Randomized Robust Matrix Completion for the Community Detection Problem
Rahmani, Mostafa, Karimian, Adel, Beckus, Andre, Atia, George
This paper focuses on the unsupervised clustering of large partially observed graphs. We propose a provable randomized framework in which a clustering algorithm is applied to a graphs adjacency matrix generated from a stochastic block model. A sub-matrix is constructed using random sampling, and the low rank component is found using a convex-optimization based matrix completion algorithm. The clusters are then identified based on this low rank component using a correlation based retrieval step. Additionally, a new random node sampling algorithm is presented which significantly improves upon the performance of the clustering algorithm with unbalanced data. Given a partially observed graph with adjacency matrix A \in R^{N \times N} , the proposed approach can reduce the computational complexity from O(N^2) to O(N).
May-25-2018
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- Florida > Orange County
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- Florida > Orange County
- North America > United States
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