Posts by Temporal Graph Learning Reading Group
This week at the reading group, April 16th, 11am EDT/ 5pm CEST, we are happy to welcome Vinay Sharma (EPFL), who will present A physics-informed graph neural network conserving linear and angular momentum for dynamical systems (Nature Communications 2026)
zoom link on website 🙂
This week at the reading group, thursday, April 2nd, 11am EDT/ 5pm CEST, we are happy to welcome Vahid Jalili, who will present The Temporal Graph of Bitcoin Transactions (NeurIPS 2025)
zoom link on our website
🐰
Hello, we have no reading group this week. We will be back with The Temporal Graph of Bitcoin Transactions (NeurIPS 2025), next week, april 2nd. 🌞
This week at the reading group, March 19th 11am EDT (4pm EDT!), we are happy to welcome Abigail J. Hayes and Tobias Schumacher (University of Mannheim), who will present:
What Do Temporal Graph Learning Models Learn?
See you on zoom (link on our website)🥳
⏰Time-zone info: Canada already switched to EDT, Europe is still on winter time. See you Thu, Mar 12th, 11amEDT/4pmCET.
We’re happy to welcome Veronica Lachi with “Bridging Theory and Practice in Link Representation with Graph Neural Networks” (NeurIPS 2025)
📚 Today at the Reading Group, Thu, Feb 26, 11am EST, we’re excited to host Vignesh Kothapalli (Stanford University) presenting:
PLUREL: Synthetic Data Unlocks Scaling Laws for Relational Foundation Models
zoom link on our website
See you there! 🚀
This week at the reading group, thursday feb 12th, 11am EST, we are happy to welcome Sofiane Ennadir, who will present: Virtual Nodes Go Temporal (LOG 2025).
zoom link on website!
🥳
The Temporal Graph Learning Reading Group is back from Winter Break ❄️
See you on Feb 5th, 11am EST
Ivan Marisca will present: Over-squashing in Spatiotemporal Graph Neural Networks (NeurIPS 2025)
more info on our website
📣 Join us for the TENET satellite at @netsciconf.bsky.social in Boston!
Following the enthusiasm for last year’s editions, we're bringing together researchers working on Temporal Networks!
✏️2 pages abstracts
📆 Submit by Feb 20, 2026
🔗 more info here: tinyurl.com/4zevnyft
📢 This week at the Reading Group (Nov 13, 11am EST / 5pm CET), Jacob Chmura & @shenyanghuangtg.bsky.social
present TGM: a Modular and Efficient Library for Machine Learning on Temporal Graph ⏰
zoom link on website!
find the paper here: arxiv.org/pdf/2503.02859
🪩This week at the reading group, thursday, november 6th, 11am EST (5pm CET), Emma Ceccherini (University of Bristol) will present: Unsupervised Attributed Dynamic Network Embedding with Stability Guarantees 🪩
Looking forward to seeing you!
zoom link on website.
🗓️ Reading Group: Thu, Oct 30 @ 11:00 AM EDT (note: 4:00 PM CET this week due to DST shift!)
👩🔬 Speaker: Edwige Cyffers (ISTA, Austria)
📄 Fedivertex: a Graph Dataset based on Decentralized Social Networks for Trustworthy ML
🔗 arxiv.org/abs/2505.20882
zoom link on website :)
This week at the reading group, thursday, Oct 23rd, 11am EDT, we are happy to have Andrea Ceni (University of Pisa), who will present "Message-Passing State-Space Models: Improving Graph Learning with Modern Sequence Modeling".
zoom link on website. 🥳
paper link: www.esann.org/sites/defaul...
This week at the reading group, thursday, oct 16th, 11am EDT, we are very happy to welcome @manueldileo.bsky.social who will present Tensor Decomposition for Temporal Knowledge Graph Reasoning: From Completion to Forecasting.
See you there 🥳🥳
zoom link on our website
This week at the reading group, thursday, Oct 9th, 11am EDT (5pm CEST), @Zifeng Ding will present:
Self-Exploring Language Models for Explainable Link Forecasting on Temporal Graphs via Reinforcement Learning 😊
zoom link on website!
📚 The TGL reading group is hosting another session tomorrow 📚!
We're excited to have Lu Yi from Renmin University of China on to discuss the paper "Future Link Prediction Without Memory or Aggregation"!
🔗 Paper | arxiv.org/abs/2505.19408
Zoom link can be found on the website - hope to see you!
This thursday, Sept 11th, 11am EDT (5pm CEST) we are happy to have Mathieu Chevalley (ETH Zurich and GSK), who will present:
A large-scale benchmark for network inference from single-cell perturbation data
www.nature.com/articles/s42...
zoom link on website 🥳