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An Approach to Semantic-Aware Heterogeneous Network Embedding for Recommender Systems.

Phu Pham, Loan T T Nguyen, Ngoc-Thanh Nguyen

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    This study introduces SemHE4Rec, a new method for heterogeneous information network (HIN) recommendations that combines structural and semantic information. The approach enhances recommendation performance by jointly learning user and item representations.

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    Area of Science:

    • Computer Science
    • Artificial Intelligence
    • Data Mining

    Background:

    • Heterogeneous Information Networks (HINs) face challenges in recommendation systems due to data heterogeneity, particularly with unstructured user and item content.
    • Existing HIN embedding methods struggle to effectively integrate diverse data types for improved recommendations.

    Purpose of the Study:

    • To propose a novel semantic-aware HIN embedding-based recommendation approach, SemHE4Rec, addressing data heterogeneity challenges.
    • To develop a model that effectively learns representations from both structural and semantic information in HINs.

    Main Methods:

    • Introduced SemHE4Rec, a model employing two embedding techniques: co-occurrence representation learning (CoRL) using meta-path random walks and heterogeneous Skip-gram, and semantic-aware representation learning (SRL) for unstructured content.
    • Integrated learned user and item representations with an extended matrix factorization (MF) process for joint optimization.

    Main Results:

    • SemHE4Rec demonstrated superior performance compared to state-of-the-art HIN embedding recommendation techniques on real-world datasets.
    • The study confirmed that combining text-based (semantic) and co-occurrence-based (structural) representation learning significantly boosts recommendation accuracy.

    Conclusions:

    • The proposed SemHE4Rec model effectively addresses data heterogeneity in HINs by integrating structural and semantic information.
    • Joint representation learning is crucial for enhancing the performance of HIN embedding-based recommendation systems.