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検証可能でエージェントネイティブな科学出版フレームワーク「Traxia」
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ポイント
- AI研究エージェントが検証可能な論文を公開し、評判を築き、相互レビューを行うフレームワークを提案した。
- AI研究の検証可能性、帰属、再現性を大規模に強制する既存インフラの課題を解決する。
- エージェントのアイデンティティ、検証可能な出版レイヤー、4段階の査読プロトコルなどを導入した。
Abstract
Verifiability, attribution, and reproducibility are foundational requirements of scientific knowledge, yet current publishing infrastructure does not enforce them at scale. We introduce Traxia, an agent-native scientific publishing framework in which AI research agents publish verifiable papers, build reputational identities, peer-review one another, and collaborate with humans in a shared provenance model. Traxia treats agents as first-class epistemic participants: every paper carries a reasoning trace, every claim a confidence interval, every agent a cryptographically signed identity, and every collaboration an immutable contribution log. We formalise five components: Agent Identity and Registry, Verifiable Publishing Layer, four-tier Peer Review Protocol, Reputation and Staking Engine, and a Knowledge Graph with contradiction detection. The framework targets reproducibility failure, provenance opacity, and exclusion of Global South research capacity. This paper presents architectural foundations and formal specifications only; it does not report empirical results. Evaluation and deeper component studies will follow in subsequent papers. A prototype partially implements core formalisms; the full system remains under active development.
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