Context Aware Emotion Detection from Low Resource Urdu Language using Deep Neural Network

Author:

Bashir Muhammad Farrukh1,Javed Abdul Rehman2,Arshad Muhammad Umair3,Gadekallu Thippa Reddy4,Shahzad Waseem3,Beg Mirza Omer5

Affiliation:

1. Faculty of Computing Riphah International University, Pakistan

2. Department of Cyber Security Air University, Pakistan

3. Department of Computer Science National University of Computer and Emerging Sciences, Pakistan

4. School of Information Technology and Engineering Vellore Institute of Technology, India

5. Department of Computer Science National University of Computer and Emerging Sciences, Pakistan, Pakistan

Abstract

Emotion detection (ED) plays a vital role in determining individual interest in any field. Humans use gestures, facial expressions, voice pitch, and choose words to describe their emotions. Significant work has been done to detect emotions from the textual data in English, French, Chinese, and other high-resource languages. However, emotion classification has not been well studied in low-resource languages (i.e., Urdu) due to the lack of labeled corpora. This paper presents a publicly available Urdu Nastalique Emotions Dataset ( UNED ) of sentences and paragraphs annotated with different emotions and proposes a deep learning (DL) based technique for classifying emotions in the UNED corpus. Our annotated UNED corpus has six emotions for both paragraphs and sentences. We perform extensive experimentation to evaluate the quality of the corpus and further classify it using machine learning and DL approaches. Experimental results show that the developed DL-based model performs better than generic machine learning approaches with an F1 score of 85% on UNED sentence-based corpus and 50% on UNED paragraph-based corpus.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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