Kim-Hui Yap
2026
Demystifying Data Organization for Enhanced LLM Training
Yalun Dai | Yangyu Huang | Tongshen Yang | Yonghan Wang | Xin Zhang | Wenshan Wu | Qihao Zhao | Hao Li | Yuanyuan Gao | Kim-Hui Yap | Scarlett Li
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yalun Dai | Yangyu Huang | Tongshen Yang | Yonghan Wang | Xin Zhang | Wenshan Wu | Qihao Zhao | Hao Li | Yuanyuan Gao | Kim-Hui Yap | Scarlett Li
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large Language Models (LLMs) have revolutionized various fields, yet their training efficiency is heavily reliant on effective data curation. While data selection has been widely studied, the strategic data organization for enhanced training remains an underexplored area, particularly since current LLMs are often trained for only one or a few epochs. This paper systematically explores the influence of data organization on LLM training by reusing pre-computed sample-level scores originally generated for data efficiency, thereby incurring minimal additional computational overhead. We identify and formalize four key guidances for optimizing data organization: Boundary Sharpening, Cyclic Scheduling, Curriculum Continuity, and Local Diversity. Guided by them, we introduce two novel data ordering methods termed STR and SAW. Extensive experiments across different model scales and data sizes, encompassing both pre-training and SFT stages, validate the effectiveness of our summarized guidances. They also demonstrate the robustness of our proposed data ordering methods in enhancing the stability and performance of LLM training.
2024
Empowering Large Language Model for Continual Video Question Answering with Collaborative Prompting
Chen Cai | Zheng Wang | Jianjun Gao | Wenyang Liu | Ye Lu | Runzhong Zhang | Kim-Hui Yap
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Chen Cai | Zheng Wang | Jianjun Gao | Wenyang Liu | Ye Lu | Runzhong Zhang | Kim-Hui Yap
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
In recent years, the rapid increase in online video content has underscored the limitations of static Video Question Answering (VideoQA) models trained on fixed datasets, as they struggle to adapt to new questions or tasks posed by newly available content. In this paper, we explore the novel challenge of VideoQA within a continual learning framework, and empirically identify a critical issue: fine-tuning a large language model (LLM) for a sequence of tasks often results in catastrophic forgetting. To address this, we propose Collaborative Prompting (ColPro), which integrates specific question constraint prompting, knowledge acquisition prompting, and visual temporal awareness prompting. These prompts aim to capture textual question context, visual content, and video temporal dynamics in VideoQA, a perspective underexplored in prior research. Experimental results on the NExT-QA and DramaQA datasets show that ColPro achieves superior performance compared to existing approaches, achieving 55.14% accuracy on NExT-QA and 71.24% accuracy on DramaQA, highlighting its practical relevance and effectiveness.