English

Concept Heterogeneity-aware Representation Steering

Machine Learning 2026-03-04 v1 Artificial Intelligence

Abstract

Representation steering offers a lightweight mechanism for controlling the behavior of large language models (LLMs) by intervening on internal activations at inference time. Most existing methods rely on a single global steering direction, typically obtained via difference-in-means over contrastive datasets. This approach implicitly assumes that the target concept is homogeneously represented across the embedding space. In practice, however, LLM representations can be highly non-homogeneous, exhibiting clustered, context-dependent structure, which renders global steering directions brittle. In this work, we view representation steering through the lens of optimal transport (OT), noting that standard difference-in-means steering implicitly corresponds to the OT map between two unimodal Gaussian distributions with identical covariance, yielding a global translation. To relax this restrictive assumption, we theoretically model source and target representations as Gaussian mixture models and formulate steering as a discrete OT problem between semantic latent clusters. From the resulting transport plan, we derive an explicit, input-dependent steering map via barycentric projection, producing a smooth, kernel-weighted combination of cluster-level shifts. We term this method Concept Heterogeneity-aware Representation Steering (CHaRS). Through numerous experimental settings, we show that CHaRS yields more effective behavioral control than global steering.

Keywords

Cite

@article{arxiv.2603.02237,
  title  = {Concept Heterogeneity-aware Representation Steering},
  author = {Laziz U. Abdullaev and Noelle Y. L. Wong and Ryan T. Z. Lee and Shiqi Jiang and Khoi N. M. Nguyen and Tan M. Nguyen},
  journal= {arXiv preprint arXiv:2603.02237},
  year   = {2026}
}
R2 v1 2026-07-01T10:59:48.663Z