SkepticalSam
Features as Rewards: Scalable Supervision for Open-Ended Tasks via Interpretability
Features as Rewards: Scalable Supervision for Open-Ended Tasks via Interpretability
Published: 12 May 2026 · Updated: 13 July 2026
Read the original sourceThe Critique
Features used as rewards are extracted from same model being trained - circular feedback loop reinforcing existing patterns. No validation that features capture correct answers vs merely confident ones.
Why It Matters
If features encode existing biases, method systematically reinforces confident-but-wrong behaviors in ways undetectable by standard evaluation.