NLP_bahasa_resources and Dataset-Sentimen-Analisis-Bahasa-Indonesia

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About NLP_bahasa_resources

louisowen6/NLP_bahasa_resources

A Curated List of Dataset and Usable Library Resources for NLP in Bahasa Indonesia

This is a curated collection of resources for working with text data in Bahasa Indonesia. It provides links to various datasets, pre-trained models, and usable libraries, enabling tasks like identifying named entities, summarizing text, or analyzing sentiment in Indonesian. This is for anyone building applications or conducting research that involves processing or understanding the Indonesian language.

Bahasa Indonesia text analysis language research sentiment analysis information extraction

About Dataset-Sentimen-Analisis-Bahasa-Indonesia

rizalespe/Dataset-Sentimen-Analisis-Bahasa-Indonesia

Repositori ini merupakan kumpulan dataset terkait analisis sentimen Berbahasa Indonesia. Apabila Anda menggunakan dataset-dataset yang ada pada repositori ini untuk penelitian, maka cantumkanlah/kutiplah jurnal artikel terkait dataset tersebut. Dataset yang tersedia telah diimplementasikan dalam beberapa penelitian dan hasilnya telah dipublikasikan pada artikel/paper ilmiah.

This project provides pre-labeled datasets of Indonesian social media posts for sentiment analysis. It takes raw tweets or Instagram comments as input and classifies them as either 'positive' or 'negative' sentiment. Data scientists, researchers, or anyone needing pre-categorized Indonesian text data for sentiment analysis tasks would find this useful.

social-media-analytics public-opinion-research customer-feedback-analysis cyberbullying-detection political-sentiment

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