. 2018. Cross-domain informativeness classification for disaster situations. In Proceedings of the 10th International Conference on Management of Digital EcoSystems. ACM, 183--190.
    [10]
    Bonnie L Green. 1996. Traumatic stress and disaster: Mental health effects and factors influencing adaptation. (1996).
    [11]
    Shane Greenstein and Feng Zhu. 2012. Is Wikipedia Biased? American Economic Review 102, 3 (2012), 343--48.
    [12]
    Hannah Greving, Aileen Oeberst, Joachim Kimmerle, and Ulrike Cress. 2018. Emotional content in Wikipedia articles on negative man-made and nature-made events. Journal of Language and Social Psychology 37, 3 (2018), 267--287.
    [13]
    Amanda Lee Hughes and Leysia Palen. 2009. Twitter adoption and use in mass convergence and emergency events. International journal of emergency management 6, 3--4 (2009), 248--260.
    [14]
    Muhammad Imran, Carlos Castillo, Ji Lucas, Patrick Meier, and Sarah Vieweg. 2014. Aidr: Artificial intelligence for disaster response. In Proceedings of the companion publication of the 23rd international conference on World wide web companion. International World Wide Web Conferences Steering Committee, 159--162.
    [15]
    Muhammad Imran, Shady Elbassuoni, Carlos Castillo, Fernando Diaz, and Patrick Meier. 2013. Extracting information nuggets from disaster-Related messages in social media. In ISCRAM.
    [16]
    Muhammad Imran, Shady Elbassuoni, Carlos Castillo, Fernando Diaz, and Patrick Meier. 2013. Practical extraction of disaster-relevant information from social media. In Proceedings of the 22nd International Conference on World Wide Web. ACM, 1021--1024.
    [17]
    Muhammad Imran, Prasenjit Mitra, and Carlos Castillo. 2016. Twitter as a lifeline: Human-annotated twitter corpora for NLP of crisis-related messages. arXiv preprint arXiv:1605.05894 (2016).
    [18]
    Krzysztof Kaniasty and Fran H Norris. 2004. Social support in the aftermath of disasters, catastrophes, and acts of terrorism: Altruistic, overwhelmed, uncertain, antagonistic, and patriotic communities. Bioterrorism: Psychological and public health interventions 3 (2004), 200--229.
    [19]
    Prashant Khare, Grégoire Burel, Diana Maynard, and Harith Alani. 2018. Cross-Lingual Classification of Crisis Data. In International Semantic Web Conference. Springer, 617--633.
    [20]
    Anna Kruspe, Jens Kersten, and Friederike Klan. 2020. Detection of informative tweets in crisis events. Natural Hazards and Earth System Sciences Discussions (2020), 1--18.
    [21]
    Hongmin Li, D Caragea, X Li, and Cornelia Caragea. 2018. Comparison of Word Embeddings and Sentence Encodings as Generalized Representations for Crisis Tweet Classification Tasks. en. In: New Zealand (2018), 13.
    [22]
    Jacopo Longhini, Claudio Rossi, Claudio Casetti, and Federico Angaramo. 2017. A language-agnostic approach to exact informative tweets during emergency situations. In 2017 IEEE International Conference on Big Data (Big Data). IEEE, 3739--3475.
    [23]
    John J Macionis, Cecilia Benoit, and Mikael Jansson. 2000. Society: the basics. Prentice Hall Upper Saddle River, NJ.
    [24]
    Xiaodong Ning, Lina Yao, Xianzhi Wang, and Boualem Benatallah. 2017. Calling for response: Automatically distinguishing situation-aware tweets during crises. In International Conference on Advanced Data Mining and Applications. Springer, 195--208.
    [25]
    Fran H Norris, Matthew J Friedman, and Patricia J Watson. 2002. 60,000 disaster victims speak: Part II. Summary and implications of the disaster mental health research. Psychiatry: Interpersonal and biological processes 65, 3 (2002), 240--260.
    [26]
    Alexandra Olteanu, Carlos Castillo, Fernando Diaz, and Sarah Vieweg. 2014. CrisisLex: A Lexicon for Collecting and Filtering Microblogged Communications in Crises. In ICWSM.
    [27]
    Alexandra Olteanu, Sarah Vieweg, and Carlos Castillo. 2015. What to expect when the unexpected happens: Social media communications across crises. In Proceedings of the 18th ACM Conference on Computer Supported Cooperative Work & Social Computing. ACM, 994--1009.
    [28]
    Jason Osborne. 2010. Improving your data transformations: Applying the Box-Cox transformation. Practical Assessment, Research, and Evaluation 15, 1 (2010), 12.
    [29]
    Olutobi Owoputi, Brendan O'Connor, Chris Dyer, Kevin Gimpel, Nathan Schneider, and Noah A Smith. 2013. Improved part-of-speech tagging for online conversational text with word clusters. In Proceedings of the 2013 conference of the North American chapter of the association for computational linguistics: human language technologies. 380--390.
    [30]
    V Pekar, J Binner, H Najafi, and C Hale. 2016. Selecting Classification Features for Detection of Mass Emergency Events on Social Media. In Proceedings of the International Conference on Security and Management (SAM). 192.
    [31]
    Mark Edward Phillips. 2019. Dallas Police Shooting Twitter Dataset. https://digital.library.unt.edu/ark:/67531/metadc991469/. [accessed May 29, 2020, University of North Texas Libraries, UNT Digital Library, https://digital.library.unt.edu].
    [32]
    Joseph P Reser. 2007. The experience of natural disasters: Psychological perspectives and understandings. In International perspectives on natural disasters: Occurrence, mitigation, and consequences. Springer, 369--384.
    [33]
    Hernan Sarmiento, Barbara Poblete, and Jaime Campos. 2018. Domain-Independent Detection of Emergency Situations Based on Social Activity Related to Geolocations. In Proceedings of the 10th ACM Conference on Web Science. ACM, 245--254.
    [34]
    Kate Starbird, Leysia Palen, Amanda L Hughes, and Sarah Vieweg. 2010. Chatter on the red: what hazards threat reveals about the social life of microblogged information. In Proceedings of the 2010 ACM conference on Computer supported cooperative work. 241--250.
    [35]
    Yla R Tausczik and James W Pennebaker. 2010. The psychological meaning of words: LIWC and computerized text analysis methods. Journal of language and social psychology 29, 1 (2010), 24--54.
    [36]
    Sarah Vieweg, Amanda L Hughes, Kate Starbird, and Leysia Palen. 2010. Microblogging during two natural hazards events: what twitter may contribute to situational awareness. In Proceedings of the SIGCHI conference on human factors in computing systems. 1079--1088.
    [37]
    Lars Weisæth, Øistein Knudsen Jr, and Arnfinn Tønnessen. 2002. Technological disasters, crisis management and leadership stress. Journal of Hazardous Materials 93, 1 (2002), 33--45.
    [38]
    Robert B Zajonc. 1980. Feeling and thinking: Preferences need no inferences. American psychologist 35, 2 (1980), 151.

    Cited By

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    • (2023)A Study on Information Disorders on Social Networks during the Chilean Social Outbreak and COVID-19 PandemicApplied Sciences10.3390/app1309534713:9(5347)Online publication date: 25-Apr-2023
    • (2023)Mapping crisis communication in the communication research: what we know and what we don’t knowHumanities and Social Sciences Communications10.1057/s41599-023-02069-z10:1Online publication date: 2-Oct-2023

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    cover image ACM Conferences
    SAC '21: Proceedings of the 36th Annual ACM Symposium on Applied Computing
    March 2021
    2075 pages
    ISBN:9781450381048
    DOI:10.1145/3412841
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    Publication History

    Published: 22 April 2021

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    Author Tags

    1. crisis communications
    2. crisis events
    3. social network analysis

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    • FONDECYT

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    SAC '21
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    SAC '21: The 36th ACM/SIGAPP Symposium on Applied Computing
    March 22 - 26, 2021
    Virtual Event, Republic of Korea

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    Overall Acceptance Rate 1,650 of 6,669 submissions, 25%

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    • (2023)A Study on Information Disorders on Social Networks during the Chilean Social Outbreak and COVID-19 PandemicApplied Sciences10.3390/app1309534713:9(5347)Online publication date: 25-Apr-2023
    • (2023)Mapping crisis communication in the communication research: what we know and what we don’t knowHumanities and Social Sciences Communications10.1057/s41599-023-02069-z10:1Online publication date: 2-Oct-2023

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