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DLG-KDD 2022 : The Eighth International Workshop on Deep Learning on Graphs: Methods and Applications (DLG-KDD‘22) | |||||||||||||||
Link: https://deep-learning-graphs.bitbucket.io/dlg-kdd22/index.html | |||||||||||||||
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Call For Papers | |||||||||||||||
This workshop aims to bring together both academic researchers and industrial practitioners from different backgrounds to discuss a wide range of topics of emerging importance for GNN, including 1) the deep understanding of basic concepts and theory of GNNs; 2) major recent advances of GNNs research with the state-of-the-art algorithms; and 3) explore novel research opportunities of GNNs and how to use or even design GNNs algorithms for real-world applications. The foundation and advanced problems include but not limited to:
Representation learning on graphs Graph neural networks on node classification, graph classification, link prediction The expressive power of Graph neural networks Scalable methods for large graphs Interpretability in Graph Neural Networks Graph Neural Networks: adversarial robustness Graph neural networks for graph matching Graph structure learning Dynamic/incremental graph-embedding Learning representation on heterogeneous networks, knowledge graphs Deep generative models for graph generation/semantic-preserving transformation Graph Neural Networks: AutoML Graph2seq, graph2tree, and graph2graph models Deep reinforcement learning on graphs Self-supervised learning on graphs Spatial and temporal graph prediction and generation. And with particular focuses but not limited to these application domains: Graph Neural Networks in Modern Recommender Systems Graph Neural Networks for Automated planning in Urban Intelligences Learning and reasoning (machine reasoning, inductive logic programming, theory proving) Natural language processing (information extraction, semantic parsing (AMR, SQL), text generation, machine comprehension) Bioinformatics (drug discovery, protein generation, protein structure prediction) Graph Neural Networks Program synthesis and analysis and software mining Graph Neural Networks for Automated planning Reinforcement learning (multi-agent learning, compositional imitation learning) Financial security (Anti-Money Laundering) Computer vision (object relation reasoning, graph-based representations for segmentation/tracking) Deep learning in neuroscience (brain network modeling and prediction) Cybersecurity (authentication graph, Internet of Things, malware propagation) Geographical network modeling and prediction (Transportation and mobility networks, Internet, mobile phone networks, power grids, social and contact networks) Circuit network design, prediction, and defense |
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