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Traceable, Enforceable, and Compensable Participation: A Participation Ledger for People-Centered AI Governance

arXiv:2602.10916v1h-index: 7
Originality Incremental advance
AI Analysis

This addresses the issue of ensuring durable influence and compensation for community contributions in public sector and civic AI systems, representing a novel method for a known bottleneck.

The paper tackles the problem of symbolic rather than accountable participation in AI governance by introducing the Participation Ledger, a framework that operationalizes participation as traceable influence, enforceable authority, and compensable labor, grounded in four urban AI deployments with provided tools for evaluation.

Participatory approaches are widely invoked in AI governance, yet participation rarely translates into durable influence. In public sector and civic AI systems, community contributions such as deliberations, annotations, prompts, and incident reports are often recorded informally, weakly linked to system updates, and disconnected from enforceable rights or sustained compensation. As a result, participation is frequently symbolic rather than accountable. We introduce the Participation Ledger, a machine readable and auditable framework that operationalizes participation as traceable influence, enforceable authority, and compensable labor. The ledger represents participation as an influence graph that links contributed artifacts to verified changes in AI systems, including datasets, prompts, adapters, policies, guardrails, and evaluation suites. It integrates three elements: a Participation Evidence Standard documenting consent, privacy, compensation, and reuse terms; an influence tracing mechanism that connects system updates to replayable before and after tests, enabling longitudinal monitoring of commitments; and encoded rights and incentives. Capability Vouchers allow authorized community stewards to request or constrain specific system capabilities within defined boundaries, while Participation Credits support ongoing recognition and compensation when contributed tests continue to provide value. We ground the framework in four urban AI and public space governance deployments and provide a machine readable schema, templates, and an evaluation plan for assessing traceability, enforceability, and compensation in practice.

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