Ninth International Workshop on

High Performance Big Graph Data

Management, Analysis, and Mining

December 18, 2022

To be held in conjunction with the

2022 IEEE International Conference on Big Data (IEEE BigData 2022)
Osaka International Convention Center, Osaka, Japan

Workshop Description

Modern Big Data increasingly appears in the form of complex graphs and networks. Examples include the physical Internet, the world wide web, online social networks, phone networks, and biological networks. In addition to their massive sizes, these graphs are dynamic, noisy, and sometimes transient. They also conform to all five Vs (Volume, Velocity, Variety, Value and Veracity) that define Big Data. However, many graph-related problems are computationally difficult, and thus big graph data brings unique challenges, as well as numerous opportunities for researchers, to solve various problems that are significant to our communities.

Big graph problems are currently solved using several complementary paradigms. The most popular approach is perhaps by exploiting parallelism, through specialized algorithms for supercomputers, shared-memory multicore and manycore systems, and heterogeneous CPU-GPU systems. However, since real-world graphs are sparse and highly irregular, there are very few parallel implementations that can actually deliver high performance. The major challenges to scaling and efficiency include irregular data dependencies, poor locality, and high synchronization costs of current approaches. In addition to parallelism, researchers are developing approximation algorithms that use sampling for compressing and summarizing graph data. Streaming algorithms are also being considered for scenarios where the rate of updates is too fast to process the entire graph in a single pass. Further, out-of-core algorithms are necessary for massive graphs that do not fit in the main memory of a typical system. Researchers can use graph-based solutions for solving problems from many diverse disciplines, including routing and transportation, social networks, bioinformatics, computational science, health care, security and intelligence analysis.

This workshop aims to bring together researchers from different paradigms solving big graph problems under a unified platform for sharing their work and exchanging ideas. We are soliciting novel and original research contributions related to big graph data management, analysis, and mining (algorithms, software systems, applications, best practices, performance). Significant work-in-progress papers are also encouraged. Papers can be from any of the following areas, including but not limited to:

Regular paper submissions must be at most 10 pages long, including all figures, tables, and references. They must be formatted according to the paper submission formatting guidelines provided in the IEEE BigData 2022 Call for Papers. Additionally, we encourage short paper submissions (at most 6 pages) describing new work in progress.

Past Workshops

BigGraphs 2014
BigGraphs 2015
BigGraphs 2016
BigGraphs 2017
BigGraphs 2018
BigGraphs 2019
BigGraphs 2020
BigGraphs 2021

Important Dates

Keynote

Nesreen Ahmed
Nesreen Ahmed
Senior Staff Research Scientist
Intel Research Labs

Graph Learning and Systems

Workshop Program

December 18, 2022
10:30 am -- 1:30 pm Japanese Standard Time

Location: Room 1006, Osaka International Convention Center, Osaka, Japan

20-minute oral presentation of papers (15-minute talk and 5 minutes for Q&A)

10:30 am   Opening Remarks
Mohammad Al Hasan

Data Fusion and Graph Analysis in Fraud Transaction Detection: walkthrough of a case study
Valerio Bellandi and Stefano Siccardi

10:35 am   Pipelining Graph Construction and Agent-based Computation over Distributed Memory
Yan Hong and Munehiro Fukuda

10:55 am   Functional Ball Dropping: A superfast hypergraph generation scheme
Lilith Hafner, Chase Holdener, and Nicole Eikmeier

11:20 am   BigGraphs 2022 Keynote: Graph Learning and Systems
Nesreen Ahmed

12:15 pm   CrunchQA - A Synthetic Dataset for Question Answering over Crunchbase Knowledge Graph
Lifan Yu, Nadya Abdel Madjid, and Djellel Difallah

12:40 pm   Node Context Selection in Transformer-Based Graph Representation Learning Models
Tianze Wang, Amir H. Payberah, and Vladimir Vlassov

1:00 pm   Scalable Forecasting in Sensor Networks with Graph Convolutional LSTM Models
Massimiliano Altieri, Roberto Corizzo, and Michelangelo Ceci

1:25 pm   Closing remarks
Mohammad Al Hasan

Workshop Organizers

Nesreen Ahmed
Nesreen Ahmed
Intel Labs
Santa Clara, CA 95054

Mohammad Al Hasan
Mohammad Al Hasan
Department of Computer and Information Science
Indiana University - Purdue University
Indianapolis, IN 46202

Shaikh Arifuzzaman
Shaikh Arifuzzaman
Department of Computer Science
University of Nevada, Las Vegas
Las Vegas, NV 89154

Kamesh Madduri
Kamesh Madduri
Department of Computer Science and Engineering
The Pennsylvania State University
University Park, PA 16802

Contact

Please send email to one of the workshop organizers.