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AIが民主主義にもたらす危険を検出し測定する方法
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ポイント
- AIが民主主義の既存の問題を悪化させるという結論に基づき、リスクの優先順位付けと民主的統制の可能性を評価する体系的な方法を提案する。
- 本研究では、AIを委任問題として捉え、プリンシパル・エージェント理論とNIST AIリスク管理フレームワークを用いて、説明責任のギャップと信頼できるAIの基準を特定する。
- AIの民主主義への影響を実証的に評価するための指標を提示し、制度的評価可能性を民主的統制の中心的条件とする分析フレームワークを提案する。
Abstract
Research on artificial intelligence and democracy has grown quickly over the last decade. A shared conclusion in this literature is that AI does not create new democratic problems so much as it makes old ones worse. We now see this across information ecosystems, in elections, and in public administration. However, despite growing evidence, we lack a clear way to prioritize risks in this area, compare them across domains, and identify where democratic control is most likely to break down. So, our problem is: How can we systematize the problems that AI systems pose to democratic processes? This paper argues that principal agent theory may fit the task. In many phases of democratic systems, principals delegate key functions to AI systems and their providers without really being able to monitor how these systems operate or the outputs they produce. Treating AI as a delegation problem helps identify accountability gaps and other governance failures. Most importantly, as we shall illustrate, it provides metrics for empirical assessments of AI impact on democracy. As a second analytical element, we draw on the NIST AI Risk Management Framework and its seven characteristics of trustworthy AI, which supply substantive criteria for evaluating delegated tasks. Operationalized across the three domains through measurable indicators and domain specific trustworthiness criteria, we propose an analytical framework that centers on institutional assessability as the central condition for democratic control over AI. However, we stress that how severe a harm is, and how much risk is acceptable, are evaluative judgments that current methodologies neither acknowledge nor operationalize. This becomes acute when such evaluative judgments are (silently) delegated to private vendors. We identify this as a strong limitation left for future work.
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