Saved in:
Bibliographic Details
Main Authors: Fu, Chuanruo, Du, Yuncheng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.08308
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866918122579034112
author Fu, Chuanruo
Du, Yuncheng
author_facet Fu, Chuanruo
Du, Yuncheng
contents Large Language Models (LLMs) often struggle to deliver accurate and actionable answers when user-provided information is incomplete or ill-specified. We propose a new interaction paradigm, First Ask Then Answer (FATA), in which, through prompt words, LLMs are guided to proactively generate multidimensional supplementary questions for users prior to response generation. Subsequently, by integrating user-provided supplementary information with the original query through sophisticated prompting techniques, we achieve substantially improved response quality and relevance. In contrast to existing clarification approaches -- such as the CLAM framework oriented to ambiguity and the self-interrogation Self-Ask method -- FATA emphasizes completeness (beyond mere disambiguation) and user participation (inviting human input instead of relying solely on model-internal reasoning). It also adopts a single-turn strategy: all clarifying questions are produced at once, thereby reducing dialogue length and improving efficiency. Conceptually, FATA uses the reasoning power of LLMs to scaffold user expression, enabling non-expert users to formulate more comprehensive and contextually relevant queries. To evaluate FATA, we constructed a multi-domain benchmark and compared it with two controls: a baseline prompt (B-Prompt) and a context-enhanced expert prompt (C-Prompt). Experimental results show that FATA outperforms B-Prompt by approximately 40% in aggregate metrics and exhibits a coefficient of variation 8% lower than C-Prompt, indicating superior stability.
format Preprint
id arxiv_https___arxiv_org_abs_2508_08308
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle First Ask Then Answer: A Framework Design for AI Dialogue Based on Supplementary Questioning with Large Language Models
Fu, Chuanruo
Du, Yuncheng
Artificial Intelligence
Large Language Models (LLMs) often struggle to deliver accurate and actionable answers when user-provided information is incomplete or ill-specified. We propose a new interaction paradigm, First Ask Then Answer (FATA), in which, through prompt words, LLMs are guided to proactively generate multidimensional supplementary questions for users prior to response generation. Subsequently, by integrating user-provided supplementary information with the original query through sophisticated prompting techniques, we achieve substantially improved response quality and relevance. In contrast to existing clarification approaches -- such as the CLAM framework oriented to ambiguity and the self-interrogation Self-Ask method -- FATA emphasizes completeness (beyond mere disambiguation) and user participation (inviting human input instead of relying solely on model-internal reasoning). It also adopts a single-turn strategy: all clarifying questions are produced at once, thereby reducing dialogue length and improving efficiency. Conceptually, FATA uses the reasoning power of LLMs to scaffold user expression, enabling non-expert users to formulate more comprehensive and contextually relevant queries. To evaluate FATA, we constructed a multi-domain benchmark and compared it with two controls: a baseline prompt (B-Prompt) and a context-enhanced expert prompt (C-Prompt). Experimental results show that FATA outperforms B-Prompt by approximately 40% in aggregate metrics and exhibits a coefficient of variation 8% lower than C-Prompt, indicating superior stability.
title First Ask Then Answer: A Framework Design for AI Dialogue Based on Supplementary Questioning with Large Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2508.08308