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Main Authors: Prasad, Devika, Gerschwitz, Luke, Li, Tong, Xiao, Henry, Liu, Anjin, Wu, Coco, Leontjeva, Anna, Pizzato, Luiz
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.14561
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author Prasad, Devika
Gerschwitz, Luke
Li, Tong
Xiao, Henry
Liu, Anjin
Wu, Coco
Leontjeva, Anna
Pizzato, Luiz
author_facet Prasad, Devika
Gerschwitz, Luke
Li, Tong
Xiao, Henry
Liu, Anjin
Wu, Coco
Leontjeva, Anna
Pizzato, Luiz
contents Prompt engineering is crucial for effective interaction with generative artificial intelligence systems, yet existing optimisation methods often operate over an unstructured and vast prompt space, leading to high computational costs and potential distortions of the original intent. We introduce Prompt Segmentation and Annotation Optimisation (PSAO), a structured prompt optimisation framework designed to improve prompt optimisation controllability and efficiency. PSAO decomposes a prompt into interpretable segments (e.g., sentences) and augments each with human-readable annotations (e.g., {not important}, {important}, {very important}). These annotations guide large language models (LLMs) in allocating focus and clarifying confusion during response generation. We formally define the segmentations and annotations and demonstrate that optimised segment-level annotations can lead to improved LLM responses, with the original prompt retained as a candidate in the optimisation space to prevent performance degradation. Empirical evaluations indicate that PSAO benefits from annotations in terms of improved reasoning accuracy and self-consistency. However, developing efficient methods for identifying optimal segmentations and annotations remains challenging and is reserved for future investigation. This work is intended as a proof of concept, demonstrating the feasibility and potential of segment-level annotation optimisation.
format Preprint
id arxiv_https___arxiv_org_abs_2605_14561
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Prompt Segmentation and Annotation Optimisation: Controlling LLM Behaviour via Optimised Segment-Level Annotations
Prasad, Devika
Gerschwitz, Luke
Li, Tong
Xiao, Henry
Liu, Anjin
Wu, Coco
Leontjeva, Anna
Pizzato, Luiz
Artificial Intelligence
Prompt engineering is crucial for effective interaction with generative artificial intelligence systems, yet existing optimisation methods often operate over an unstructured and vast prompt space, leading to high computational costs and potential distortions of the original intent. We introduce Prompt Segmentation and Annotation Optimisation (PSAO), a structured prompt optimisation framework designed to improve prompt optimisation controllability and efficiency. PSAO decomposes a prompt into interpretable segments (e.g., sentences) and augments each with human-readable annotations (e.g., {not important}, {important}, {very important}). These annotations guide large language models (LLMs) in allocating focus and clarifying confusion during response generation. We formally define the segmentations and annotations and demonstrate that optimised segment-level annotations can lead to improved LLM responses, with the original prompt retained as a candidate in the optimisation space to prevent performance degradation. Empirical evaluations indicate that PSAO benefits from annotations in terms of improved reasoning accuracy and self-consistency. However, developing efficient methods for identifying optimal segmentations and annotations remains challenging and is reserved for future investigation. This work is intended as a proof of concept, demonstrating the feasibility and potential of segment-level annotation optimisation.
title Prompt Segmentation and Annotation Optimisation: Controlling LLM Behaviour via Optimised Segment-Level Annotations
topic Artificial Intelligence
url https://arxiv.org/abs/2605.14561