Curriculum Demonstration Selection for In-Context Learning

Nov 27, 2024ยท
Duc Anh Vu
,
Nguyen Tran Cong Duy
,
Xiaobao Wu
Nhat M. Hoang
Nhat M. Hoang
,
Du Mingzhe
,
Nguyen Thanh Thong
,
Anh Tuan Luu
ยท 0 min read
Abstract
Large Language Models (LLMs) have shown strong in-context learning (ICL) abilities with a few demonstrations. However, one critical challenge is how to select demonstrations to elicit the full potential of LLMs. In this paper, we propose Curriculum Demonstration Selection (CDS), a novel demonstration selection method for ICL. Instead of merely using similarity, CDS additionally partitions samples by their complexity measurements. Following curriculum learning, CDS then selects demonstrations from easy to difficult. Thus the selected demonstrations cover a wide range of difficulty levels, enabling LLMs to learn from varied complexities within the training set. Experiments demonstrate that our CDS consistently outperforms baseline methods, achieving notable improvements across nine LLMs on three benchmarks. Moreover, CDS proves especially effective in enhancing LLM performance in solving challenging problems.
Type
Publication
In The 40th ACM/SIGAPP Symposium On Applied Computing 2025