GRAM: Generative Recommendation via Semantic-aware Multi-granular Late Fusion
  • Lee, Sunkyung
  • Choi, Minjin
  • Choi, Eunseong
  • Kim, Hye-young
  • Lee, Jongwuk
Citations

SCOPUS

1

초록

Generative recommendation is an emerging paradigm that leverages the extensive knowledge of large language models by formulating recommendations into a text-to-text generation task. However, existing studies face two key limitations in (i) incorporating implicit item relationships and (ii) utilizing rich yet lengthy item information. To address these challenges, we propose a Generative Recommender via semantic-Aware Multi-granular late fusion (GRAM), introducing two synergistic innovations. First, we design semantic-to-lexical translation to encode implicit hierarchical and collaborative item relationships into the vocabulary space of LLMs. Second, we present multi-granular late fusion to integrate rich semantics efficiently with minimal information loss. It employs separate encoders for multi-granular prompts, delaying the fusion until the decoding stage. Experiments on four benchmark datasets show that GRAM outperforms eight state-of-the-art generative recommendation models, achieving significant improvements of 11.5-16.0% in Recall@5 and 5.3-13.6% in NDCG@5. The source code is available at https://github.com/skleee/GRAM. © 2025 Elsevier B.V., All rights reserved.

제목
GRAM: Generative Recommendation via Semantic-aware Multi-granular Late Fusion
저자
Lee, SunkyungChoi, MinjinChoi, EunseongKim, Hye-youngLee, Jongwuk
발행일
2025
유형
Conference paper
저널명
Proceedings of the Annual Meeting of the Association for Computational Linguistics
1
페이지
33294 ~ 33312