VISA: Journal of Vision and Ideas
Vol. 5 No. 2 (2025): Journal of Vision and Ideas (VISA)

Klasifikasi Berita Negatif Menggunakan Bidirectional LSTM pada Dataset Berita Berbahasa Inggris

Hasanuddin, Ardy Satria (Unknown)
Ariessanti, Hani Dewi (Unknown)



Article Info

Publish Date
12 Sep 2025

Abstract

The increasing consumption of digital news by Generation Z carries the risk of exposure to negative content, which can adversely affect mental health. According to the Stress in America™ report by the APA (American Psychological Association) in 2018, there are five main categories that cause the most stress among Gen Z: mass shootings, suicide, climate change, deportation of immigrants, and sexual harassment or assault. This study developed a negative news classification model using the Bidirectional Long Short-Term Memory (Bi-LSTM) algorithm. The research was conducted through several stages: data collection from the Mata.Today platform (which provides news summaries from various trusted sources), text preprocessing, automatic labeling based on APA’s psychological criteria, use of GloVe embeddings, Bi-LSTM model training, and evaluation using accuracy, precision, recall, and F1-score metrics. The implemented model, utilizing pre-trained GloVe embeddings, achieved an accuracy of 89.25% with an ROC AUC of 0.9528 on a test set of 1,200 data points, demonstrating the model’s ability to distinguish negative news (negative class recall = 89.98%) and non-negative news (recall = 88.33%).  

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Journal Info

Abbrev

visa

Publisher

Subject

Economics, Econometrics & Finance Environmental Science Languange, Linguistic, Communication & Media Public Health Social Sciences

Description

VISA: Journal of Vision and Ideas is a scientific journal for the academic community of universities and research institutions with a scope covering the results of research, studies, thoughts and ideas related to vision and solutions to various problems in the economic, social, educational, ...