MAPROC at AHaSIS Shared Task: Few-Shot and Sentence Transformer for Sentiment Analysis of Arabic Hotel Reviews
By: Randa Zarnoufi
Potential Business Impact:
Helps computers understand feelings in Arabic reviews.
Sentiment analysis of Arabic dialects presents significant challenges due to linguistic diversity and the scarcity of annotated data. This paper describes our approach to the AHaSIS shared task, which focuses on sentiment analysis on Arabic dialects in the hospitality domain. The dataset comprises hotel reviews written in Moroccan and Saudi dialects, and the objective is to classify the reviewers sentiment as positive, negative, or neutral. We employed the SetFit (Sentence Transformer Fine-tuning) framework, a data-efficient few-shot learning technique. On the official evaluation set, our system achieved an F1 of 73%, ranking 12th among 26 participants. This work highlights the potential of few-shot learning to address data scarcity in processing nuanced dialectal Arabic text within specialized domains like hotel reviews.
Similar Papers
AHaSIS: Shared Task on Sentiment Analysis for Arabic Dialects
Computation and Language
Helps understand customer feelings in Arabic hotel reviews.
EHSAN: Leveraging ChatGPT in a Hybrid Framework for Arabic Aspect-Based Sentiment Analysis in Healthcare
Computation and Language
Analyzes Arabic patient feedback quickly and clearly
Dhati+: Fine-tuned Large Language Models for Arabic Subjectivity Evaluation
Computation and Language
Helps computers understand feelings in Arabic text.