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Main Authors: Jeon, Minseo, Jung, Junwoo, Gwak, Daewon, Jung, Jinhong
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.02653
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author Jeon, Minseo
Jung, Junwoo
Gwak, Daewon
Jung, Jinhong
author_facet Jeon, Minseo
Jung, Junwoo
Gwak, Daewon
Jung, Jinhong
contents Can we design effective recommender systems free from users, IDs, and GNNs? Recommender systems are central to personalized content delivery across domains, with top-K item recommendation being a fundamental task to retrieve the most relevant items from historical interactions. Existing methods rely on entrenched design conventions, often adopted without reconsideration, such as storing per-user embeddings (user-dependent), initializing features from raw IDs (ID-dependent), and employing graph neural networks (GNN-dependent). These dependencies incur several limitations, including high memory costs, cold-start and over-smoothing issues, and poor generalization to unseen interactions. In this work, we propose AlphaFree, a novel recommendation method free from users, IDs, and GNNs. Our main ideas are to infer preferences on-the-fly without user embeddings (user-free), replace raw IDs with language representations (LRs) from pre-trained language models (ID-free), and capture collaborative signals through augmentation with similar items and contrastive learning, without GNNs (GNN-free). Extensive experiments on various real-world datasets show that AlphaFree consistently outperforms its competitors, achieving up to around 40% improvements over non-LR-based methods and up to 5.7% improvements over LR-based methods, while significantly reducing GPU memory usage by up to 69% under high-dimensional LRs.
format Preprint
id arxiv_https___arxiv_org_abs_2603_02653
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AlphaFree: Recommendation Free from Users, IDs, and GNNs
Jeon, Minseo
Jung, Junwoo
Gwak, Daewon
Jung, Jinhong
Information Retrieval
Artificial Intelligence
Can we design effective recommender systems free from users, IDs, and GNNs? Recommender systems are central to personalized content delivery across domains, with top-K item recommendation being a fundamental task to retrieve the most relevant items from historical interactions. Existing methods rely on entrenched design conventions, often adopted without reconsideration, such as storing per-user embeddings (user-dependent), initializing features from raw IDs (ID-dependent), and employing graph neural networks (GNN-dependent). These dependencies incur several limitations, including high memory costs, cold-start and over-smoothing issues, and poor generalization to unseen interactions. In this work, we propose AlphaFree, a novel recommendation method free from users, IDs, and GNNs. Our main ideas are to infer preferences on-the-fly without user embeddings (user-free), replace raw IDs with language representations (LRs) from pre-trained language models (ID-free), and capture collaborative signals through augmentation with similar items and contrastive learning, without GNNs (GNN-free). Extensive experiments on various real-world datasets show that AlphaFree consistently outperforms its competitors, achieving up to around 40% improvements over non-LR-based methods and up to 5.7% improvements over LR-based methods, while significantly reducing GPU memory usage by up to 69% under high-dimensional LRs.
title AlphaFree: Recommendation Free from Users, IDs, and GNNs
topic Information Retrieval
Artificial Intelligence
url https://arxiv.org/abs/2603.02653