Sentiment Classification on Indodax Using Term Frequency, FastText, and Neural Attention Models
Dublin Core
Title
Sentiment Classification on Indodax Using Term Frequency, FastText, and Neural Attention Models
Subject
fasttext embedding; hybrid feature representation; lexicon-based labeling; sentiment analysis; BiLSTM attention
Description
The rapid growth of mobile-based investment platforms such as Indodax has triggered a surge in user-generated reviews that reflect public perception and sentiment. This study aimed to develop and evaluate sentiment classification models that can accurately classify Indonesian user reviews on the Indodax app into negative, neutral, and positive sentiments. A dataset of 11,000 reviews was collected via web scraping from the Google Play Store. Reviews were preprocessed, labeled using a lexicon-based unsupervised method, and balanced using oversampling. Two models were built: a Bidirectional LSTM (BiLSTM) with attention mechanism using FastText embeddings, and a Feedforward Neural Network (FFNN) using a hybrid feature vector combining TF-IDF and FastText. The evaluation was performed using accuracy, classification report, confusion matrix, and PCA visualization. The FFNN model outperformed the BiLSTM-Attention model with an accuracy of 97.07% compared to 96.00%. Both models demonstrated strong performance in classifying three sentiment classes, though the FFNN showed better separation in PCA space and higher macro-average metrics. This study demonstrates the effectiveness of combining statistical and semantic feature representations for sentiment classification in Indonesian text. The proposed approach is particularly valuable for low-resource languages and informal user-generated content
Creator
Dedy Hartama1, Ginanti Riski2
Source
https://jurnal.iaii.or.id/index.php/RESTI/article/view/6871/1155
Publisher
Department of Information Systems, 2Department of Informatics Engineering, STIKOM Tunas Bangsa, Pematangsiantar, Indonesia
Date
October 25, 2025
Contributor
FAJAR BAGUS W
Format
PDF
Language
ENGLISH
Type
TEXT
Files
Collection
Citation
Dedy Hartama1, Ginanti Riski2, “Sentiment Classification on Indodax Using Term Frequency, FastText, and Neural Attention Models,” Repository Horizon University Indonesia, accessed February 9, 2026, https://repository.horizon.ac.id/items/show/10594.