A survey on hypergraph representation learning
Hypergraphs have attracted increasing attention in recent years thanks to their flexibility in
naturally modeling a broad range of systems where high-order relationships exist among …
naturally modeling a broad range of systems where high-order relationships exist among …
Consrec: Learning consensus behind interactions for group recommendation
Since group activities have become very common in daily life, there is an urgent demand for
generating recommendations for a group of users, referred to as group recommendation …
generating recommendations for a group of users, referred to as group recommendation …
Hypergef: A framework enabling efficient fusion for hypergraph neural network on gpus
Abstract Hypergraph Neural Network (HyperGNN) is an emerging type of Graph Neural
Networks (GNNs) that can utilize hyperedges to model high-order relationships among …
Networks (GNNs) that can utilize hyperedges to model high-order relationships among …
Dynamic hypergraph convolutional network for multimodal sentiment analysis
Multimodal sentiment analysis (MSA) aims to detect the sentiments from language (text),
audio, and visual (facial expressions) modalities. The main challenge in MSA is how to …
audio, and visual (facial expressions) modalities. The main challenge in MSA is how to …
Jdsearch: A personalized product search dataset with real queries and full interactions
Recently, personalized product search attracts great attention and many models have been
proposed. To evaluate the effectiveness of these models, previous studies mainly utilize the …
proposed. To evaluate the effectiveness of these models, previous studies mainly utilize the …
Text Matching Indexers in Taobao Search
Product search is an important service on Taobao, the largest e-commerce platform in
China. Through this service, users can easily find products relevant to their specific needs …
China. Through this service, users can easily find products relevant to their specific needs …
Multi-channel hypergraph topic neural network for clinical treatment pattern mining
Recently, increasing attention has been paid to mining clinical treatment patterns from
electronic medical records (EMRs), which provide physicians with explicit knowledge to …
electronic medical records (EMRs), which provide physicians with explicit knowledge to …
Multi-view contrastive learning hypergraph neural network for drug-microbe-disease association prediction
Identifying the potential associations among drugs, microbes, and diseases is of great
significance in exploring the pathogenesis and improving precision medicine. There are …
significance in exploring the pathogenesis and improving precision medicine. There are …
E-commerce Search via Content Collaborative Graph Neural Network
Recently, many E-commerce search models are based on Graph Neural Networks (GNNs).
Despite their promising performances, they are (1) lacking proper semantic representation of …
Despite their promising performances, they are (1) lacking proper semantic representation of …
A multi-modal hypergraph neural network via parametric filtering and feature sampling
In the real world, relationships between objects are often complex, involving multiple
variables and modes. Hypergraph neural networks possess the capability to capture and …
variables and modes. Hypergraph neural networks possess the capability to capture and …