Klasifikasi Sentimen dan Pemodelan Topik MBKM Menggunakan Ensemble Learning dan Latent Dirichlet Allocation pada Media Sosial X
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Fakultas Ilmu Komputer
Abstract
Sentiment is an opinion or information conveyed by individuals to assess a
particular topic or product. Sentiments are usually conveyed orally or in writing.
Since the development of technology, many people have conveyed their sentiments
or opinions through social media such as X, Instagram, Facebook, and others. One
of the social media that is widely used to convey sentiments and ideas is X. The
ease of conveying opinions through social media With so many opinions, we need
a way to classify opinions quickly, such as using machine learning. MBKM is a
policy of the Ministry of Education and Culture, Research and Technology of the
Republic of Indonesia (Ministry of Education, Culture, Research and Technology
of the Republic of Indonesia) which aims to support the preparation of student
competencies to meet the needs of the times in line with the rapidly developing
world of work and technology. Public opinions regarding the MBKM program
published via social media X are very diverse, ranging from positive, negative and
neutral opinions. These differences in opinion lead to the need for further research
on MBKM sentiment. Then the researcher will conduct research on public opinion
sentiment regarding the MBKM program using Ensemble Learning Voting with a
combination of Random Forest, Naïve Bayes, and Support Vector Machine
algorithms to determine the accuracy results of Ensemble Learning Voting and
Latent Dirichlet Allocation to find various topics that arise based on opinions. This
research obtained the results of the Merdeka Belajar Kampus Merdeka sentiment
classification using the ensemble learning voting method which was proven to get
better effectiveness results than a single model. Then in modeling MBKM
sentiment topics based on keywords, the number of topics that were successfully
identified from each keyword based on the type of sentiment was a maximum of 4
topics and a minimum of 2 topics
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Entry oleh Arif 2026 Maret 27
