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Main Authors: Long, Do Xuan, Dinh, Duy, Nguyen, Ngoc-Hai, Kawaguchi, Kenji, Chen, Nancy F., Joty, Shafiq, Kan, Min-Yen
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.06950
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author Long, Do Xuan
Dinh, Duy
Nguyen, Ngoc-Hai
Kawaguchi, Kenji
Chen, Nancy F.
Joty, Shafiq
Kan, Min-Yen
author_facet Long, Do Xuan
Dinh, Duy
Nguyen, Ngoc-Hai
Kawaguchi, Kenji
Chen, Nancy F.
Joty, Shafiq
Kan, Min-Yen
contents As large language models (LLMs) have progressed towards more human-like and human--AI communications have become prevalent, prompting has emerged as a decisive component. However, there is limited conceptual consensus on what exactly quantifies natural language prompts. We attempt to address this question by conducting a meta-analysis surveying more than 150 prompting-related papers from leading NLP and AI conferences from 2022 to 2025 and blogs. We propose a property- and human-centric framework for evaluating prompt quality, encompassing 21 properties categorized into six dimensions. We then examine how existing studies assess their impact on LLMs, revealing their imbalanced support across models and tasks, and substantial research gaps. Further, we analyze correlations among properties in high-quality natural language prompts, deriving prompting recommendations. We then empirically explore multi-property prompt enhancements in reasoning tasks, observing that single-property enhancements often have the greatest impact. Finally, we discover that instruction-tuning on property-enhanced prompts can result in better reasoning models. Our findings establish a foundation for property-centric prompt evaluation and optimization, bridging the gaps between human--AI communication and opening new prompting research directions.
format Preprint
id arxiv_https___arxiv_org_abs_2506_06950
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle What Makes a Good Natural Language Prompt?
Long, Do Xuan
Dinh, Duy
Nguyen, Ngoc-Hai
Kawaguchi, Kenji
Chen, Nancy F.
Joty, Shafiq
Kan, Min-Yen
Computation and Language
As large language models (LLMs) have progressed towards more human-like and human--AI communications have become prevalent, prompting has emerged as a decisive component. However, there is limited conceptual consensus on what exactly quantifies natural language prompts. We attempt to address this question by conducting a meta-analysis surveying more than 150 prompting-related papers from leading NLP and AI conferences from 2022 to 2025 and blogs. We propose a property- and human-centric framework for evaluating prompt quality, encompassing 21 properties categorized into six dimensions. We then examine how existing studies assess their impact on LLMs, revealing their imbalanced support across models and tasks, and substantial research gaps. Further, we analyze correlations among properties in high-quality natural language prompts, deriving prompting recommendations. We then empirically explore multi-property prompt enhancements in reasoning tasks, observing that single-property enhancements often have the greatest impact. Finally, we discover that instruction-tuning on property-enhanced prompts can result in better reasoning models. Our findings establish a foundation for property-centric prompt evaluation and optimization, bridging the gaps between human--AI communication and opening new prompting research directions.
title What Makes a Good Natural Language Prompt?
topic Computation and Language
url https://arxiv.org/abs/2506.06950