Using centrality measures to improve the classification performance of tweets during natural disasters

Cristobal Vásquez

Abstract

Online social networks like Twitter facilitate instant communication during natural disasters. A key problem is to distinguish in real-time the most assertive and contingent tweets related to the current disaster from the whole streaming. To address this problem, machine learning allows to classify tweets according to their relevance or credibility. In this article, it is proposed to use centrality measures to improve the training data sample of active learning classifiers. As a case study, tweets collected during the massive floods in Santiago of Chile at 2016 are considered. This approach improves the consistency and pertinence of the labeling process, as well as the classifiers’ performance.

Más información

Título según SCOPUS: Using centrality measures to improve the classification performance of tweets during natural disasters
Título según SCIELO: Using centrality measures to improve the classification performance of tweets during natural disasters
Título de la Revista: Ingeniare
Volumen: 29
Número: 1
Editorial: Universidad de Tarapaca
Fecha de publicación: 2021
Página de inicio: 73
Página final: 86
Idioma: English
DOI:

10.4067/S0718-33052021000100073

Notas: SCIELO, SCOPUS