Spectral Clustering for Dynamic Stochastic Block Model

36 mins 10 secs,  525.83 MB,  MPEG-4 Video  640x360,  29.97 fps,  44100 Hz,  1.93 Mbits/sec
Share this media item:
Embed this media item:


About this item
Image inherited from collection
Description: Bhattacharyya, S (Oregon State University)
Thursday 14th July 2016 - 09:00 to 09:30
 
Created: 2016-07-20 09:47
Collection: Theoretical Foundations for Statistical Network Analysis
Publisher: Isaac Newton Institute
Copyright: Bhattacharyya, S
Language: eng (English)
Distribution: World     (downloadable)
Explicit content: No
Aspect Ratio: 16:9
Screencast: No
Bumper: UCS Default
Trailer: UCS Default
 
Abstract: Co-author: Shirshendu Chatterjee (CUNY)

One of the most common and crucial aspect of many network data sets is the dependence of network link structure on time or other attributes. There is a long history of researchers proposing networks for dynamic time-evolving formation of networks. Most complex networks, starting from biological networks like genetic or neurological networks to social, co-authorship and citation networks are time-varying. This has led the researchers to study dynamic, time-evolving networks. In this work, we consider the problem of finding a common clustering structure in time-varying networks. We consider three simple extension of spectral clustering methods to dynamic settings and give theoretical justification that the spectral clustering methods produce consistent community detection for such dynamic networks. We also propose an extension of the static version of nonparametric latent variable models to the dynamic setting and use a special case of the model to justify the spectral clusteri ng methods. We show the validity of the theoretical results via simulations too and apply the clustering methods to real-world dynamic biological networks.
Available Formats
Format Quality Bitrate Size
MPEG-4 Video * 640x360    1.93 Mbits/sec 525.83 MB View Download
WebM 640x360    561.89 kbits/sec 148.91 MB View Download
iPod Video 480x270    522.43 kbits/sec 138.39 MB View Download
MP3 44100 Hz 249.82 kbits/sec 66.24 MB Listen Download
Auto (Allows browser to choose a format it supports)