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Activity Number: 560 - Annals of Statistics Special Invited Session: Selected Papers
Type: Invited
Date/Time: Wednesday, August 2, 2017 : 2:00 PM to 3:50 PM
Sponsor: IMS
Abstract #321926 View Presentation
Title: Minimax Rates of Community Detection in Stochastic Block Models
Author(s): Harrison H. Zhou* and Anderson Zhang
Companies: Yale University and Yale University
Keywords: network ; community detection ; stochastic block model ; minimax rate ; computation ; degree-corrected
Abstract:

Recently network analysis has gained more and more attentions in statistics, as well as in computer science, probability, and applied mathematics. Community detection for the stochastic block model (SBM) is probably the most studied topic in network analysis. Many methodologies have been proposed. Some beautiful and significant phase transition results are obtained in various settings. In this paper, we provide a general minimax theory for community detection. It gives minimax rates of the mis-match ratio for a wide rage of settings including homogeneous and inhomogeneous SBMs, dense and sparse networks, finite and growing number of communities. An immediate consequence of the result is to establish threshold phenomenon for strong consistency (exact recovery) as well as weak consistency (partial recovery). We obtain the upper bound by a range of penalized likelihood-type approaches. The lower bound is achieved by a novel reduction from a global mis-match ratio to a local clustering problem for one node through an exchangeability property.

If time permits, I will discuss some recent further researches.


Authors who are presenting talks have a * after their name.

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