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"map_content": "7) A simple workable pipeline\n- Evidence aggregator A: E \u2192 score vector s over candidate allocations (likelihood ratios or fuzzy degrees).\n- Calibration from D: thresholds \u03c4(D), admissibility weights w(D), and constraint set C(D) (what allocations are legally permissible).\n- Decision rule: pick O* = argmax s subject to C(D), and require s_best \u2212 s_next \u2265 \u03c4(D). If not met, output Undetermined or \u201cinsufficient proof.\u201d For co-ownership, allocate shares proportional to normalized scores subject to legal constraints.",
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