Decision Quotient: A Regime-Sensitive Complexity Theory of Exact Relevance Certification
Description
Which coordinates of a decision problem can be hidden without changing the decision, and what is the coarsest exact abstraction that preserves all decision-relevant distinctions? We study this as an exact relevance-certification problem organized around the optimizer quotient. We classify how hard it is to certify this structure across three settings: static (counterexample exclusion), stochastic (conditioning and expectation), and sequential (temporal structure). In the static regime, sufficiency collapses to relevance containment, so minimum sufficiency is coNP-complete. In the stochastic regime, preservation and decisiveness separate: preservation is polynomial-time under explicit-state encoding with bridge theorems to static sufficiency and the optimizer quotient, while decisiveness is PP-hard under succinct encoding with anchor and minimum variants in NP^PP. In the sequential regime, all queries are PSPACE-complete. We also prove an encoding-sensitive contrast between explicit-state tractability and succinct-encoding hardness, derive an integrity-competence trilemma, and isolate twelve tractable subcases. A Lean 4 artifact mechanically verifies the optimizer-quotient universal property, main reductions, and finite decider core.
Files
paper4.pdf
Files
(3.7 MB)
| Name | Size | Download all |
|---|---|---|
|
md5:5bba022b82d7fa0f120a81fe2e124254
|
970.4 kB | Preview Download |
|
md5:ba73fe04e87a08754e6ba72ea7765973
|
2.7 MB | Preview Download |