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seminars:datasci:190312

Data Science Seminar

Hosted by Department of Mathematical Sciences

- Date: Tuesday, March 12, 2019
- Time: 11:45 am – 12:45pm
- Room: WH-100E
- Speaker: Subhadeep (Deep) Mukhopadhyay (Temple University)
- Title: Graph Data Science

*Abstract*

Graph Data Science (or in short: GDS) aims to provide an integrated analysis of two types of data structures that encompass a large portion of important data science applications arise frequently in science, technology, and society: [D1] Graph-structured data: where the observed data takes the form of an ‘organic’ graph with given pairwise connections. Examples: social network, World Wide Web (WWW), recommendation systems, telecommunication network etc. [D2] Data-graph: such graphs are ‘constructed’ from the given data. Examples: high-dimensional data, image data, computer vision etc. In this talk, I will explore some recent progress in the direction of developing a theoretical foundation and unified algorithms for GDS.

seminars/datasci/190312.txt · Last modified: 2019/02/26 10:00 by sdang

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