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- Title
A semi-orthogonal nonnegative matrix tri-factorization algorithm for overlapping community detection.
- Authors
Li, Zhaoyang; Yang, Yuehan
- Abstract
In this paper, we focus on overlapping community detection and propose an efficient semi-orthogonal nonnegative matrix tri-factorization (semi-ONMTF) algorithm. This method factorizes a matrix X into an orthogonal matrix U, a nonnegative matrix B, and a transposed matrix U T . We use the Cayley Transformation to maintain strict orthogonality of U that each iteration stays on the Stiefel Manifold. This algorithm is computationally efficient because the solutions of U and B are simplified into a matrix-wise update algorithm. Applying this method, we detect overlapping communities by the belonging coefficient vector and analyse associations between communities by the unweighted network of communities. We conduct simulations and applications to show that the proposed method has wide applicability. In a real data example, we apply the semi-ONMTF to a stock data set and construct a directed association network of companies. Based on the modularity for directed and overlapping communities, we obtain five overlapping communities, 17 overlapping nodes, and five outlier nodes in the network. We also discuss the associations between communities, providing insights into the overlapping community detection on the stock market network.
- Subjects
NONNEGATIVE matrices; ALGORITHMS; MULTILEVEL marketing
- Publication
Statistical Papers, 2024, Vol 65, Issue 6, p3601
- ISSN
0932-5026
- Publication type
Article
- DOI
10.1007/s00362-024-01537-1