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参加型AI:少数のエリートから多様な貢献者へ
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ポイント
- 少数の開発者によって作られる大規模言語モデルに対し、多様な参加者が貢献するモジュール型AIシステムを提案した。
- この研究は、中央集権的なAI開発から、多様な知識や価値観を反映するボトムアップ型のAI構築への転換を目指す点で重要である。
- 提案手法は、15のタスクで既存モデルを上回り、参加者の多様性がシステムの性能向上と創発的能力の獲得に寄与することを発見した。
Abstract
Humanity is a mosaic of multifaceted talents and needs, and any truly intelligent AI must reflect that richness. Yet the LLMs used by all are built by the few -- a centralized market of monolithic AI models structurally ill-suited to capture the diversity of human knowledge, reasoning, and values. Here we introduce scaling participation, a new paradigm in which modular AI systems are built from the bottom up through the contributions of diverse stakeholders. Participants contribute small models trained on their own interests and priorities; these models then collaborate in modular frameworks as compositional AI systems. Participatory AI systems outperform monolithic LLMs by up to 15.4% across 15 tasks, such as reasoning and factuality, surpassing models larger than all contributed components combined. Further experiments show that participatory AI systems benefit from contributor diversity, substantially improve on each contributor's original priorities, and exhibit emergent capabilities that allow them to solve over 15% of problems where all individual models fail. Scaling participation provides a technical foundation for transitioning from the monolithic status quo toward an open, bottom-up, and collaborative AI future.
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