LLM Explanations in Low-Resource Languages: A Persian Case Study
Published:Nov 24, 2025 21:29
•1 min read
•ArXiv
Analysis
This research investigates the crucial challenge of ensuring Large Language Model (LLM) explainability in languages with limited training data. The focus on Persian emotion detection provides a valuable case study for understanding model behavior in a low-resource setting.
Key Takeaways
- •Addresses the explainability of LLMs in low-resource languages.
- •Uses Persian emotion detection as a specific application and case study.
- •Contributes to understanding model behavior in resource-constrained scenarios.
Reference
“The study focuses on emotion detection in Persian.”