Extracting Implicit Social Relation for Social Recommendation Techniques in User Rating Prediction
Seyed Mohammad Taheri, Hamidreza Mahyar, Mohammad Firouzi, Elahe, Ghalebi K., Radu Grosu, Ali Movaghar

TL;DR
This paper introduces a novel method called Hell-TrustSVD that extracts implicit social relations from user ratings using Hellinger distance and incorporates them into social recommendation models, improving rating prediction accuracy.
Contribution
It presents the first extension of TrustSVD using implicit social trust derived from user ratings, demonstrating comparable or better performance without explicit trust data.
Findings
Implicit social relations perform similarly to explicit trust scores.
Incorporating implicit trust improves rating prediction accuracy.
Hell-TrustSVD outperforms state-of-the-art methods in experiments.
Abstract
Recommendation plays an increasingly important role in our daily lives. Recommender systems automatically suggest items to users that might be interesting for them. Recent studies illustrate that incorporating social trust in Matrix Factorization methods demonstrably improves accuracy of rating prediction. Such approaches mainly use the trust scores explicitly expressed by users. However, it is often challenging to have users provide explicit trust scores of each other. There exist quite a few works, which propose Trust Metrics to compute and predict trust scores between users based on their interactions. In this paper, first we present how social relation can be extracted from users' ratings to items by describing Hellinger distance between users in recommender systems. Then, we propose to incorporate the predicted trust scores into social matrix factorization models. By analyzing…
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