Occupational groups prediction in Turkish Twitter data by using machine learning algorithms with multinomial approach
-
Published:2024-10
Issue:
Volume:252
Page:124175
-
ISSN:0957-4174
-
Container-title:Expert Systems with Applications
-
language:en
-
Short-container-title:Expert Systems with Applications
Author:
Ciplak ZekiORCID,
Yildiz KazimORCID
Reference57 articles.
1. Abitbol, J. L., Karsai, M., & Fleury, E. (2018). Location, occupation, and semantics based socioeconomic status inference on twitter. Paper presented at the IEEE International Conference on Data Mining Workshops (ICDMW).
2. Türk dilleri için açık kaynaklı doğal dil işleme kütüphanesi: ZEMBEREK;Akın;Elektrik mühendisliği,2007
3. Aletras, N., & Chamberlain, B. P. (2018). Predicting twitter user socioeconomic attributes with network and language information. In Proceedings of the 29th on Hypertext and Social Media (pp. 20-24).
4. Ali, L., Khan, S. U., Anwar, M., & Asif, M. (2019). Early detection of heart failure by reducing the time complexity of the machine learning based predictive model. Paper presented at the International Conference on Electrical, Communication, and Computer Engineering (ICECCE).
5. The relationship between variable selection and data agumentation and a method for prediction;Allen;Technometrics,1974