Publication:
Automated Assessment of the Aftermath of Typhoons Using Social Media Texts

dc.contributor.advisor Lim, Samsung en_US
dc.contributor.advisor Lin, Xuemin en_US
dc.contributor.author Chen, Zi en_US
dc.date.accessioned 2022-03-23T15:23:38Z
dc.date.available 2022-03-23T15:23:38Z
dc.date.issued 2021 en_US
dc.description.abstract Disasters are one of the major threats to economics and human societies, causing substantial losses of human lives, properties and infrastructures. It has been our persistent endeavors to understand, prevent and reduce such disasters, and the popularization of social media is offering new opportunities to enhance disaster management in a crowd-sourcing approach. However, social media data is also characterized by its undue brevity, intense noise, and informality of language. The existing literature has not completely addressed these disadvantages, otherwise vast manual efforts are devoted to tackling these problems. The major focus of this research is on constructing a holistic framework to exploit social media data in typhoon damage assessment. The scope of this research covers data collection, relevance classification, location extraction and damage assessment while assorted approaches are utilized to overcome the disadvantages of social media data. Moreover, a semi-supervised or unsupervised approach is prioritized in forming the framework to minimize manual intervention. In data collection, query expansion strategy is adopted to optimize the search recall of typhoon-relevant information retrieval. Multiple filtering strategies are developed to screen the keywords and maintain the relevance to search topics in the keyword updates. A classifier based on a convolutional neural network is presented for relevance classification, with hashtags and word clusters as extra input channels to augment the information. In location extraction, a model is constructed by integrating Bidirectional Long Short-Time Memory and Conditional Random Fields. Feature noise correction layers and label smoothing are leveraged to handle the noisy training data. Finally, a multi-instance multi-label classifier identifies the damage relations in four categories, and the damage categories of a message are integrated with the damage descriptions score to obtain damage severity score for the message. A case study is conducted to verify the effectiveness of the framework. The outcomes indicate that the approaches and models developed in this study significantly improve in the classification of social media texts especially under the framework of semi-supervised or unsupervised learning. Moreover, the results of damage assessment from social media data are remarkably consistent with the official statistics, which demonstrates the practicality of the proposed damage scoring scheme. en_US
dc.identifier.uri http://hdl.handle.net/1959.4/70952
dc.language English
dc.language.iso EN en_US
dc.publisher UNSW, Sydney en_US
dc.rights CC BY-NC-ND 3.0 en_US
dc.rights.uri https://creativecommons.org/licenses/by-nc-nd/3.0/au/ en_US
dc.subject.other Automated en_US
dc.subject.other Typhoons en_US
dc.subject.other Social Media en_US
dc.subject.other Disasters en_US
dc.title Automated Assessment of the Aftermath of Typhoons Using Social Media Texts en_US
dc.type Thesis en_US
dcterms.accessRights open access
dcterms.rightsHolder Chen, Zi
dspace.entity.type Publication en_US
unsw.accessRights.uri https://purl.org/coar/access_right/c_abf2
unsw.identifier.doi https://doi.org/10.26190/unsworks/22605
unsw.relation.faculty Engineering
unsw.relation.originalPublicationAffiliation Chen, Zi, School of Civil and Environmental Engineering, Engineering, UNSW en_US
unsw.relation.originalPublicationAffiliation Lim, Samsung, School of Civil and Environmental Engineering, Engineering, UNSW en_US
unsw.relation.originalPublicationAffiliation Lin, Xuemin, School of Computer Science and Engineering, Engineering, UNSW en_US
unsw.relation.school School of Civil and Environmental Engineering *
unsw.thesis.degreetype PhD Doctorate en_US
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