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arXiv 提交日期: 2026-02-05
📄 Abstract - Aspect-Aware MOOC Recommendation in a Heterogeneous Network

MOOC recommendation systems have received increasing attention to help learners navigate and select preferred learning content. Traditional methods such as collaborative filtering and content-based filtering suffer from data sparsity and over-specialization. To alleviate these limitations, graph-based approaches have been proposed; however, they still rely heavily on manually predefined metapaths, which often capture only superficial structural relationships and impose substantial burdens on domain experts as well as significant engineering costs. To overcome these limitations, we propose AMR (Aspect-aware MOOC Recommendation), a novel framework that models path-specific multiple aspects by embedding the semantic content of nodes within each metapath. AMR automatically discovers metapaths through bi-directional walks, derives aspect-aware path representations using a bi-LSTM-based encoder, and incorporates these representations as edge features in the learner-learner and KC-KC subgraphs to achieve fine-grained semantically informed KC recommendations. Extensive experiments on the large-scale MOOCCube and PEEK datasets show that AMR consistently outperforms state-of-the-art graph neural network baselines across key metrics such as HR@K and nDCG@K. Further analysis confirms that AMR effectively captures rich path-specific aspect information, allowing more accurate recommendations than those methods that rely solely on predefined metapaths. The code will be available upon accepted.

顶级标签: machine learning systems data
详细标签: recommendation systems graph neural networks heterogeneous networks mooc representation learning 或 搜索:

异构网络中的方面感知慕课推荐 / Aspect-Aware MOOC Recommendation in a Heterogeneous Network


1️⃣ 一句话总结

这篇论文提出了一种名为AMR的新框架,它能自动发现并利用慕课异构网络中的多维度语义信息,从而更准确地为学习者推荐学习内容,效果优于现有主流方法。

源自 arXiv: 2602.05297