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The first-ever vast natural language processing benchmark for Indonesian Language. We provide multiple downstream tasks, pre-trained IndoBERT models, and a starter code! (AACL-IJCNLP 2020)
IndoLEM is a comprehensive Indonesian NLU benchmark, comprising three pillars NLP task: morpho-syntax, semantic, and discourse. Presented in COLING 2020.
Model analisis sentimen berbasis IndoBERT yang dapat memprediksi 6 jenis emosi dalam suatu kalimat, yaitu marah, sedih, senang, cinta, takut, dan jijik.
This repository contains the final project (skripsi) for sentiment classification on Indonesian Twitter data using the hashtag #KaburAjaDulu. It explores the performance comparison between a fine-tuned IndoBERT model and traditional machine learning models (such as SVM with IndoBERT embeddings). Built with 🤗 Hugging Face Transformers.
IndoBERT is used for sentiment analysis of product reviews, helping businesses understand customer opinions. With fine-tuning, the model improves sentiment classification accuracy, enabling more effective marketing strategies such as ad personalisation, quick response, and service improvement based on customer feedback.
The system is designed to compare and utilize multiple state-of-the-art multilingual language models to produce more accurate and context-aware translations between Indonesian and Manado language.
This repository contains a comparative sentiment analysis project on Indonesian YouTube comments related to the Free Nutritious Meal Program (Makan Bergizi Gratis / MBG) using several Deep Learning Architectures.
🥈🏆 SEPAKAT - Modul Integrasi is a winning project in Regsosek Hackathon 2022 organized by The Ministry of National Development Planning/Bappenas Indonesia. This module provides a single individual identification model by integrating Regsosek data as basic information which is then linked with related data using the idea of entity resolution.
This project focuses on the classification of Indonesian news headlines into clickbait and non-clickbait categories using Natural Language Processing (NLP) techniques. The study combines traditional Machine Learning approaches and state-of-the-art deep learning models to analyze linguistic patterns commonly found in clickbait headlines.