Graph Representation Learning
Will Hamilton · Rianne van den Berg · Michael Bronstein · Stefanie Jegelka · Thomas Kipf · Jure Leskovec · Renjie Liao · Yizhou Sun · Petar Veličković

Fri Dec 13th 08:00 AM -- 06:00 PM @ West Exhibition Hall A
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Graph-structured data is ubiquitous throughout the natural and social sciences, from telecommunication networks to quantum chemistry. Building relational inductive biases into deep learning architectures is crucial if we want systems that can learn, reason, and generalize from this kind of data. Furthermore, graphs can be seen as a natural generalization of simpler kinds of structured data (such as images), and therefore, they represent a natural avenue for the next breakthroughs in machine learning.

Recent years have seen a surge in research on graph representation learning, including techniques for deep graph embeddings, generalizations of convolutional neural networks to graph-structured data, and neural message-passing approaches inspired by belief propagation. These advances in graph neural networks and related techniques have led to new state-of-the-art results in numerous domains, including chemical synthesis, 3D-vision, recommender systems, question answering, and social network analysis.

The workshop will consist of contributed talks, contributed posters, and invited talks on a wide variety of methods and problems related to graph representation learning. We will welcome 4-page original research papers on work that has not previously been published in a machine learning conference or workshop. In addition to traditional research paper submissions, we will also welcome 1-page submissions describing open problems and challenges in the domain of graph representation learning. These open problems will be presented as short talks (5-10 minutes) immediately preceding a coffee break to facilitate and spark discussions.

The primary goal for this workshop is to facilitate community building; with hundreds of new researchers beginning projects in this area, we hope to bring them together to consolidate this fast-growing area of graph representation learning into a healthy and vibrant subfield.

08:45 AM Opening remarks <span> <a href="#"></a> </span> Will Hamilton
09:00 AM Invited talk: Marco Gori (Invited Talk) Marco Gori
09:30 AM Invited talk: Marinka Zitnik (Talk) Marinka Zitnik
10:00 AM Open Challenges - Spotlight Presentations (Spotlight) cuent Sumba Toral, Haggai Maron, Arinbjörn Kolbeinsson
10:30 AM Coffee Break (Break)
11:00 AM Invited talk: Andrew McCallum (Talk) Andrew McCallum
11:30 AM Poster Session #1 (Poster Session)
Sophia Sanborn, Huaxiu Yao, Chen Cai, Tony Duan, Lin Shao, Davide Belli, Amit Boyarski, Zack Ye, Arindam Sarkar, MAHMOUD KHADEMI, Guangtao Wang, Yunlong Wang, Yuexin Wu, Chaitanya K Joshi, Joey Bose, Jiaqi Ma, Marc Brockschmidt, Daniele Zambon, Colin Graber, Xavier Glorot, Christopher Cameron, Binxuan Huang, Yunzhu Li, Jianing Sun, Guillaume SALHA, Marin Vlastelica Pogančić, Binxuan Huang
12:30 PM Lunch (Break)
01:30 PM Outstanding Contribution Talk #1 (Talk)
01:45 PM Outstanding Contribution Talk #2 (Talk)
02:00 PM Outstanding Contribution Talk #3 (Talk)
02:15 PM Invited talk: Tommi Jaakkola (Talk) Tommi Jaakkola
02:45 PM Discussion Panel: Graph Neural Networks and Combinatorial Optimization (Discussion Panel)
03:15 PM Poster Session #2 (Poster Session)
Fabrizio Frasca, Petar Veličković, Hao Xu, Lei Chen, Pengyu Cheng, Ines Chami, Dongkwan Kim, Guilherme Gomes, Lukasz Maziarka, Jessica Hoffmann, Ron Levie, Antonia Gogoglou, Shunwang Gong, Wenlin Wang, Yan Leng, Weihua Hu, LOUIS TIAO, Daniel Flam-Shepherd, Li Zhang, MAHMOUD KHADEMI, Shih-Yang Su, mariana vargas vieyra, Osman Malik, Vikas Verma, Joey Bose, Aleksandar Stanic, Chia-Cheng Liu, Elahe Ghalebi, Pierluca D'Oro
04:15 PM Invited talk: Bistra Dilkina (Talk) Bistra Dilkina
04:45 PM Invited talk: Peter Battaglia (Talk) Peter Battaglia
05:15 PM Closing Remarks <span> <a href="#"></a> </span> Will Hamilton, Renjie Liao, Yizhou Sun, Petar Veličković, Jure Leskovec, Stefanie Jegelka, Michael Bronstein, Thomas Kipf, Rianne van den Berg

Author Information

Will Hamilton (McGill)
Rianne van den Berg (Google Brain)
Michael Bronstein (USI)
Stefanie Jegelka (MIT)
Thomas Kipf (University of Amsterdam)
Jure Leskovec (Stanford University and Pinterest)
Renjie Liao (University of Toronto)
Yizhou Sun (UCLA)
Petar Veličković (DeepMind)

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