A Novel Recommendation Model Regularized with User Trust and Item
Ratings
Abstract
We propose TrustSVD, a trust-based matrix factorization technique for recommendations.
TrustSVD integrates multiple information sources into the recommendation model in order to reduce the data sparsity
and cold start problems and their degradation of recommendation performance. An analysis of social trust data from four real-world data sets
suggests that not only the explicit but also the implicit influence of both ratings and trust should
be taken into consideration in a recommendation model. TrustSVD therefore builds on top of a
state-of-the-art recommendation algorithm,
SVD++ (which uses the explicit and implicit influence of rated items), by
further incorporating both the explicit and implicit influence of trusted and trusting users on the
prediction of items for an
active user.
The proposed technique is the first to extend SVD++ with social trust information. Experimental results on
the four data sets demonstrate that TrustSVD achieves better accuracy than
other ten counterpartsrecommendation techniques.
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