Graph node clustering method based on orthogonal robust non-negative matrix factorization
A technology of non-negative matrix decomposition and clustering method, which is applied in the field of graph node clustering based on orthogonal robust non-negative matrix decomposition, can solve the problem of low clustering quality, improve clustering quality, simplify the solution process, The effect of improving robustness
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[0029] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.
[0030] Such as figure 1 , the flow chart of a graph node clustering method based on orthogonal robust NMF of the present invention, the process is simplified as:
[0031] Step 1. Formally represent graph data as G=(V, E);
[0032] Step 2. Construct graph data adjacency matrix A;
[0033] Step 3. Construct graph node clustering model based on orthogonal robust non-negative matrix factorization;
[0034] Step 4, solving the graph node clustering model to obtain W and H matrices;
[0035] Step 5. Obtain the graph node clustering result according to the matrix H.
[0036] Combine below figure 2 A graph data is shown illustrating a specific embodiment of the method of the present invention.
[0037] Step 1: Formally represent graph data. The formal representation of the graph data example is G=(V,E), where V=(v 0 ,v 1 ,v 2 ,v 3 ,v 4 ,v ...
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