A comprehensive survey on deep graph representation learning
Graph representation learning aims to effectively encode high-dimensional sparse graph-
structured data into low-dimensional dense vectors, which is a fundamental task that has …
structured data into low-dimensional dense vectors, which is a fundamental task that has …
A survey of dynamic graph neural networks
Graph neural networks (GNNs) have emerged as a powerful tool for effectively mining and
learning from graph-structured data, with applications spanning numerous domains …
learning from graph-structured data, with applications spanning numerous domains …
Tensor attention training: Provably efficient learning of higher-order transformers
Tensor Attention, a multi-view attention that is able to capture high-order correlations among
multiple modalities, can overcome the representational limitations of classical matrix …
multiple modalities, can overcome the representational limitations of classical matrix …
Alex: Towards effective graph transfer learning with noisy labels
Graph Neural Networks (GNNs) have garnered considerable interest due to their
exceptional performance in a wide range of graph machine learning tasks. Nevertheless, the …
exceptional performance in a wide range of graph machine learning tasks. Nevertheless, the …
Generalizing graph ode for learning complex system dynamics across environments
Learning multi-agent system dynamics have been extensively studied for various real-world
applications, such as molecular dynamics in biology, multi-body system prediction in …
applications, such as molecular dynamics in biology, multi-body system prediction in …
Learning graph ode for continuous-time sequential recommendation
Sequential recommendation aims at understanding user preference by capturing successive
behavior correlations, which are usually represented as the item purchasing sequences …
behavior correlations, which are usually represented as the item purchasing sequences …
Towards integrated and fine-grained traffic forecasting: A spatio-temporal heterogeneous graph transformer approach
Fine-grained traffic forecasting is crucial for the management of urban transportation
systems. Road segments and intersection turns, as vital elements of road networks, exhibit …
systems. Road segments and intersection turns, as vital elements of road networks, exhibit …
TDF-Net: Trusted Dynamic Feature Fusion Network for breast cancer diagnosis using incomplete multimodal ultrasound
Ultrasound is a critical imaging technique for diagnosing breast cancer. However, the
multimodal breast ultrasound diagnostic process is time-consuming and labor-intensive …
multimodal breast ultrasound diagnostic process is time-consuming and labor-intensive …
Cool: a conjoint perspective on spatio-temporal graph neural network for traffic forecasting
This paper investigates traffic forecasting, which attempts to forecast the future state of traffic
based on historical situations. This problem has received ever-increasing attention in …
based on historical situations. This problem has received ever-increasing attention in …
Spatio-temporal fusion and contrastive learning for urban flow prediction
Urban flow prediction is critical for urban planning, management, and safety. However,
owing to the inherent instability of urban flows, prediction accuracy requires the fusion of …
owing to the inherent instability of urban flows, prediction accuracy requires the fusion of …