Refine and Purify: Orthogonal Basis Optimization with Null-Space Denoising for Conditional Representation Learning
Abstract
Conditional representation learning aims to extract criterion-specific features for customized tasks. Recent studies project universal features onto the conditional feature subspace spanned by an LLM-generated text basis to obtain conditional representations. However, such methods face two key limitations: sensitivity to subspace basis and vulnerability to inter-subspace interference. To address these challenges, we propose OD-CRL, a novel framework integrating Adaptive Orthogonal Basis Optimization (AOBO) and Null-Space Denoising Projection (NSDP). Specifically, AOBO constructs orthogonal semantic bases via singular value decomposition with a curvature-based truncation. NSDP suppresses non-target semantic interference by projecting embeddings onto the null space of irrelevant subspaces. Extensive experiments conducted across customized clustering, customized classification, and customized retrieval tasks demonstrate that OD-CRL achieves a new state-of-the-art performance with superior generalization.
Cite
@article{arxiv.2602.05464,
title = {Refine and Purify: Orthogonal Basis Optimization with Null-Space Denoising for Conditional Representation Learning},
author = {Jiaquan Wang and Yan Lyu and Chen Li and Yuheng Jia},
journal= {arXiv preprint arXiv:2602.05464},
year = {2026}
}