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Main Authors: Kim, Dongseok, Choi, Hyoungsun, Rasool, Mohamed Jismy Aashik, Oh, Gisung
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.12688
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author Kim, Dongseok
Choi, Hyoungsun
Rasool, Mohamed Jismy Aashik
Oh, Gisung
author_facet Kim, Dongseok
Choi, Hyoungsun
Rasool, Mohamed Jismy Aashik
Oh, Gisung
contents Prompt engineering is widely used to shape large language model behavior, yet it is often treated as a practical heuristic rather than as a form of natural-language control. This paper develops a cognitive-semantic account in which prompts function as semantic conditions on how a fixed model interprets inputs, foregrounds information, and structures tasks. We formalize this account through three notions -- frame activation, salience control, and construal selection -- and study them in natural language inference, claim verification, and multi-hop question answering. Across these settings, prompts produce measurable changes in label judgments, evidence use, and answer-support organization, showing that prompt effects differ not only in magnitude but also in semantic direction. The paper therefore reframes prompting as the analysis of how instructions move model behavior, rather than only whether they improve performance.
format Preprint
id arxiv_https___arxiv_org_abs_2512_12688
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle How Prompts Move Language Model Behavior: Frames, Salience, and Construal as Semantic Control
Kim, Dongseok
Choi, Hyoungsun
Rasool, Mohamed Jismy Aashik
Oh, Gisung
Machine Learning
Artificial Intelligence
Computation and Language
Prompt engineering is widely used to shape large language model behavior, yet it is often treated as a practical heuristic rather than as a form of natural-language control. This paper develops a cognitive-semantic account in which prompts function as semantic conditions on how a fixed model interprets inputs, foregrounds information, and structures tasks. We formalize this account through three notions -- frame activation, salience control, and construal selection -- and study them in natural language inference, claim verification, and multi-hop question answering. Across these settings, prompts produce measurable changes in label judgments, evidence use, and answer-support organization, showing that prompt effects differ not only in magnitude but also in semantic direction. The paper therefore reframes prompting as the analysis of how instructions move model behavior, rather than only whether they improve performance.
title How Prompts Move Language Model Behavior: Frames, Salience, and Construal as Semantic Control
topic Machine Learning
Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2512.12688