English

Conceptors for Semantic Steering

Machine Learning 2026-05-07 v1 Computation and Language

Abstract

Activation-based steering provides control of LLM behavior at inference time, but the dominant paradigm reduces each concept to a single direction whose geometry is left largely unexamined. Rather than selecting a single steering direction, we use conceptors: soft projection matrices estimated from activations pooled across both poles of a bipolar concept, which preserve the concept's full multidimensional subspace. A geometric analysis shows the bipolar subspace strictly subsumes the single-vector baseline. We further show that the conceptor quota provides a parameter-free layer-selection diagnostic, predicting concept separability with Pearson correlations up to r=0.96 across three instruction-tuned models and three semantic dimensions. Beyond selection, conceptors admit a closed-form Boolean algebra (AND, OR, NOT): we evaluate conceptor compositionality on thematically related sub-concepts. Across a systematic five-axis design-space evaluation, conceptors match or outperform additive baselines at layers where concept subspaces are multi-dimensional while producing substantially fewer degenerate outputs. Conceptor steering is a geometrically principled, compositional, and practically safer alternative to single-direction steering from a limited number of contrastive pairs.

Cite

@article{arxiv.2605.04980,
  title  = {Conceptors for Semantic Steering},
  author = {Ilias Triantafyllopoulos and Young-Min Cho and Ren Tao and Miranda Muqing Miao and Sunny Rai and Lyle Ungar and Sharath Chandra Guntuku and Neville Ryant and João Sedoc},
  journal= {arXiv preprint arXiv:2605.04980},
  year   = {2026}
}
R2 v1 2026-07-01T12:52:55.199Z