Recommender systems are popularly used to deal with an information overload issue. Existing systems mainly focus on user–item interactions and semantic information derived from metadata of users and items to improve recommendation accuracy. Item images provide useful information to infer users’ individual preferences, especially for those domains where visual factors are influential such as fashion items. However, this type of information has been ignored by most previous work. To bridge this gap and meet the requirements of performance from the aspects of Accuracy, Scalability, and Explainability evaluation metrics, this paper proposes a scalable and explainable visually-aware recommender system framework called SEV-RS. This framework cont...
University of Technology Sydney. Faculty of Engineering and Information Technology.Personalized reco...
Recommender systems refer to information filtering systems that seek to understand user preferences ...
Recommender systems use advanced analytic and learning techniques to select relevant information fro...
The aim of explainable recommendation is not only to provide recommended items to users, but also to...
Conventional recommendation models often use the user-item interaction matrix (e.g. ratings) to pred...
According to the expansion of users and the variety of products in the World Wide Web, users have be...
Modeling and predicting user behavior in recommender systems are challenging as there are various ty...
Recommender systems have been playing an increasingly important role in our daily life due to the ex...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
Collaborative filtering-based approaches typically use structured signals, such as likes, clicks, an...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
We describe the Universal Recommender, a recommender system for semantic datasets that generalizes d...
In contrast with centralized recommender systems, social recommendation algorithm is applied to the ...
Content-based semantics-driven recommender systems are often used in the small-scale news recommenda...
Recommender systems are the backbones of a variety of critical services provided by tech-heavy appli...
University of Technology Sydney. Faculty of Engineering and Information Technology.Personalized reco...
Recommender systems refer to information filtering systems that seek to understand user preferences ...
Recommender systems use advanced analytic and learning techniques to select relevant information fro...
The aim of explainable recommendation is not only to provide recommended items to users, but also to...
Conventional recommendation models often use the user-item interaction matrix (e.g. ratings) to pred...
According to the expansion of users and the variety of products in the World Wide Web, users have be...
Modeling and predicting user behavior in recommender systems are challenging as there are various ty...
Recommender systems have been playing an increasingly important role in our daily life due to the ex...
Our increasing reliance on complex algorithms for recommendations calls for models and methods for e...
Collaborative filtering-based approaches typically use structured signals, such as likes, clicks, an...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
We describe the Universal Recommender, a recommender system for semantic datasets that generalizes d...
In contrast with centralized recommender systems, social recommendation algorithm is applied to the ...
Content-based semantics-driven recommender systems are often used in the small-scale news recommenda...
Recommender systems are the backbones of a variety of critical services provided by tech-heavy appli...
University of Technology Sydney. Faculty of Engineering and Information Technology.Personalized reco...
Recommender systems refer to information filtering systems that seek to understand user preferences ...
Recommender systems use advanced analytic and learning techniques to select relevant information fro...