Authors
Nadia Ali, Abdallah Tubaishat, Feras Al-Obeidat, Mohammad Shabaz, Muhammad Waqas, Zahid Halim, Imad Rida, Sajid Anwar
Publication date
2023/4/1
Journal
ACM transactions on Asian and low-resource language information processing
Publisher
ACM
Description
Emotion identification from text has recently gained attention due to its versatile ability to analyze human-machine interaction. This work focuses on detecting emotions from textual data. Languages, like English, Chinese, and German are widely used for text classification, however, limited research is done on resource-poor oriental languages. Roman Urdu (RU) is a resource-constrained language extensively used across Asia. This work focuses on predicting emotions from RU text. For this, a dataset is collected from different social media domains and based on Paul Ekman's theory it is annotated with six basic emotions, i.e., happy, surprise, angry, sad, fear, and disgusting. Dense word embedding representations of different languages is adopted that utilize existing pre-trained models. BERT is additionally pre-trained and fine-tuned for the classification task. The proposed approach is compared with baseline …
Total citations
202220232024112
Scholar articles
N Ali, A Tubaishat, F Al-Obeidat, M Shabaz, M Waqas… - ACM transactions on Asian and low-resource language …, 2023