Topic modeling and sentiment analysis about Mandalika on social media using the latent Dirichlet allocation method

نویسندگان

چکیده

The rapid and widespread dissemination of information currently affects the tourism sector. One tourist area that is quite widely discussed Mandalika Circuit. Twitter one platform provides comments related to amount Circuit not being utilized properly by managers (government or private). It causes many topics are trending, public sentiment regarding unknown government private Ignorance can result in delays decision making which harm manager. To overcome this problem, research on analysis topic modeling was carried out. method used SVM for using LDA. Based results analysis, 1500 tweets were obtained before doing pre-processing process, thus getting a dataset 500 divided into 398 positive 102 negative tweets. So it be concluded more users give than responses test show algorithm classify toward well, as indicated measurement performance algorithm, namely 87% accuracy, 77% precision, 84.81% recall, 98.52% specificity. These also F1 Score compares average precision weighted at 80.72%.

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ژورنال

عنوان ژورنال: Matrix

سال: 2022

ISSN: ['2088-284X', '2580-5630']

DOI: https://doi.org/10.31940/matrix.v12i3.109-116