cs.AI updates on arXiv.org 08月20日
LLM-Enhanced Linear Autoencoders for Recommendation
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本文提出L3AE模型,首次将LLMs集成到LAE框架中,通过两阶段优化策略提升推荐系统语义表示能力,实验结果表明在三个基准数据集上性能优于现有模型。

arXiv:2508.13500v1 Announce Type: cross Abstract: Large language models (LLMs) have been widely adopted to enrich the semantic representation of textual item information in recommender systems. However, existing linear autoencoders (LAEs) that incorporate textual information rely on sparse word co-occurrence patterns, limiting their ability to capture rich textual semantics. To address this, we propose L3AE, the first integration of LLMs into the LAE framework. L3AE effectively integrates the heterogeneous knowledge of textual semantics and user-item interactions through a two-phase optimization strategy. (i) L3AE first constructs a semantic item-to-item correlation matrix from LLM-derived item representations. (ii) It then learns an item-to-item weight matrix from collaborative signals while distilling semantic item correlations as regularization. Notably, each phase of L3AE is optimized through closed-form solutions, ensuring global optimality and computational efficiency. Extensive experiments demonstrate that L3AE consistently outperforms state-of-the-art LLM-enhanced models on three benchmark datasets, achieving gains of 27.6% in Recall@20 and 39.3% in NDCG@20. The source code is available at https://github.com/jaewan7599/L3AE_CIKM2025.

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LLM 推荐系统 语义表示 L3AE 优化策略
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