Support Sufficiency as Consequence-Sensitive Compression in Belief Arbitration
Mark Walsh

TL;DR
This paper introduces a consequence-sensitive compression approach for belief arbitration, balancing support retention and resource constraints to improve adaptive control performance.
Contribution
It develops a recurrent arbitration architecture that dynamically regulates support compression based on consequence geometry and resource limitations.
Findings
Adaptive controllers outperform fixed-resolution controllers in utility.
Support regulation improves policy accuracy and learning.
Resource-aware support compression enhances robustness in belief arbitration.
Abstract
When a system commits to a hypothesis, much of the evidential structure behind that commitment is lost to compression. Standard accounts assume that selected content and scalar confidence suffice for downstream control. This paper argues that they do not, and that determining what must survive compression is itself a consequence-sensitive problem. We develop a recurrent arbitration architecture in which active constraint fields jointly determine a hypothesis geometry over candidates. Rather than carrying that geometry forward in full, the system compresses it into a support-aware control state whose resolution is regulated by current consequence geometry, arbitration memory, and resource constraints. A bounded objective formalizes the tradeoff. Too little retained support collapses policy-relevant distinctions, producing controllers that select content adequately while misrouting…
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