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Journal : Journal of Electronics, Electromedical Engineering, and Medical Informatics

Gender Classification on Social Media Messages Using fastText Feature Extraction and Long Short-Term Memory Sa’diah, Halimatus; Faisal, Mohammad Reza; Farmadi, Andi; Abadi, Friska; Indriani, Fatma; Alkaff, Muhammad; Abdullayev, Vugar
Journal of Electronics, Electromedical Engineering, and Medical Informatics Vol 6 No 3 (2024): July
Publisher : Department of Electromedical Engineering, POLTEKKES KEMENKES SURABAYA

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.35882/jeeemi.v6i3.407

Abstract

Currently, social media is used as a platform for interacting with many people and has also become a source of information for social media researchers or analysts. Twitter is one of the platforms commonly used for research purposes, especially for data from tweets written by individuals. However, on Twitter, user information such as gender is not explicitly displayed in the account profile, yet there is a plethora of unstructured information containing such data, often unnoticed. This research aims to classify gender based on tweet data and account description data and determine the accuracy of gender classification using machine learning methods. The method used involves FastText as a feature extraction method and LSTM as a classification method based on the extracted data, while to achieve the most accurate results, classification is performed on tweet data, account description data, and a combination of both. This research shows that LSTM classification on account description data and combined data obtained an accuracy of 70%, while tweet data classification achieved 69%. This research concludes that FastText feature extraction with LSTM classification can be implemented for gender classification. However, there is no significant difference in accuracy results for each dataset. However, this research demonstrates that both methods can work well together and yield optimal results.
Co-Authors Abdullayev, Vugar Achmad Faisal, Achmad Adnina, Rania Agustini, Meti Ahmad Suriansyah Akbar, Syahrezza Alfani, Niranda Almira Ulimaz Amalia, Yuni Andi Farmadi Anwari, Muhammad Arum Murdianingsih M.Pd Asyifa, Eteh Resa Aziz, Habibatul Aziza, Wafiq Cinantya, Celia Destiawan, Rian Anggia Dewi Amelia Widiyastuti Diani Ayu Pratiwi Fadilah, Umi Faizatul Fatahilah, Muhammad Ibnu Fatma Indriani Febriana, Vici Friska Abadi Halisa, Siti Noor Haliza, Nur Hamsanie, Mohamad Harahap, Siti Rahma Hasanudin, Muhammad Nur Hayati, Zuhratul Heri Satria Setiawan Hermawan, Hery Hidayatullah, Reko Syarif Iqlimah, Iqlimah Irawan, Angga Irnawati Irnawati Jepri, Jumadi Khairani, Eka Ulfa Khofifah, Siti Nur Kurnia Dwi Artika, Kurnia Dwi Kusdianti, Eriza Latifah Latifah Martua, Gong Maulina Arianta, Citra Oriza Muhammad Alkaff Muhammad Reza Faisal, Muhammad Reza Mustaqimah, Wafiq Nafila, Amanda Eka Putri Najmailya, Fathia Nabila Nazirah, Rosmia Nito, Paul Joae Brett Nur, Lidea Revica Panjaitan, Klara Septari Priambodo, Caka Gatot Prishananda, Nindia Zahwa Putra, Fahad Dwi Maulana Putri, Disa Alfia Ramadhan, Fahad Ramadhani, Muhammad Rudini Rudini, Rudini Rusmardiana, Ana Sartika, Yana Sembiring, Ibrena Nalsal Angelika Sembiring, Philips Silwanus Elifiel Setia Budhi Setiawan, Muhammad Irwan Siregar, Syamsiah Defalina Siti Fatimah Soeliha, Siti Subhannur Rahman Suhasti, Indri Suteja, Moch Daffa Aushaf Suwandewi, Alit Syifa, Widianti Syofyan, Heri Tasalim, Rian Waty Hutajulu, Bertha Meyke Wibowo, Mahmud Lucky Wikoyah, Nur Uli Wulandari Wulandari Yardani, Jesi Yudha Praja, Yudha Yuliyanti, Wan