# Wall map: the recognizer/coverage wall is COMPOSITION **Date:** 2026-06-14 **Status:** diagnostic map (the real capability lever, per the C decision — point at the recognizer/coverage wall). Evidence: committed refusal taxonomy + live lane runs + 3× prior empirical confirmation (ADR-0191/0192/0193 milestones). **Bottom line:** more single-shape recognizers are **proven metric-inert.** The wall is that shape-recognizers do not **compose** within a compound statement or across statements with coreference. The capability gain lives in compositional reading, not in widening any one shape. ## Evidence ### 1. GSM8K diagnostic — the composition signature `train_sample` serving: **4 admitted / 0 wrong / 46 refused** (8% admission). The curated refusal taxonomy (`refusal_taxonomy_v3.json`, 50 cases) shows **no single barrier exceeds 5/50 (10%)** and the barriers are fragmented across ~24 primary categories: ``` primary_barrier (top): compound_statement 5 · novel_initial_form 5 · novel_initial_verb 4 · fraction_operand 4 · conditional_question 3 · context_filler 3 · compound_comparative 3 · rate_price 2 · … (long 1-2 tail) secondary_barriers (co-occurring): compound_comparative 5 · percentage_of 5 · fraction_operand 4 · rate_price 4 · multi_step_complex 4 · rate_comparative 4 · coreference_pronoun 3 · … ``` The secondaries are the tell: refused cases **stack 3-4 structures at once** (a compound statement *with* a comparative *and* a fraction operand *and* a pronoun coreference). The two raw refusal modes confirm it: - `recognizer matched but produced no injection` (majority) — the category is recognized (`discrete_count_statement`, `rate_with_currency`, `multiplicative_aggregation`, …) but the injection layer can't structure the *composed* sentence. - `no admissible candidate` — the composed shape isn't recognized at all. ### 2. Capability lanes are narrow curated-gold conformance, not open coverage - `evals/combined_rate_oracle`: **19/19 valid**, `by_expect = {solved: 6, solver_refuses: 5, reader_refuses: 8}` — the combined-rate reader handles exactly **6 solvable shapes**; everything else it correctly refuses. It is an *oracle* (does the reader match the curated gold), not a coverage measure. - `evals/comprehension/*`: per-domain conformance runners (propositional, syllogism, set-membership, total-ordering, relational metric/predicate) — the flagship deductive lanes, each 100%-conformant to a curated gold. So each capability is a **shape-specific reader at 100% of a small gold.** Capability = gold scope. The readers are individually correct and individually narrow. ### 3. Single-shape widening is metric-inert (already proven 3×) ADR-0191/0192/0193 confirmed empirically that adding one operator/recognizer is metric-inert on the real corpus — because the refused cases need *composition*, not one more shape. This map's barrier data is the fourth confirmation. ## Diagnosis The wall is **compositional reading**: the organ recognizes individual structures (rate, fraction, comparative, count, percentage, coreference) but cannot **compose** them — combine multiple recognized sub-structures within one compound clause, and carry referents across statements. Real GSM8K problems are compositions; the readers are a bank of isolated shape-recognizers. That is why admission caps at ~8% and why every single-shape fix has been inert. ## Leverage (two tiers, honestly) - **Tier 1 — near-term recognizer coverage (small, capped):** the pure *single-barrier* misses (`novel_initial_form`/`novel_initial_verb` and a few unrecognized rates/temporals like "Every week, he gets 6 cards", "Mark does a gig every other day for 2 weeks") can be admitted by adding their recognizers. Honest estimate: **~+5 cases** (4→~9/46), then it hits the composition wall hard, because the remaining ~37 refused cases carry *multiple* co-occurring barriers that one recognizer doesn't clear. - **Tier 2 — compositional reading (the real lever):** a layer that **composes** recognized sub-structures within a compound statement and **resolves coreference** across statements, so a sentence that is rate+comparative+fraction+pronoun reads as one composed structure. This is the only path past ~10/46, and it is an architectural build (not a recognizer addition). It must preserve wrong=0 (a composed reading still passes the self-verification/disagreement gate). ## Recommendation **Do not pour effort into more isolated shape-recognizers — it is proven inert.** The capability gain is Tier 2 (compositional reading). Tier 1 is a small honest warm-up at best; I would not lead with it. Tier 2 is make-or-break and the solution space is wide (how to compose, where the composition layer sits relative to extract/clauses/compose, how coreference is resolved deterministically, how composed readings stay wrong=0). That warrants a **design effort** — multiple independent architecture attempts, judged and synthesized — before any build. Proposed as the next step, on sign-off.