Loading…
Attending this event?

The Sched app allows you to build your schedule for the useR! Virtual Event. The virtual event is free; there is no cost to participate.

Virtual Tutorials will take place live on Zoom, and you must pre-register in order to participate. You will be able to use the chat and Q&A features in Zoom to ask the presenters questions. Please register by clicking on the link in the tutorial’s description.

Virtual Session Presentations will take place on YouTube Premier. Speakers will be available during the presentation to answer questions in the chat. The presentations can be found in this playlist.

Please note: This schedule is automatically displayed in Central European Summer Time (UTC+02:00). To see the schedule in your preferred timezone, please select from the drop-down located at the bottom of the menu to the right.

IMPORTANT NOTE: Timing of sessions and room locations are subject to change.

The in-person program will take place in Salzburg, Austria, on 8-11 July. Please see the in-person schedule page for more information.

Tuesday July 2, 2024 19:00 - 19:20 CEST


Community detection in graphs has numerous applications from social networks to biology. However, the immense size of modern graphs makes it challenging to accurately detect communities. We set out to benchmark a variety of popular methods available in R to measure their accuracy and time complexity on synthetic and real datasets. Unsurprisingly, we found that less scalable algorithms tend to outperform more computationally efficient ones. To address this issue, we introduce two new variants of the Fast Label Propagation algorithm for clustering extremely large networks, both available in the SynExtend package for R. Our implementations offer accuracy comparable to less scalable approaches while providing linear-time computational scalability. Furthermore, we made it possible to apply our community detection algorithms outside of main memory, which permits community detection on graphs with billions of nodes using less than a gigabyte of RAM. These advances will help democratize scalable analyses by removing the need for expensive supercomputer resources. Together, this work both improves graph community detection and makes these analyses more accessible to researchers.
Speakers
avatar for Aidan Lakshman

Aidan Lakshman

PhD Candidate, University of Pittsburgh
Aidan Lakshman is a PhD Candidate in Biomedical Informatics at the University of Pittsburgh. His dissertation focuses on developing tools for large-scale comparative genomics. He is expected to graduate in May 2025 and is actively searching for employment opportunities. Aidan is an... Read More →
Tuesday July 2, 2024 19:00 - 19:20 CEST
YouTube Premier
Log in to leave feedback.

Sign up or log in to save this to your schedule, view media, leave feedback and see who's attending!

Share Modal

Share this link via

Or copy link