Kaiyi Zhang
2024
An Analysis and Mitigation of the Reversal Curse
Ang Lv
|
Kaiyi Zhang
|
Shufang Xie
|
Quan Tu
|
Yuhan Chen
|
Ji-Rong Wen
|
Rui Yan
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Batch-ICL: Effective, Efficient, and Order-Agnostic In-Context Learning
Kaiyi Zhang
|
Ang Lv
|
Yuhan Chen
|
Hansen Ha
|
Tao Xu
|
Rui Yan
Findings of the Association for Computational Linguistics: ACL 2024
In this paper, by treating in-context learning (ICL) as a meta-optimization process, we explain why LLMs are sensitive to the order of ICL examples. This understanding leads us to the development of Batch-ICL, an effective, efficient, and order-agnostic inference algorithm for ICL. Differing from the standard N-shot learning approach, Batch-ICL employs N separate 1-shot forward computations and aggregates the resulting meta-gradients. These aggregated meta-gradients are then applied to the forward computation of a zero-shot query to generate the final prediction. This batch processing approach renders the LLM agnostic to the order of ICL examples. Through extensive experiments and analysis, we demonstrate that Batch-ICL consistently outperforms most permutations of ICL examples. In some cases, it even exceeds the performance of the best order for standard ICL, all while reducing the computational resources required. Furthermore, we develop a novel variant of Batch-ICL featuring multiple “epochs” of meta-optimization. This variant implicitly explores permutations of ICL examples, further enhancing ICL performance.
Search
Co-authors
- Ang Lv 2
- Yuhan Chen 2
- Rui Yan 2
- Shufang Xie 1
- Quan Tu 1
- show all...