Library Header Image Library Header Image

Cyber-Informed Machine Learning: End-User Value through Explainability


Posted on in Presentations

Cybersecurity is a data-rich and natural setting for machine learning (ML). However, lack of explainability is a major challenge. This session will propose cyber-informed ML, a paradigm emphasizing two directions of explainability, human-to-model and model-to-human. Will share practical examples of overcoming this challenge and discuss research needed for ML at the cybersecurity operations level.

Access This and Other RSAC™ Conference Presentations with Your Free RSAC Membership

Your RSAC™ Membership also includes AI-powered summaries, mind maps, and slides for Conference presentations, Group Discussions with experts, and more.

Watch Now >>
Participants
Jeffrey Mellon

Speaker

Machine Learning Research Scientist, Carnegie Mellon University Software Engineering Institute

Clarence Worrell

Speaker

Senior Data Scientist, Carnegie Mellon University Software Engineering Institute


Share With Your Community