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LLMによる説明責任のある人間-AI協調型審議:共生型足場による集合知の拡張
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ポイント
- LLMを活用し、大規模な民主的審議を支援する共生型フレームワークを提案する。
- 提案手法は、多様性の増幅、 clause-level の由来情報、人間の最終決定権を特徴とする。
- この研究は、集合知を拡張しつつ、人間の主体性と正当性を維持する審議技術の青写真を提供する。
Abstract
Large language models (LLMs) can support democratic deliberation at scales previously constrained by turn-taking and facilitation bandwidth. Recent work shows that LLM-generated group statements are often preferred over human-mediated outputs, while theoretical analyses argue that LLMs relax the simultaneity constraints limiting collective intelligence. Yet pure LLM mediation risks collapsing pluralism, over-optimizing for agreement, and undermining legitimacy when participants cannot contest how they are represented. We propose a symbiotic human-AI framework organized into three layers: observation and diversity amplification, facilitation with clause-level provenance, and human primacy for ratification. Our contributions include graded coverage, diversity, and erasure metrics with salience-aware weighting; a provenance pipeline combining cross-encoder similarity with causal knockout diagnostics; preference-conditioned trade-off control; equity-aware contestability workflows; adversarial robustness tests; and an evaluation protocol with ablation designs informed by evidence of LLM-as-judge limitations. The result is a testable blueprint for deliberation technology that scales collective intelligence while preserving agency and legitimacy.
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