6533b82efe1ef96bd1293d0a
RESEARCH PRODUCT
Improving Serendipity and Accuracy in Cross-Domain Recommender Systems
Shuaiqiang WangDenis KotkovJari Veijalainensubject
Focus (computing)data collectionInformation retrievalData collectionSerendipityComputer sciencesuosittelujärjestelmätserendipity02 engineering and technologyRecommender systemDomain (software engineering)Term (time)collaborative filtering020204 information systemscross-domain recommendations0202 electrical engineering electronic engineering information engineeringCollaborative filteringcontent-based filtering020201 artificial intelligence & image processingSet (psychology)description
Cross-domain recommender systems use information from source domains to improve recommendations in a target domain, where the term domain refers to a set of items that share attributes and/or user ratings. Most works on this topic focus on accuracy but disregard other properties of recommender systems. In this paper, we attempt to improve serendipity and accuracy in the target domain with datasets from source domains. Due to the lack of publicly available datasets, we collect datasets from two domains related to music, involving user ratings and item attributes. We then conduct experiments using collaborative filtering and content-based filtering approaches for the purpose of validation. According to our results, the source domain can improve serendipity in the target domain for both approaches. The source domain decreases accuracy for contentbased filtering and increases accuracy for collaborative filtering. The improvement of accuracy decreases with the growth of non-overlapping items in different domains. peerReviewed
year | journal | country | edition | language |
---|---|---|---|---|
2017-01-01 |