Generalized Category Discovery in Event-Centric Contexts: Latent Pattern Mining with LLMs

Generalized Category Discovery (GCD) aims to classify both known and novel categories using partially labeled data that contains only known classes. Despite achieving strong performance on existing benchmarks, current textual GCD methods lack sufficient validation in realistic settings. We introduce Event-Centric GCD (EC-GCD), characterized by long, complex narratives and highly imbalanced class distributions, posing two main challenges: (1) divergent clustering versus classification groupings caused by subjective criteria, and (2) Unfair alignment for minority classes. To tackle these, we propose PaMA, a framework leveraging LLMs to extract and refine event patterns for improved cluster-class alignment. Additionally, a ranking-filtering-mining pipeline ensures balanced representation of prototypes across imbalanced categories. Evaluations on two EC-GCD benchmarks, including a newly constructed Scam Report dataset, demonstrate that PaMA outperforms prior methods with up to 12.58% H-score gains, while maintaining strong generalization on base GCD datasets.
View on arXiv@article{luo2025_2505.23304, title={ Generalized Category Discovery in Event-Centric Contexts: Latent Pattern Mining with LLMs }, author={ Yi Luo and Qiwen Wang and Junqi Yang and Luyao Tang and Zhenghao Lin and Zhenzhe Ying and Weiqiang Wang and Chen Lin }, journal={arXiv preprint arXiv:2505.23304}, year={ 2025 } }