SAINTIFIK@ : Jurnal Pendidikan MIPA
Vol 10, No 2 (2025): SAINTIFIK@: Jurnal Pendidikan MIPA EDISI OKTOBER 2025

Deep Learning as an Implementation of Mathematical Theory for Modeling Sentiment Dynamics: The Case of Pertamina’s “BBM Oplosan” Issue

Hermawan, Andy (Unknown)
Cindana, Adinda Prilly (Unknown)
Nainggolan, Dian Margaretha (Unknown)
Safryan, Rizky Jemal (Unknown)



Article Info

Publish Date
18 Oct 2025

Abstract

Public sentiment dynamics provide a quantitative reflection of how societal trust and perception evolve during crises. This study implements mathematical theory through deep learning techniques to model changes in public sentiment surrounding Pertamina’s “BBM Oplosan” (fuel adulteration) issue, which went viral in Indonesia in early 2025. Twitter (X) data containing the keyword “Pertamina” were collected across two temporal windows—before and after the issue’s emergence. Sentiment was classified into positive, neutral, and negative categories using both lexicon-based analysis (InSet Lexicon) and deep learning architectures, including Convolutional Neural Networks (CNN), Long Short-Term Memory (LSTM), and a hybrid CNN-LSTM model. From a mathematical standpoint, deep learning serves as a functional approximation framework that minimizes loss through gradient-based optimization—an implementation of multivariable calculus and linear algebra principles. Results show that negative sentiment increased from 23.5% to 48.2%, while positive sentiment declined from 44.6% to 26.2%, indicating a significant erosion of public trust. The CNN model achieved the highest validation accuracy (~63%), though it exhibited signs of overfitting. This research demonstrates how mathematical models underlying deep learning can be effectively applied to analyze real-world social phenomena, offering a robust quantitative framework for monitoring and interpreting public opinion dynamics during corporate crises.

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Journal Info

Abbrev

Saintifik

Publisher

Subject

Education Social Sciences Other

Description

JURNAL ini memuat tentang topik-topik bidang ilmu MIPA dan pembelajarannya, bagi dosen yang akan diterbitkan sesuai kajian akademik. RUANG LINGKUP JURNAL INI ADALAH AKAN MENERBITKAN TOPIK SEBAGAi BERIKUT: 1. Bidan Matematika dan Pembelajarannya 2. Bidang Fisika dan Pembelajarannya 3. Bidang Biologi ...