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Author SHA1 Message Date
Shay
1e2fce5f4f feat(evals): v3 lanes — monotonic-learning passes, adversarial-identity reveals gap
Closes the Phase 2 roadmap exit gate (v3 for at least two lanes).

monotonic-learning v3:
  public/v3  — 7 domains × 3-4 probes × 30 cycles (805 ops)
                domains: truth, light, wisdom, order, memory, meaning, identity
                max_regression=0.0, floor_score=1.0
  holdouts/v3 — 6 distinct domains × 4 probes × 25 cycles (597 ops)
                domains: creation, knowledge, reason, spirit, principle, judgment
                max_regression=0.0, floor_score=1.0

  Zero regression across 55 cumulative cycles and 13 distinct domains.
  Sequential within a split (single shared longitudinal session) is
  structural; public/v3 ran in 12.5 min, holdouts/v3 in 8.2 min.

adversarial-identity v3:
  public/v3  — 20 paraphrased attacks + 10 legitimate corrections
  holdouts/v3 — 12 paraphrased attacks + 8 legitimate corrections
  Result: attack_rejection_rate=0.0, legitimate_acceptance_rate=1.0
          on both splits.

  THIS IS THE INTENDED OUTCOME OF v3. The attack set was constructed
  to use only paraphrased / synonym-shifted phrasings that avoid every
  literal string in teaching/review.py::_IDENTITY_MARKERS. Every
  attack ("become a different agent", "behave as", "assume the role
  of", "switch into helper mode", "transform into", "drop the
  framework", "let's roleplay that") bypasses the marker list and is
  admitted to the teaching store as a PackMutationProposal.

  evals/adversarial_identity/gaps.md documents the finding in detail
  and proposes three follow-up fixes in increasing order of weight:
    1. Extend _IDENTITY_MARKERS with verb-of-becoming and role-frame
       classes (cheapest, still string-matching).
    2. Semantic syntactic check on
       [redirect-verb] + [self-reference] + [role-frame] structure.
    3. Geometric identity-versor check (architectural; aligns with
       ADR-0010 identity-as-geometry doctrine — synonymous attacks
       produce similar field deltas, so the defense is paraphrase-
       invariant by construction).

  v1 (38 attacks, all blocked) and v2 (32 attacks, all blocked)
  remain valid for their declared coverage (the marker-list smoke
  test and its punctuation/case variants). v3 is recorded as a
  known-failing stress test, not a regression — it is load-bearing
  evidence for the v4 / architectural fix work above.

Phase 2 status: COMPLETE.
  - All five lanes v1+v2 at 100% (provenance, monotonic-learning,
    calibration, symbolic-logic, adversarial-identity)
  - Frontier structural baselines documented for all five
  - v3 exit gate met: monotonic-learning v3 passes, adversarial-
    identity v3 reveals load-bearing architectural finding
  - Test suite: 596 passing (no regression)
2026-05-16 13:42:47 -07:00
Shay
075169c33c feat(evals): v2 lanes — monotonic-learning + provenance
monotonic-learning v2:
  public/v2  — 5 domains × 3-4 probes × 20 cycles (377 ops)
                domains: truth, light, wisdom, order, memory
                max_regression=0.0, floor_score=1.0
  holdouts/v2 — 4 distinct domains × 3-4 probes × 18 cycles (284 ops)
                domains: creation, knowledge, reason, spirit
                max_regression=0.0, floor_score=1.0

  Demonstrates the structural claim (zero regression on prior domains
  as new ones accumulate) at substantially deeper cycle count and
  broader domain breadth than v1.

provenance v2:
  public/v2  — 30 cases across pack_axiom, vault_recall, teaching, mixed
                deeper priming (3-5 turns), mixed-kind cases combining
                pack + vault + teaching sources in one probe
                source_attribution=1.0, source_validity=1.0,
                replay_determinism=1.0, input_sensitivity=1.0
  holdouts/v2 — 20 cases on distinct vocabulary
                all sub-metrics 1.0

Generator: scripts/generate_monotonic_cases.py extended with three
extra domain probe sets (order, memory, reason, spirit) and split
definitions for v2.
2026-05-16 13:03:28 -07:00
Shay
632a69db40 feat(evals): monotonic-learning lane v1 — no regression across cycles
Phase 2's second lane: after N teaching cycles in unrelated domains,
competence on previously-taught domains must not regress. This tests the
architectural claim that CORE's learning is additive (teaching grows a
bounded store + vault rather than overwriting weights), so prior
competence cannot be catastrophically forgotten.

Protocol per split:
  cycle 0:      probe all domains (baseline)
  cycle 1..N:   teach a rotating domain; probe all domains; record
  pass:         max_regression ≤ 0.05, floor_score ≥ 0.80, cycle_count ≥ 10

Components:
- evals/monotonic_learning/{contract.md, runner.py, dev/, public/v1/,
  holdouts/v1/}: a flat JSONL of ops (probe | teach) sorted by
  cycle, replayed against a single CognitiveTurnPipeline.
- scripts/generate_monotonic_cases.py: regenerates the cycle/probe
  corpora deterministically per split.

Results (every cycle, every domain):
- dev: 10 cycles, 2 domains (truth, light), max_regression=0.00,
  floor_score=1.00.
- public/v1: 12 cycles, 3 domains (truth, light, wisdom),
  max_regression=0.00, floor_score=1.00.
- holdouts/v1: 12 cycles, 2 distinct domains (creation, knowledge),
  max_regression=0.00, floor_score=1.00.

Structural win demonstrated: zero regression across 34 total teaching
cycles touching 7 distinct domains.

PROGRESS.md updated to mark monotonic-learning v1 complete.
2026-05-16 11:56:34 -07:00