Temel Kavramlar
Schema Augmentation, a novel data augmentation technique, significantly improves the ability of large language models to perform dialogue state tracking in unseen domains without requiring target domain data during training.
Richardson, C., Sharma, R., Gaur, N., Haghani, P., Sundar, A., & Ramabhadran, B. (2024). Schema Augmentation for Zero-Shot Domain Adaptation in Dialogue State Tracking. arXiv preprint arXiv:2411.00150v1.
This research paper investigates methods for improving zero-shot domain adaptation of large language models for end-to-end dialogue state tracking (DST), focusing on enabling models to accurately predict dialogue states in unseen domains.