AIDB Daily Papers
生活史ナラティブを用いたコミュニティ統治シミュレーションのためのLLMベンチマーク
※ 日本語タイトル・ポイントはAIによる自動生成です。正確な内容は原論文をご確認ください。
ポイント
- 本研究は、コミュニティ統治における住民の個別的な意見をシミュレーションするため、LLMの活用を検証した。
- 詳細な生活史プロファイルを追加することで、LLMのシミュレーション精度が向上し、より現実に即した住民の意見を再現できることが示された。
- 開発されたcurriculum-LoRAアルゴリズムは、高精度なシミュレーションを低コストで実現し、リソースの限られた自治体でも活用可能である。
Abstract
Effective community governance hinges on understanding what specific residents think and need. Recent work has used large language models (LLMs) to simulate human respondents, offering a scalable, reproducible way to study human attitudes and behaviors at low cost. However, these studies typically prompt the model with just a few demographic variables (age, gender, income), simulating only general role types. This is insufficient for community governance, where decisions depend on the views of specific residents. We bridge this gap with an integrated research framework covering dataset, benchmark, algorithm, and system. The dataset comprises approximately 1.2 million characters of first-person narrative collected through two-hour semi-structured interviews with each of 92 residents in an urban community, organized around nine community-governance domains. The benchmark probes 18 mainstream LLMs across four prompting strategies and shows that adding rich life-history profiles meaningfully raises fidelity above the no-profile baseline, but this gain comes with more input tokens per call from the longer prompts they require. The algorithm, curriculum-LoRA, is a parameter-efficient personalization framework that, by closing this fidelity-cost gap, matches the strongest baseline's fidelity at roughly 10x lower per-call cost and Pareto-dominates every configuration tested. The system integrates curriculum-LoRA into a closed-loop policy-evaluation pipeline. Together, these results bring individual-level LLM-based resident simulation within reach of resource-constrained local administrations, enabling community-governance decisions to be systematically pre-evaluated in silico before real-world deployment.
Paper AI Chat
この論文のPDF全文を対象にAIに質問できます。
質問の例: