Recent developments in recommender systems: A survey
In this technical survey, the latest advancements in the field of recommender systems are
comprehensively summarized. The objective of this study is to provide an overview of the …
comprehensively summarized. The objective of this study is to provide an overview of the …
Dynamic graph evolution learning for recommendation
Graph neural network (GNN) based algorithms have achieved superior performance in
recommendation tasks due to their advanced capability of exploiting high-order connectivity …
recommendation tasks due to their advanced capability of exploiting high-order connectivity …
Lightnestle: quick and accurate neural sequential tensor completion via meta learning
Network operation and maintenance rely heavily on network traffic monitoring. Due to the
measurement overhead reduction, lack of measurement infrastructure, and unexpected …
measurement overhead reduction, lack of measurement infrastructure, and unexpected …
Continual Learning for Smart City: A Survey
With the digitization of modern cities, large data volumes and powerful computational
resources facilitate the rapid update of intelligent models deployed in smart cities. Continual …
resources facilitate the rapid update of intelligent models deployed in smart cities. Continual …
FIRE: Fast incremental recommendation with graph signal processing
Recommender systems are incremental in nature. Recent progresses in incremental
recommendation rely on capturing the temporal dynamics of users/items from temporal …
recommendation rely on capturing the temporal dynamics of users/items from temporal …
Handling information loss of graph convolutional networks in collaborative filtering
X Xiong, XK Li, YP Hu, YX Wu, J Yin - Information systems, 2022 - Elsevier
Collaborative filtering (CF) methods based on graph convolutional network (GCN) and
autoencoder (AE) achieve outstanding performance. But the GCN-based CF methods suffer …
autoencoder (AE) achieve outstanding performance. But the GCN-based CF methods suffer …
Accurate and explainable recommendation via review rationalization
Auxiliary information, such as reviews, have been widely adopted to improve collaborative
filtering (CF) algorithms, eg, to boost the accuracy and provide explanations. However, most …
filtering (CF) algorithms, eg, to boost the accuracy and provide explanations. However, most …
Continual Learning on Graphs: A Survey
Recently, continual graph learning has been increasingly adopted for diverse graph-
structured data processing tasks in non-stationary environments. Despite its promising …
structured data processing tasks in non-stationary environments. Despite its promising …
Neural Kalman Filtering for Robust Temporal Recommendation
Temporal recommendation methods can achieve superior accuracy due to updating
user/item embeddings continuously once obtaining new interactions. However, the …
user/item embeddings continuously once obtaining new interactions. However, the …
Hierarchical Graph Signal Processing for Collaborative Filtering
Graph Signal Processing (GSP) has proven to be a highly effective and efficient tool for
predicting user future interactions in recommender systems. However, current GSP methods …
predicting user future interactions in recommender systems. However, current GSP methods …