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Clustering of Public Opinion on Natural Disasters in Indonesia Using DBSCAN and K-Medoids Algorithms

Mustakim Mustakim, Muhammad Zakiy Fauzi, Mustafa, A S Abdullah, Rohayati Rohayati

2021Journal of Physics Conference Series38 citationsDOIOpen Access PDF

Abstract

Abstract Natural disasters are disasters caused by events or series of events caused by nature such as earthquakes, tsunamis, volcanic eruptions, floods, tornadoes, and landslides. Some of these natural disasters have taken a lot of public attention, from empathy, sadness and criticism that form an opinion on social media. One of the most popular social media used by the public is Twitter. Opinions written by Twitter users are called tweets. A collection of tweets can be processed to obtain information by using data mining techniques namely Text Mining. In this study, the Density-Based Spatial Clustering of Application with Noise (DBSCAN) algorithm and K-Medoids were used. The result of this study shows that DBSCAN is the best algorithm because it has the Silhouette Index (SI) validity of 0.9140 and the average execution time in RapidMiner Studio is 83.40 seconds. Meanwhile, the K-Medoids algorithm has a Silhouette Index (SI) validity of 0.2259 and an average execution time in RapidMiner Studio 849.93 seconds. The frequency of the word “earthquake” dominates for the positive category, the word “disaster” dominates the negative category, and the word “flood and earthquake” dominates the negative category.

Topics & Concepts

DBSCANCluster analysisNatural disasterComputer scienceSilhouetteMedoidAlgorithmSentiment analysisSocial mediaArtificial intelligenceData miningNatural language processingGeographyFuzzy clusteringWorld Wide WebCanopy clustering algorithmMeteorologyMultimedia Learning SystemsInformation Retrieval and Data MiningIslamic Finance and Communication
Clustering of Public Opinion on Natural Disasters in Indonesia Using DBSCAN and K-Medoids Algorithms | Litcius