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FACE: A General Framework for Mapping Collaborative Filtering Embeddings into LLM Tokens

17 October 2025
Chao Wang
Yixin Song
Jinhui Ye
Chuan Qin
Dazhong Shen
Lingfeng Liu
X. Wang
Yanyong Zhang
    CVBM
ArXiv (abs)PDFHTMLGithub (3★)
Main:10 Pages
6 Figures
Bibliography:4 Pages
10 Tables
Appendix:14 Pages
Abstract

Recently, large language models (LLMs) have been explored for integration with collaborative filtering (CF)-based recommendation systems, which are crucial for personalizing user experiences. However, a key challenge is that LLMs struggle to interpret the latent, non-semantic embeddings produced by CF approaches, limiting recommendation effectiveness and further applications. To address this, we propose FACE, a general interpretable framework that maps CF embeddings into pre-trained LLM tokens. Specifically, we introduce a disentangled projection module to decompose CF embeddings into concept-specific vectors, followed by a quantized autoencoder to convert continuous embeddings into LLM tokens (descriptors). Then, we design a contrastive alignment objective to ensure that the tokens align with corresponding textual signals. Hence, the model-agnostic FACE framework achieves semantic alignment without fine-tuning LLMs and enhances recommendation performance by leveraging their pre-trained capabilities. Empirical results on three real-world recommendation datasets demonstrate performance improvements in benchmark models, with interpretability studies confirming the interpretability of the descriptors. Code is available inthis https URL.

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