about
A Class-Information-Based Sparse Component Analysis Method to Identify Differentially Expressed Genes on RNA-Seq Data.Differentially expressed genes selection via Laplacian regularized low-rank representation method.Joint L1/2-Norm Constraint and Graph-Laplacian PCA Method for Feature Extraction.Robust Principal Component Analysis Regularized by Truncated Nuclear Norm for Identifying Differentially Expressed Genes.Robust and Efficient Biomolecular Clustering of Tumor Based on ${p}$ -Norm Singular Value Decomposition.PCA Based on Graph Laplacian Regularization and P-Norm for Gene Selection and Clustering.Regularized Non-negative Matrix Factorization for Identifying Differential Genes and Clustering Samples: a Survey.The computational prediction of drug-disease interactions using the dual-network L-CMF methodLJELSR: A Strengthened Version of JELSR for Feature Selection and ClusteringA Mixed-Norm Laplacian Regularized Low-Rank Representation Method for Tumor Samples ClusteringLaplacian regularized low-rank representation for cancer samples clusteringNetwork analysis based on low-rank method for mining information on integrated data of multi-cancersIntegrative graph regularized matrix factorization for drug-pathway associations analysisHC-HDSD: A method of hypergraph construction and high-density subgraph detection for inferring high-order epistatic interactionsDual-network sparse graph regularized matrix factorization for predicting miRNA-disease associationsSupervised Discriminative Sparse PCA for Com-Characteristic Gene Selection and Tumor Classification on Multiview Biological DataA new method for mining information of co-expression network based on multi-cancers integrated dataNPCMF: Nearest Profile-based Collaborative Matrix Factorization method for predicting miRNA-disease associations
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P50
description
researcher ORCID ID = 0000-0001-6104-2149
@en
wetenschapper
@nl
name
Jin-Xing Liu
@ast
Jin-Xing Liu
@en
Jin-Xing Liu
@es
Jin-Xing Liu
@nl
type
label
Jin-Xing Liu
@ast
Jin-Xing Liu
@en
Jin-Xing Liu
@es
Jin-Xing Liu
@nl
prefLabel
Jin-Xing Liu
@ast
Jin-Xing Liu
@en
Jin-Xing Liu
@es
Jin-Xing Liu
@nl
P31
P496
0000-0001-6104-2149