SOTAVerified

Anchored Alignment: Preventing Positional Collapse in Multimodal Recommender Systems

2026-03-13Code Available0· sign in to hype

Yonghun Jeong, David Yoon Suk Kang, Yeon-Chang Lee

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Multimodal recommender systems (MMRS) leverage images, text, and interaction signals to enrich item representations. However, recent alignment based MMRSs that enforce a unified embedding space often blur modality specific structures and exacerbate ID dominance. Therefore, we propose AnchorRec, a multimodal recommendation framework that performs indirect, anchor based alignment in a lightweight projection domain. By decoupling alignment from representation learning, AnchorRec preserves each modality's native structure while maintaining cross modal consistency and avoiding positional collapse. Experiments on four Amazon datasets show that AnchorRec achieves competitive top N recommendation accuracy, while qualitative analyses demonstrate improved multimodal expressiveness and coherence. The codebase of AnchorRec is available at https://github.com/hun9008/AnchorRec.

Reproductions