Nalini Venkatasubramanian
2025
OptiSeq: Ordering Examples On-The-Fly for In-Context Learning
Rahul Atul Bhope
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Praveen Venkateswaran
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K. R. Jayaram
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Vatche Isahagian
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Vinod Muthusamy
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Nalini Venkatasubramanian
Findings of the Association for Computational Linguistics: EMNLP 2025
Developers using LLMs and LLM-based agents in their applications have provided plenty of anecdotal evidencethat in-context-learning (ICL) is fragile. In this paper, we show that in addition to the quantity and quality of examples, the order in which the in-context examples are listed in the prompt affects the output of the LLM and, consequently, their performance. While prior work has explored improving ICL through dataset-dependent techniques, we introduce , a purely inference-time, dataset-free optimization method that efficiently determines the best example order. OptiSeq leverages log probabilities of LLM-generated outputs to systematically prune the search space of possible orderings and recommend the best order(s) by distinguishing orderings that yield high levels of accuracy and those that underperform. Extensive empirical evaluation on multiple LLMs, datasets, and prompts demonstrates that OptiSeq improves accuracy by 5.5 - 10.5 percentage points across multiple tasks.