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AgentBound: Verifiable Behavioral Governance for Autonomous AI Agents

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NOW LET US Article – AgentBound: Verifiable Behavioral Governance for Autonomous AI Agents

Researchers have introduced AgentBound, a runtime governance framework that provides verifiable behavioral oversight for autonomous AI agents. By combining three independent authorities and generating cryptographically verifiable receipts, AgentBound establishes a deterministic governance layer between authorization and execution.

Computer Science > Artificial Intelligence

Title:AgentBound: Verifiable Behavioral Governance for Autonomous AI Agents

View PDF HTML (experimental)Abstract:Autonomous AI agents increasingly perform consequential actions on behalf of human principals, including financial transactions, external communications, and enterprise workflows. Existing agent infrastructure relies on identity federation and delegated authorization to authenticate workloads and control resource access, but it cannot determine whether an authorized action should be executed under the current behavioral and operational context.

We present AgentBound, a runtime governance framework that provides verifiable behavioral oversight for autonomous AI agents. AgentBound evaluates each proposed action using three independent authorities: delegated authorization, owner-signed behavioral constitutions, and site action contracts. Their judgments are conservatively composed through a formal decision model to determine whether an action should be permitted, reviewed, or denied before execution.

To provide accountability, AgentBound generates cryptographically verifiable governance receipts that bind every action to the exact delegation, policy, and semantic artifacts governing the decision, enabling independent replay verification and policy provenance. The framework also introduces standing delegation for long-running agents, allowing periodic workloads to operate under continuously refreshed governance policies while preserving revocability and bounded authority.

We present the formal foundation, system architecture, governance receipt protocol, and AgentBound-Bench, a benchmark framework for evaluating governance correctness, authority composition, and accountability. Rather than replacing model alignment, AgentBound complements it by providing a deterministic governance layer between authorization and execution, transforming governance from a process that must be trusted into one that can be independently verified.

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Source: arXiv cs.AI Recent

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