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Regression-based methods have been widely applied in face identification, which attempts to approximately represent a query sample as a linear combination of all training samples. Recently, a matrix regression model based on nuclear norm has been proposed and shown strong robustness to structural noises. However, it may ignore two important issues: the label information and local relationship of data. In this article, a novel robust representation method called locality-constrained discriminative matrix regression (LDMR) is proposed, which takes label information and locality structure into account. Instead of focusing on the representation coefficients, LDMR directly imposes constraints on representation components by fully considering the label information, which has a closer connection to identification process. The locality structure characterized by subspace distances is used to learn class weights, and the correct class is forced to make more contribution to representation. Furthermore, the class weights are also incorporated into a competitive constraint on the representation components, which reduces the pairwise correlations between different classes and enhances the competitive relationships among all classes. An iterative optimization algorithm is presented to solve LDMR. Experiments on several benchmark data sets demonstrate that LDMR outperforms some state-of-the-art regression-based methods.
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http://dx.doi.org/10.1109/TNNLS.2020.3041636 | DOI Listing |
Background And Aims: Dental caries in children remains a global health challenge. Fissure sealant therapy (FST) is an effective preventive measure, yet parental acceptance remains low. This study aimed to identify predictors of parental FST behavior for children aged 6-12 years in Bandar Abbas, Iran, using the health belief model (HBM).
View Article and Find Full Text PDFSAR QSAR Environ Res
August 2025
Center for Informational Biology, School of Life Science and Technology, University of Electronic Science and Technology of China (UESTC), Chengdu, China.
Peptide quantitative structure-activity relationship (pQSAR) has been widely used in the computational peptidology community to model, predict and explain the activity and function of bioactive peptides. Various amino acid descriptors (AADs) have been developed to characterize the residue building blocks of peptides at sequence level. However, a significant issue is that the total number of AAD-characterized descriptors is proportional to peptide length, thus causing inconsistency in the resulting descriptor vector matrix for a panel of length-varying peptide sequences (LVPSs), which cannot be engaged in pQSAR modelling.
View Article and Find Full Text PDFVasa
September 2025
Angiology Department, Lausanne University Hospital, University of Lausanne, Switzerland.
Supervised exercise therapy (SET) is a first-line treatment for patients with symptomatic peripheral artery disease (PAD). However, its impact on inflammation, as well as the relationship between inflammation and functional improvements, remain poorly understood. In this prospective, single-arm study, 51 patients with symptomatic PAD underwent a 12-week multimodal SET program.
View Article and Find Full Text PDFMar Environ Res
September 2025
Division of Earth and Environmental System Sciences, Pukyong National University, Busan, 48513, Republic of Korea. Electronic address:
A total of 27 Alexandrium catenella strains isolated from Jinhae-Masan Bay were examined to assess differences in the toxicity and composition of paralytic shellfish toxins (PST). The strains exhibited widely variable toxicity, ranging from 0.02 to 360.
View Article and Find Full Text PDFIEEE Trans Pattern Anal Mach Intell
September 2025
Stochastic Kriging (SK) is a generalized variant of Gaussian process regression, and it is developed for dealing with non-i.i.d.
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