scispace - formally typeset
Y

Yue Shi

Researcher at Yahoo!

Publications -  45
Citations -  3082

Yue Shi is an academic researcher from Yahoo!. The author has contributed to research in topics: Collaborative filtering & Recommender system. The author has an hindex of 21, co-authored 44 publications receiving 2653 citations. Previous affiliations of Yue Shi include Delft University of Technology.

Papers
More filters
Journal ArticleDOI

Collaborative Filtering beyond the User-Item Matrix: A Survey of the State of the Art and Future Challenges

TL;DR: A comprehensive introduction to a large body of research, more than 200 key references, is provided, with the aim of supporting the further development of recommender systems exploiting information beyond the U-I matrix.
Proceedings ArticleDOI

CLiMF: learning to maximize reciprocal rank with collaborative less-is-more filtering

TL;DR: This paper proposes a new CF approach, Collaborative Less-is-More Filtering (CLiMF), where the model parameters are learned by directly maximizing the Mean Reciprocal Rank (MRR), which is a well-known information retrieval metric for measuring the performance of top-k recommendations.
Proceedings ArticleDOI

List-wise learning to rank with matrix factorization for collaborative filtering

TL;DR: A ranking approach for collaborative filtering that combines a list-wise learning-to-rank algorithm with matrix factorization (MF) and is analytically shown to be linear with the number of observed ratings for a given user-item matrix.
Proceedings ArticleDOI

TFMAP: optimizing MAP for top-n context-aware recommendation

TL;DR: This paper proposes TFMAP, a model that directly maximizes Mean Average Precision with the aim of creating an optimally ranked list of items for individual users under a given context, and presents a fast learning algorithm that exploits several intrinsic properties of average precision to improve the learning efficiency, and to ensure its scalability.
Book ChapterDOI

Cross-Domain Collaborative Filtering with Factorization Machines

TL;DR: This work builds on the assumption that different patterns characterize the way that users interact with i.e., rate or download items of a certain type e.g., movies or books to allow interaction information from an auxiliary domain to inform recommendation in a target domain.