core/generate
Shay d66e8ad625 feat(G1): verb-classes capability axis (ADR-0131.G.1)
Cognitive capability: extend bounded grammar to admit acquisition/action
verbs (buys, bought, collected, saved, saved-up, makes, sells) as
operation-kind entries, and pure-possession verbs (had, started, started-with)
as initial-possession anchors.

What invariant proves correctness:
- wrong == 0 across all G1 curated cases (20/20) and GSM8K probe (0 wrong/50).
- versor_condition and field invariants untouched — no algebra-path changes.
- Round-trip filter (math_roundtrip.roundtrip_admissible) unchanged.

Which CLI suite / eval proves the lane:
  pytest tests/test_adr_0131_G1_verb_classes.py — 15/15 pass
  pytest tests/test_adr_0126_runner_wiring.py — 9/9 pass (3 regressions fixed)
  pytest tests/test_adr_0131_{1,3}_*lane.py — 17/17 pass
  pytest tests/test_adr_0131_G_gsm8k_coverage_probe.py — 8/8 pass
  pytest tests/test_gsm8k_math_runner.py — 11/11 pass

Key architectural change:
  Acquisition verbs that also appear in ADD_VERBS/SUBTRACT_VERBS were
  previously listed in _INITIAL_HAS_RE, causing branch-disagreement refusals
  when a canonical 'has' initial preceded an acquisition sentence for the
  same entity.  Fix: narrow _INITIAL_HAS_RE to pure-possession anchors only
  (has/have/had/started); acquisition verbs remain exclusively in KIND_TO_VERBS.
  The solver's default-from-zero means 'Sam buys 5 apples. How many does
  Sam have?' resolves as 0+5=5 without any initial-possession candidate.
  Optional verb particle (up/down/out/...) added to _op_pattern to handle
  'saved up N', 'picked up N' etc.

No changes to binding graph, solver, verifier, or versor/CGA algebra.
No stochastic generation, approximate recall, or hidden normalization.
Trust boundaries unaffected — no new dynamic imports or user-input paths.
2026-05-23 15:39:14 -07:00
..
binding_graph feat(binding-graph): Phase 4 question-target binding (ADR-0135) (#179) 2026-05-23 11:24:49 -07:00
__init__.py
admissibility.py
articulation.py
articulation_legality.py
attention.py
bridge_trace.py
dialogue.py
discourse_planner.py
exhaustion.py
graph_constraint.py
graph_planner.py
grounding_accessors.py
intent.py
intent_bridge.py
intent_ratifier.py
math_candidate_graph.py feat(ADR-0131.G.3): numeric literals — money + hyphenated cardinals (axis lane 20/20, wrong==0) 2026-05-23 14:23:05 -07:00
math_candidate_parser.py feat(G1): verb-classes capability axis (ADR-0131.G.1) 2026-05-23 15:39:14 -07:00
math_parser.py feat(ADR-0131.3): bounded-grammar word-problem benchmark — lane PASSED 50/50 (#180) 2026-05-23 11:27:04 -07:00
math_problem_graph.py
math_realizer.py
math_roundtrip.py feat(ADR-0131.G.3.1): numerics extensions — fractions + multi-currency + multi-token cardinals + word-num-adjective 2026-05-23 15:16:46 -07:00
math_solver.py
math_symbolic_equivalence.py feat(ADR-0131.1.B): harden symbolic equivalence lane with generated corpus + exact algebra (#169) 2026-05-23 10:47:57 -07:00
math_symbolic_normalizer.py feat(ADR-0131.1.B): harden symbolic equivalence lane with generated corpus + exact algebra (#169) 2026-05-23 10:47:57 -07:00
math_verifier.py
morphology.py
ood_surface_generator.py
operators.py
perturbation_suite.py
proposition.py
realizer.py
realizer_guard.py
render.py
result.py
rotor_admissibility.py
salience.py
semantic_templates.py
stream.py
surface.py
templates.py