Ask-before-Plan: Proactive Language Agents for Real-World Planning
- URL: http://arxiv.org/abs/2406.12639v1
- Date: Tue, 18 Jun 2024 14:07:28 GMT
- Title: Ask-before-Plan: Proactive Language Agents for Real-World Planning
- Authors: Xuan Zhang, Yang Deng, Zifeng Ren, See-Kiong Ng, Tat-Seng Chua,
- Abstract summary: Proactive Agent Planning requires language agents to predict clarification needs based on user-agent conversation and agent-environment interaction.
We propose a novel multi-agent framework, Clarification-Execution-Planning (textttCEP), which consists of three agents specialized in clarification, execution, and planning.
- Score: 68.08024918064503
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The evolution of large language models (LLMs) has enhanced the planning capabilities of language agents in diverse real-world scenarios. Despite these advancements, the potential of LLM-powered agents to comprehend ambiguous user instructions for reasoning and decision-making is still under exploration. In this work, we introduce a new task, Proactive Agent Planning, which requires language agents to predict clarification needs based on user-agent conversation and agent-environment interaction, invoke external tools to collect valid information, and generate a plan to fulfill the user's demands. To study this practical problem, we establish a new benchmark dataset, Ask-before-Plan. To tackle the deficiency of LLMs in proactive planning, we propose a novel multi-agent framework, Clarification-Execution-Planning (\texttt{CEP}), which consists of three agents specialized in clarification, execution, and planning. We introduce the trajectory tuning scheme for the clarification agent and static execution agent, as well as the memory recollection mechanism for the dynamic execution agent. Extensive evaluations and comprehensive analyses conducted on the Ask-before-Plan dataset validate the effectiveness of our proposed framework.
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