December 4, 2023

The 2nd International Workshop on
Federated Learning with Graph Data

at IEEE ICDM, Shanghai, China

 

Welcome to FedGraph2023!

This year, we are co-hosting a Data Challenge on rule recommendation with collaborators in Wyze Lab, with Cash Prizes!

 

 Overview

The field of graph data mining, one of the most important AI research areas, has been revolutionized by graph neural networks (GNNs), which benefit from training on real-world graph data with millions to billions of nodes and links. Unfortunately, the training data and process of GNNs involving graphs beyond millions of nodes are extremely costly on a centralized server, if not impossible. Moreover, due to the increasing concerns about data privacy, emerging data from realistic applications are naturally fragmented, forming distributed private graphs of multiple “data silos”, among which direct transferring of data is forbidden. The nascent field of federated learning (FL), which aims to enable individual clients to jointly train their models while keeping their local data decentralized and completely private, is a promising paradigm for large-scale distributed and private training of GNNs. 


The FedGraph workshop aims to bring together researchers from different backgrounds with a common interest in how to extend current FL algorithms to operate with graph data models such as GNNs. FL is an extremely hot topic of large commercial interest and has been intensively explored for machine learning with visual and textual data. The exploration from graph mining researchers and industrial practitioners is timely catching up just recently. There are many unexplored challenges and opportunities, which urges the establishment of an organized and open community to collaboratively advance the science behind it. The prospective participants of this workshop will include researchers and practitioners from both graph mining and federated learning communities, whose interests include, but are not limited to: graph analysis and mining, heterogeneous network modeling, complex data mining, large-scale machine learning, distributed systems, optimization, meta-learning, reinforcement learning, privacy, robustness, explainability, fairness, ethics, and trustworthiness.

 Call for Submissions

We invite participation in the 2nd International Workshop on Federated Learning with Graph Data (FedGraph), to be held as part of the ICDM2023 conference. Please check Submission for more information about the topics and submission instructions.

Important Dates

Submission: September 15, 11:59pm AoE
Notification: September 24
Camera-ready: October 1
Workshop date: December 4

Organizers

Carl Yang
Emory University
General Chair

Jundong Li
University of Virginia
Program Co-Chair

Lingjuan Lyu
Sony AI
Program Co-Chair

Nathalie Baracaldo
IBM Research

Xiaoxiao Li
University of British Columbia

Lichao Sun
Lehigh University

Bolin Ding
Alibaba Group

Volunteers / Student Organizers

Han Xie
Emory University

Yuhang Yao
Carnegie Mellon University

Ke Zhang
ClusterTech Limited

Emir Ceyani
University of Southern California

The Venue

Shanghai International Convention Center
No. 2727 Riverside Avenue, Pudong, Shanghai, China

Shanghai International Convention Center is located in the heart of Lujiazui – Shanghai’s Financial and Trade zone, adjacent to the Oriental Pearl TV Tower and facing the multinational styles of architecture along the Bund across the Huangpu River. It enjoys superior geographical position, easily accessible from all parts of the city with modern transportations. The center was completed and officially opened for business in August 1999, covering a construction area of 110,000 square meters. As the new landmark of Shanghai, the center was appraised as one of the 10 classic buildings over the 50 years since the founding of the P.R. China.