CLMar 21, 2025

Conversational User-AI Intervention: A Study on Prompt Rewriting for Improved LLM Response Generation

arXiv:2503.16789v211 citationsh-index: 14
Originality Incremental advance
AI Analysis

This addresses the problem of users struggling to craft effective prompts for LLM chatbots, offering a potential solution for better human-AI interactions across domains.

The study investigated how rewriting suboptimal user prompts can improve LLM response generation in human-AI conversations, finding that rephrased prompts elicit better responses while preserving intent, with performance improving in longer conversations.

Human-LLM conversations are increasingly becoming more pervasive in peoples' professional and personal lives, yet many users still struggle to elicit helpful responses from LLM Chatbots. One of the reasons for this issue is users' lack of understanding in crafting effective prompts that accurately convey their information needs. Meanwhile, the existence of real-world conversational datasets on the one hand, and the text understanding faculties of LLMs on the other, present a unique opportunity to study this problem, and its potential solutions at scale. Thus, in this paper we present the first LLM-centric study of real human-AI chatbot conversations, focused on investigating aspects in which user queries fall short of expressing information needs, and the potential of using LLMs to rewrite suboptimal user prompts. Our findings demonstrate that rephrasing ineffective prompts can elicit better responses from a conversational system, while preserving the user's original intent. Notably, the performance of rewrites improves in longer conversations, where contextual inferences about user needs can be made more accurately. Additionally, we observe that LLMs often need to -- and inherently do -- make \emph{plausible} assumptions about a user's intentions and goals when interpreting prompts. Our findings largely hold true across conversational domains, user intents, and LLMs of varying sizes and families, indicating the promise of using prompt rewriting as a solution for better human-AI interactions.

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