Network-Based Extension of Multi-Relational Factorization Models
نویسندگان
چکیده
Complex heterogeneous networks contain many types of relations, both local to a particular entity and distant in the network. Multi-relational factorization schemes that incorporate multiple local relations have shown improved recommendation accuracy. This paper extends this prior work on multi-relational factorization to include extended relations derived from network data and demonstrates improved accuracy for these extended hybrids.
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