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Research PaperResearchia:202601.12468254

AntiPaSTO: Self-Supervised Steering of Moral Reasoning

Michael J. Clark

Abstract

As models grow more capable, human supervision breaks down: labels don't scale, outputs can be gamed, and training doesn't generalize. Scalable oversight requires steering methods that are internal, self-supervised, and transfer out-of-distribution; existing methods satisfy some but not all three. We introduce AntiPaSTO, which separates representations along an anti-parallel axis ($α=\pm1$ produce opposite shifts), with coherence constraints preventing collapse. Human input is minimal: two contr...

Submitted: January 12, 2026Subjects: Machine Learning; Machine Learning

Description / Details

As models grow more capable, human supervision breaks down: labels don't scale, outputs can be gamed, and training doesn't generalize. Scalable oversight requires steering methods that are internal, self-supervised, and transfer out-of-distribution; existing methods satisfy some but not all three. We introduce AntiPaSTO, which separates representations along an anti-parallel axis (α=±1α=\pm1 produce opposite shifts), with coherence constraints preventing collapse. Human input is minimal: two contrasting words inserted into template sentences, no preference labels. Using 800 such pairs on Gemma-3-1B, AntiPaSTO beats prompting baselines by 6.9×6.9\times on DailyDilemmas and maintains bidirectional control where prompting triggers refusal. Code is available at https://github.com/wassname/AntiPaSTO.

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Submission Info
Date:
Jan 12, 2026
Topic:
Machine Learning
Area:
Machine Learning
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