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Main Authors: Li, Warren, Wang, Yiqian, Wang, Zihan, Shang, Jingbo
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.09700
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author Li, Warren
Wang, Yiqian
Wang, Zihan
Shang, Jingbo
author_facet Li, Warren
Wang, Yiqian
Wang, Zihan
Shang, Jingbo
contents In-context learning (ICL) enables large language models to perform new tasks by conditioning on a sequence of examples. Most prior work reasonably and intuitively assumes that which examples are chosen has a far greater effect on performance than how those examples are ordered, leading to a focus on example selection. We revisit this assumption and conduct a systematic comparison between the effect of selection and ordering. Through controlled experiments on both classification and generation tasks, using multiple open-source model families (0.5B to 27B parameters) and GPT-5, we find that the variance in performance due to different example orderings is comparable to that from using entirely different example sets. Furthermore, we show that strong orderings can be identified using only a development set, achieving performance close to an oracle that selects the best ordering based on test labels. Our findings highlight the equal and intertwined importance of example selection and ordering in prompt design, calling for a reexamination of the assumptions held in ICL.
format Preprint
id arxiv_https___arxiv_org_abs_2511_09700
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Order Matters: Rethinking Prompt Construction in In-Context Learning
Li, Warren
Wang, Yiqian
Wang, Zihan
Shang, Jingbo
Computation and Language
In-context learning (ICL) enables large language models to perform new tasks by conditioning on a sequence of examples. Most prior work reasonably and intuitively assumes that which examples are chosen has a far greater effect on performance than how those examples are ordered, leading to a focus on example selection. We revisit this assumption and conduct a systematic comparison between the effect of selection and ordering. Through controlled experiments on both classification and generation tasks, using multiple open-source model families (0.5B to 27B parameters) and GPT-5, we find that the variance in performance due to different example orderings is comparable to that from using entirely different example sets. Furthermore, we show that strong orderings can be identified using only a development set, achieving performance close to an oracle that selects the best ordering based on test labels. Our findings highlight the equal and intertwined importance of example selection and ordering in prompt design, calling for a reexamination of the assumptions held in ICL.
title Order Matters: Rethinking Prompt Construction in In-Context Learning
topic Computation and Language
url https://arxiv.org/abs/2511.09700