Multi‐scale graph capsule with influence attention for information cascades prediction
Abstract Information cascade size prediction is one of the primary challenges for
understanding the diffusion of information. Traditional feature‐based methods heavily rely …
understanding the diffusion of information. Traditional feature‐based methods heavily rely …
Remote sensing scene classification based on high-order graph convolutional network
Y Gao, J Shi, J Li, R Wang - European Journal of Remote Sensing, 2021 - Taylor & Francis
Remote sensing scene classification has gained increasing interest in remote sensing
image understanding and feature representation is the crucial factor for classification …
image understanding and feature representation is the crucial factor for classification …
Multi-stage malaria parasite recognition by deep learning
S Li, Z Du, X Meng, Y Zhang - GigaScience, 2021 - academic.oup.com
Motivation Malaria, a mosquito-borne infectious disease affecting humans and other
animals, is widespread in tropical and subtropical regions. Microscopy is the most common …
animals, is widespread in tropical and subtropical regions. Microscopy is the most common …
A literature survey of matrix methods for data science
M Stoll - GAMM‐Mitteilungen, 2020 - Wiley Online Library
Efficient numerical linear algebra is a core ingredient in many applications across almost all
scientific and industrial disciplines. With this survey we want to illustrate that numerical linear …
scientific and industrial disciplines. With this survey we want to illustrate that numerical linear …
HOT: Higher-Order Dynamic Graph Representation Learning with Efficient Transformers
Many graph representation learning (GRL) problems are dynamic, with millions of edges
added or removed per second. A fundamental workload in this setting is dynamic link …
added or removed per second. A fundamental workload in this setting is dynamic link …
KGEL: A novel end-to-end embedding learning framework for knowledge graph completion
Abstract Knowledge graphs (KGs) have recently become increasingly popular due to the
broad range of essential applications in various downstream tasks including intelligent …
broad range of essential applications in various downstream tasks including intelligent …
Higher-order truss decomposition in graphs
-truss model is a typical cohesive subgraph model and has been received considerable
attention recently. However, the-truss model only considers the direct common neighbors of …
attention recently. However, the-truss model only considers the direct common neighbors of …
Graph context-attention network via low and high order aggregation
H Xu, S Zhang, B Jiang, J Tang - Neurocomputing, 2023 - Elsevier
Graph attention networks (GATs) have been shown effectively for representation learning.
However, existing GATs only employ the first-order attention mechanism and thus fail to fully …
However, existing GATs only employ the first-order attention mechanism and thus fail to fully …
Adversary for social good: Leveraging attribute-obfuscating attack to protect user privacy on social networks
As social networks become indispensable for people's daily lives, inference attacks pose
significant threat to users' privacy where attackers can infiltrate users' information and infer …
significant threat to users' privacy where attackers can infiltrate users' information and infer …
GSASVM-RBPs: Predicting miRNA-binding protein sites with aggregated multigraph neural networks and an SVM
T Zhang, Z Qi, S Qiao, J Zhuang - Network Modeling Analysis in Health …, 2024 - Springer
RNA-binding proteins (RBPs) are a class of proteins with RNA-binding domains involved in
regulating various cellular processes, such as RNA processing, transport, splicing …
regulating various cellular processes, such as RNA processing, transport, splicing …