Go to Main Content

SCT WWW Information System

 

HELP | EXIT

Detailed Course Information

 

Fall 2025 Semester
Mar 10, 2026
Transparent Image
Information Select the desired Level or Schedule Type to find available classes for the course.

NETS 7332 - Machine Learning with Graphs
Covers a number of advanced topics in machine learning and data mining on graphs, including vertex classification, graph clustering, link prediction and analysis, graph distance functions, graph embedding and representation learning, deep learning for graphs, anomaly detection, graph summarization, network inference, adversarial learning on networks, and notions of fairness in social networks. Seeks to familiarize students with state-of-the-art descriptive and predictive algorithms on graphs. Requires a foundational understanding of calculus and linear algebra, probability, machine learning or data mining, algorithms, and programming skills.
4.000 Credit hours
4.000 Lecture hours

Levels: Graduate
Schedule Types: Lecture

Interdisc Studies - Soc Sc/Hum Department

Course Attributes:
GS Col Socl Sci & Humanities, Crosslisted Course

Restrictions:
Must be enrolled in one of the following Programs:     
      PhD Network Science
Must be enrolled in one of the following Levels:     
      Graduate
Must be enrolled in one of the following Classifications:     
      Graduate

Prerequisites:
Graduate level PHYS 5116 Minimum Grade of C

Return to Previous New Search
Transparent Image
Skip to top of page
Release: 8.7.2.4