wassname 477380603f Global noise-floor filter on v_hack at load time
drop_bottom_frac (default 0.25): collect every S_i across every module,
take the global quantile, drop any (module, axis) where S_i is below it.
Modules whose every axis falls below the global threshold are removed
from the returned dict — projection iterates v_hack so those modules
just get skipped (proj.py: name not in v_hack -> continue).

One physically meaningful threshold, applied once, at load. Global
rather than per-module is intentional: per-module would protect the
weakest modules from filtering (they always have a top axis), defeating
the noise-floor goal. A module's "weakest" axis being weaker than the
strongest axis of a stronger module is exactly the right reason to
drop it.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-27 09:37:49 +00:00
2026-05-23 10:40:02 +08:00
2026-05-23 13:04:03 +08:00
2026-05-23 10:40:02 +08:00
2026-05-23 10:22:54 +08:00

projected_grpo

SVD-basis gradient projection vs RL reward hacking. Tests whether projecting the training gradient orthogonal to an extracted hack-direction (in the SVD-of-W basis) reduces reward-hack rate in GRPO without tanking pass rate.

Built on Ariahw, Engels & Nanda's rl-rewardhacking LeetCode benchmark. Method differs from concurrent work (Wu & Tang 2026, "Advantage Modification") by intervening at the gradient level rather than the advantage level.

See docs/spec.md, docs/brainstorm/extracted_prefs.md, and docs/papers/.

Quick start

uv sync
just fast-dev-run        # tiny-random model, ~1-2 min, real pipeline end-to-end
just smoke-vanilla       # vanilla pathway smoke
just smoke-projected     # projected pathway smoke
just download-model      # warm Qwen3-4B cache (full preset peaks ~73GB on 96GB)
just queue-full          # queue extract + 3-seed vanilla + 3-seed projected sweep

See RESEARCH_JOURNAL.md for session-by-session findings, including the 2026-05-23 grader-bug discovery that invalidated all prior gt=0 measurements and the move from Qwen3.5-2B to Qwen3-4B (reference substrate).

Hypotheses (preregistered)

See spec.md. Headline: H1 — gradient projection in SVD basis against a v_hack extracted from ~60-80 contrastive pairs reduces reward hack rate by

=30pp absolute vs vanilla GRPO at matched LeetCode pass rate (±10pp).

S
Description
Putting the E in MoE with an evil expert (can initial seeding, cause follow up unwated behaviour to absorb into a MoE)
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