Abstract Knowledge Graph Embedding (KGE)-enhanced recommender systems are effective in providing accurate and personalized recommendations in diverse application …
Scholarly venue recommendation is an emerging field due to a rapid surge in the number of scholarly venues concomitant with exponential growth in interdisciplinary research and …
Recommender systems play an indispensable role in today's online businesses. In these systems, memory-based (neighborhood-based) collaborative filtering is an important …
J Chen, J Yu, W Lu, Y Qian, P Li - Information Sciences, 2021 - Elsevier
Most existing recommendation methods focus on the improvement of recommender accuracy while ignoring the influence of recommended explanation. Recommender …
Recommender systems are widely used on the Internet as tools for data analysis, processing and discovery. Traditional recommendation algorithms mostly exploit rating …
Latent factor-based methods have been extensively employed in recommender systems to project users and items to the same feature space and use the dot product for predicting …
Deep learning-based collaborative filtering methods are studied in recommendation systems as efficient feature mapping techniques. The aim of these methods is to project the …
Various recommender systems (RSs) have been developed over recent years, and many of them have concentrated on English content. Thus, the majority of RSs from the literature …
A Li, B Yang, H Huo, FK Hussain - Information Sciences, 2021 - Elsevier
Collaborative filtering (CF) is one of the dominant techniques used in recommender systems. Most CF-based methods treat every user (or item) as an isolated existence, without …