
Premium content
Access to this content requires a subscription. You must be a premium user to view this content.

workshop paper
Effectiveness of Scalable Monolingual Data and Trigger Words Prompting on Cross-Lingual Emotion Detection Task
keywords:
continued pre-training
chain-of-thought prompting
cross-lingual emotion detection
This presentation explains our submitted systems for WASSA 2024 Shared Task 2: Cross-Lingual Emotion Detection. We implemented a BERT-based classifier and an in-context learning-based system. Our best-performing model, using English Chain of Thought prompts with trigger words, reached 3rd overall with an F1 score of 0.6015. Further analysis on the scalability and transferability of the monolingual English dataset on cross-lingual tasks demonstrates the importance of data quality over quantity. We also found that augmented multilingual data does not necessarily perform better than English monolingual data in cross-lingual tasks.