Deprecated: $wgMWOAuthSharedUserIDs=false is deprecated, set $wgMWOAuthSharedUserIDs=true, $wgMWOAuthSharedUserSource='local' instead [Called from MediaWiki\HookContainer\HookContainer::run in /var/www/html/w/includes/HookContainer/HookContainer.php at line 135] in /var/www/html/w/includes/Debug/MWDebug.php on line 372
Hypergraph regularized discriminative nonnegative matrix factorization on sample classification and co-differentially expressed gene selection - MaRDI portal

Hypergraph regularized discriminative nonnegative matrix factorization on sample classification and co-differentially expressed gene selection (Q2331316)

From MaRDI portal
scientific article
Language Label Description Also known as
English
Hypergraph regularized discriminative nonnegative matrix factorization on sample classification and co-differentially expressed gene selection
scientific article

    Statements

    Hypergraph regularized discriminative nonnegative matrix factorization on sample classification and co-differentially expressed gene selection (English)
    0 references
    0 references
    0 references
    0 references
    0 references
    0 references
    0 references
    29 October 2019
    0 references
    Summary: Nonnegative Matrix Factorization (NMF) is a significant big data analysis technique. However, standard NMF regularized by simple graph does not have discriminative function, and traditional graph models cannot accurately reflect the problem of multigeometry information between data. To solve the above problem, this paper proposed a new method called Hypergraph Regularized Discriminative Nonnegative Matrix Factorization (HDNMF), which captures intrinsic geometry by constructing hypergraphs rather than simple graphs. The introduction of the hypergraph method allows high-order relationships between samples to be considered, and the introduction of label information enables the method to have discriminative effect. Both the hypergraph Laplace and the discriminative label information are utilized together to learn the projection matrix in the standard method. In addition, we offered a corresponding multiplication update solution for the optimization. Experiments indicate that the method proposed is more effective by comparing with the earlier methods.
    0 references

    Identifiers

    0 references
    0 references
    0 references
    0 references
    0 references
    0 references