AIDB Daily Papers
生涯にわたる社会的知能のためのソーシャルワールドモデル
※ 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
- 言語エージェントの社会的知能を継続的に学習・蓄積するための「ソーシャルワールドモデル」を提案した。
- 社会的相互作用を5つの次元に分解し、閉ループ学習フレームワークを構築することで、従来の評価中心の研究から持続的な学習へと転換を図った。
- 提案手法により、Qwen2.5-7Bモデルはベースラインを全指標で上回り、競合モデルに匹敵する性能と、難易度レベル間での忘却ゼロを達成した。
Abstract
Social intelligence is a core competency for language agents, yet current research primarily focuses on static capability evaluation rather than how these skills are continuously shaped and accumulated. This gap calls for a shift toward sustainable learning paradigms. Currently, two methodological pain points exist: social interaction trajectories lack unified structured representations to form iterable learning signals, and capability improvement and retention are typically studied in isolation, hindering the assessment of continuous evolution. To bridge this gap, we propose the Social World Model. We decompose social interaction into five dimensions (scene setting, observation, mental state, action, and dialogue) to build a closed-loop learning framework. In this setup, agents collect interaction experiences, convert them into preference signals for model updating, and redeploy the updated policy for continued learning. Additionally, we provide a reusable data synthesis mechanism and a lifelong learning benchmark, transforming social capabilities from an "object of evaluation" into an "object of sustainable training". Validating our framework on the ASCENT-Bench, the interactively trained Qwen2.5-7B model outperforms its baseline across all five core metrics. Notably, it matches the closed-source Gemini 3 Flash in completion rate, exceeds it in pass rate, and achieves zero forgetting across three difficulty levels. Unlike prior works that merely report static comparisons or capability decay, this end-to-end approach provides a trainable, verifiable, and retainable pathway, demonstrating that small open-source models can sustainably acquire competitive social coordination capabilities.
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: