JSAI2025

Presentation information

General Session

General Session » GS-5 Agents

[3J6-GS-5] Agents:

Thu. May 29, 2025 5:40 PM - 7:20 PM Room J (Room 1005)

座長:峯岸 朋弥(専修大学)

5:40 PM - 6:00 PM

[3J6-GS-5-01] Creative Writing by LLM Agents to Smoothly Reflect Human Intentions

〇Makoto Nakatsuji1, Ayaka Matsumoto1, Katsuhiro Suzuki1, Narichika Nomoto1, Yoshihide Sato1 (1. NTT)

Keywords:Creative writing, multi agent

Recent studies on LLM (Large Language Model) agents focus on automating task resolution to minimize human intervention, thereby reducing effort. However, in tasks involving creative production activities, such as drafting service proposals, there is a challenge in sufficiently reflecting human intent. This study proposes a method for semi-automatically integrating concise human instructions into multi-agent task resolution processes. The method aims to enhance complex task design based on instruction prompts through reinforcement learning for automatic optimization, maximizing the reflection of human intent. By aligning outputs with human intent, the proposed approach fosters creativity in task resolution. This paper provides a detailed explanation of the proposed method and its evaluation framework.

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