RESEARCHarXiv CS.AI·4/21/2026
Support Sufficiency as Consequence-Sensitive Compression in Belief Arbitration
This paper argues that evidential compression in AI systems must be consequence-sensitive, proposing a recurrent arbitration architecture that compresses hypothesis geometry into a support-aware control state. This process is regulated by consequence geometries and resource constraints to prevent the collapse of policy-relevant distinctions.
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