Advertisement · 728 × 90

Posts by Temporal Graph Learning Reading Group

A physics-informed graph neural network conserving linear and angular momentum for dynamical systems - Nature Communications Learning complex dynamics from data often leads to unstable or unphysical predictions. Here, the authors introduce Dynami-CAL GraphNet, a physics-informed architecture that conserves linear and angula...

Paper: www.nature.com/articles/s41...

1 week ago 0 0 0 0

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 🙂

1 week ago 0 0 1 0
Preview
The Temporal Graph of Bitcoin Transactions Since its 2009 genesis block, the Bitcoin network has processed >1.08 billion (B) transactions representing >8.72B BTC, offering rich potential for machine learning (ML); yet, its pseudonymity and obs...

Paper: arxiv.org/abs/2510.20028

3 weeks ago 0 0 0 0

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
🐰

3 weeks ago 0 0 1 0

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. 🌞

4 weeks ago 0 0 0 0
Preview
What Do Temporal Graph Learning Models Learn? Learning on temporal graphs has become a central topic in graph representation learning, with numerous benchmarks indicating the strong performance of state-of-the-art models. However, recent work has...

arxiv.org/abs/2510.094...

1 month ago 1 0 0 0

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)🥳

1 month ago 0 1 1 0
Preview
Bridging Theory and Practice in Link Representation with Graph Neural Networks Graph Neural Networks (GNNs) are widely used to compute representations of node pairs for downstream tasks such as link prediction. Yet, theoretical understanding of their expressive power has focused...

arxiv.org/abs/2506.24018

zoom link on website

1 month ago 0 0 0 0

⏰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)

1 month ago 1 0 1 0
Preview
GitHub - snap-stanford/plurel: PluRel: Synthetic Data unlocks Scaling Laws for Relational Foundation Models PluRel: Synthetic Data unlocks Scaling Laws for Relational Foundation Models - snap-stanford/plurel

Code: github.com/snap-stanfor...

Website: snap-stanford.github.io/plurel/

1 month ago 0 0 0 0
Advertisement
GitHub - snap-stanford/plurel: PluRel: Synthetic Data unlocks Scaling Laws for Relational Foundation Models PluRel: Synthetic Data unlocks Scaling Laws for Relational Foundation Models - snap-stanford/plurel

📚 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! 🚀

1 month ago 0 1 1 0
Virtual Nodes Go Temporal Learning representations of temporally evolving graphs, also known as Continuous-Time Dynamic Graphs (CTDGs), has gained considerable attention due to their ability to model a wide range of...

link to the paper: openreview.net/forum?id=jdK...

2 months ago 1 0 0 0

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!
🥳

2 months ago 1 1 1 0

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

2 months ago 3 2 0 0
TENET@NetSci2025

📣 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

2 months ago 2 6 0 0
Preview
TGM: a Modular and Efficient Library for Machine Learning on Temporal Graphs Well-designed open-source software drives progress in Machine Learning (ML) research. While static graph ML enjoys mature frameworks like PyTorch Geometric and DGL, ML for temporal graphs (TG), networ...

paper link: arxiv.org/abs/2510.07586

5 months ago 0 0 0 0

📢 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!

5 months ago 1 0 1 0

find the paper here: arxiv.org/pdf/2503.02859

5 months ago 0 0 0 0

🪩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.

5 months ago 0 0 1 0
Preview
Fedivertex: a Graph Dataset based on Decentralized Social Networks for Trustworthy Machine Learning Decentralized machine learning - where each client keeps its own data locally and uses its own computational resources to collaboratively train a model by exchanging peer-to-peer messages - is increas...

🗓️ 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 :)

5 months ago 1 0 0 0
Advertisement
Preview
Message-Passing State-Space Models: Improving Graph Learning with Modern Sequence Modeling The recent success of State-Space Models (SSMs) in sequence modeling has motivated their adaptation to graph learning, giving rise to Graph State-Space Models (GSSMs). However, existing GSSMs operate ...

paper: arxiv.org/abs/2505.18728

6 months ago 0 0 0 0

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. 🥳

6 months ago 0 0 1 0

paper link: www.esann.org/sites/defaul...

6 months ago 0 0 0 0

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

6 months ago 1 1 1 0
Preview
Self-Exploring Language Models for Explainable Link Forecasting on Temporal Graphs via Reinforcement Learning Forecasting future links is a central task in temporal graph (TG) reasoning, requiring models to leverage historical interactions to predict upcoming ones. Traditional neural approaches, such as tempo...

arxiv.org/abs/2509.00975

6 months ago 0 0 0 0

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!

6 months ago 0 0 1 0
Preview
The Logical Expressiveness of Temporal GNNs via Two-Dimensional Product Logics In recent years, the expressive power of various neural architectures -- including graph neural networks (GNNs), transformers, and recurrent neural networks -- has been characterised using tools from ...

📚 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!

6 months ago 1 0 0 0
Preview
A large-scale benchmark for network inference from single-cell perturbation data - Communications Biology The authors introduce CausalBench, a benchmark suite that enhances network inference evaluation with real-world, large-scale single-cell perturbation data.

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 🥳

7 months ago 0 0 0 0
Advertisement
Preview
MiNT: Multi-Network Training for Transfer Learning on Temporal Graphs Temporal Graph Learning (TGL) has become a robust framework for discovering patterns in dynamic networks and predicting future interactions. While existing research has largely concentrated on learnin...

📚 This week, another reading group:
🗓️ Thursday, August 28th | 🕚 11am EDT, 5pm CEST
🎤 Kiarash Shamsi, University of Manitoba presents MiNT: Multi-Network Training for Transfer Learning on Temporal Graphs
🔗 Paper | arxiv.org/abs/2406.10426
👩‍💻: Zoom link on the webpage!

7 months ago 1 0 0 0
Preview
Are Large Language Models Good Temporal Graph Learners? Large Language Models (LLMs) have recently driven significant advancements in Natural Language Processing and various other applications. While a broad range of literature has explored the graph-reaso...

This week at the reading group, thursday, August 14th, 11am EDT (5pm CEST), @shenyanghuangtg.bsky.social will present: Are Large Language Models Good Temporal Graph Learners?

paper: arxiv.org/abs/2506.05393

zoom link on website

looking forward to seeing you! 🥳

8 months ago 1 0 0 0