AIDB Daily Papers
大規模な人間意見のペルソナベースシミュレーション:社会調査への革新的なアプローチ
※ 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
- SPIRITは、個人の解釈や意見形成をシミュレーションするフレームワークで、予測ではなく社会科学の介入効果検証を目指す。
- 既存のLLMは予測に留まるが、SPIRITは心理学に基づいた半構造化ペルソナをSNSから推論し、個人をより深く表現する点が新しい。
- 米国の成人を代表するサンプルで検証した結果、SPIRITは人口統計的ペルソナより自己申告に近い回答を再現し、意見の多様性も表現できた。
Abstract
What does it mean to model a person, not merely to predict isolated responses, preferences, or behaviors, but to simulate how an individual interprets events, forms opinions, makes judgments, and acts consistently across contexts? This question matters because social science requires not only observing and predicting human outcomes, but also simulating interventions and their consequences. Although large language models (LLMs) can generate human-like answers, most existing approaches remain predictive, relying on demographic correlations rather than representations of individuals themselves. We introduce SPIRIT (Semi-structured Persona Inference and Reasoning for Individualized Trajectories), a framework designed explicitly for simulation rather than prediction. SPIRIT infers psychologically grounded, semi-structured personas from public social media posts, integrating structured attributes (e.g., personality traits and world beliefs) with unstructured narrative text reflecting values and lived experience. These personas prompt LLM-based agents to act as specific individuals when answering survey questions or responding to events. Using the Ipsos KnowledgePanel, a nationally representative probability sample of U.S. adults, we show that SPIRIT-conditioned simulations recover self-reported responses more faithfully than demographic persona and reproduce human-like heterogeneity in response patterns. We further demonstrate that persona banks can function as virtual respondent panels for studying both stable attitudes and time-sensitive public opinion.
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: