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CS Colloquium: Danai Koutra (Carnegie Mellon) - What’s in my data? Fast, principled algorithms for exploring large graphs
Thu, Apr 09, 2015 @ 09:45 AM - 10:50 AM
Thomas Lord Department of Computer Science
Conferences, Lectures, & Seminars
Speaker: Danai Koutra, Carnegie Mellon
Talk Title: Whatâs in my data? Fast, principled algorithms for exploring large graphs
Series: CS Colloquium
Abstract: Networks naturally capture a host of real-world interactions, spanning from friendships to brain activity. But, given a massive graph, such as the Facebook social network, what can be learned about its structure? Are there any changes over time? Where should people's attention be directed? In this talk I will present my work on scalable algorithms that help us to explore and make sense of large, networked data when we want to know âwhatâs in the dataâ. I will present how summarization and similarity analysis can help answer this question, and I will focus on two of my approaches âVoGâ and âDeltaConâ. VoG disentangles the complex graph connectivity patterns, and efficiently summarizes large graphs with important and semantically meaningful structures by leveraging information theoretic methods. DeltaCon is a well-founded, fast method that detects and explains changes in time-evolving or aligned networks by assessing their similarity. Both works are being used by industry, and give interesting discoveries in large real-world graphs.
The lecture will be available to stream HERE.
Biography: Danai Koutra is a Ph.D. candidate in the Computer Science Department at Carnegie Mellon. She earned her M.S. from CMU in 2013 and her diploma in ECE at the National Technical University of Athens in 2010. She works on large-scale graph mining and devises algorithms and methods for exploring, understanding, and learning from graph data when the nature of the problem is not known in advance. She holds one "rate-1" patent, and has six (pending) patents on bipartite graph alignment. She also has many papers (including 2 award-winning papers) and tutorials in top data mining conferences. Her work has been covered by media outlets, such as the MIT Technology Review, and is being taught in courses at top universities, including the Tepper School of Business at CMU and Rutgers University.
Host: Computer Science Department
Location: Olin Hall of Engineering (OHE) - 132
Audiences: Everyone Is Invited
Contact: Assistant to CS chair