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Genome-wide chromatin remodeling identified at GC-rich long nucleosome-free regionsMethods for structuring scientific knowledge from many areas related to aging researchTesting simulation theory with cross-modal multivariate classification of fMRI dataSemantic similarity for automatic classification of chemical compoundsSocio-economic and Climate Factors Associated with Dengue Fever Spatial Heterogeneity: A Worked Example in New CaledoniaData Mining and Pattern Recognition Models for Identifying Inherited Diseases: Challenges and ImplicationsClinical Metabolomics: The New Metabolic Window for Inborn Errors of Metabolism Investigations in the Post-Genomic EraStatistical Methods for Establishing Personalized Treatment Rules in OncologyMultivoxel pattern analysis for FMRI data: a reviewLinking genome to epigenomeA Model of Representational Spaces in Human Cortex.A neural network-based optimal spatial filter design method for motor imagery classificationEEG Responses to Auditory Stimuli for Automatic Affect Recognition.Visualizing sound emission of elephant vocalizations: evidence for two rumble production typesEarly detection of Alzheimer's disease using MRI hippocampal textureOmics-Based Strategies in Precision Medicine: Toward a Paradigm Shift in Inborn Errors of Metabolism InvestigationsMicrobial bioinformatics for food safety and productionA review on computational systems biology of pathogen-host interactionsPrediction of chemical respiratory sensitizers using GARD, a novel in vitro assay based on a genomic biomarker signatureAn Interactive Astronaut-Robot System with Gesture Control.A machine learning approach to identify clinical trials involving nanodrugs and nanodevices from ClinicalTrials.govUnderstanding and classifying metabolite space and metabolite-likenessPMeS: prediction of methylation sites based on enhanced feature encoding schemeiNR-PhysChem: a sequence-based predictor for identifying nuclear receptors and their subfamilies via physical-chemical property matrixText mining for literature review and knowledge discovery in cancer risk assessment and researchPrediction errors in learning drug response from gene expression data - influence of labeling, sample size, and machine learning algorithmA consistency-based feature selection method allied with linear SVMs for HIV-1 protease cleavage site predictionChemical and genetic validation of the statin drug target to treat the helminth disease, schistosomiasisQSAR-based models for designing quinazoline/imidazothiazoles/pyrazolopyrimidines based inhibitors against wild and mutant EGFRFeature selection for chemical sensor arrays using mutual informationA new supervised over-sampling algorithm with application to protein-nucleotide binding residue predictionSystematic artifacts in support vector regression-based compound potency prediction revealed by statistical and activity landscape analysisMetabolomics as a tool for discovery of biomarkers of autism spectrum disorder in the blood plasma of childrenChecking the STEP-Associated Trafficking and Internalization of Glutamate Receptors for Reduced Cognitive Deficits: A Machine Learning Approach-Based Cheminformatics Study and Its Application for Drug RepurposingPotential Compounds for Oral Cancer Treatment: Resveratrol, Nimbolide, Lovastatin, Bortezomib, Vorinostat, Berberine, Pterostilbene, Deguelin, Andrographolide, and ColchicineUsing Blood Indexes to Predict Overweight Statuses: An Extreme Learning Machine-Based ApproachMining Chemical Activity Status from High-Throughput Screening AssaysIntegrating Domain Specific Knowledge and Network Analysis to Predict Drug Sensitivity of Cancer Cell LinesA Computational Model for Predicting RNase H Domain of RetrovirusThe landscape of microbial phenotypic traits and associated genes
P2860
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P2860
description
im September 1995 veröffentlichter wissenschaftlicher Artikel
@de
wetenschappelijk artikel
@nl
наукова стаття, опублікована у вересні 1995
@uk
name
Support-vector networks
@en
Support-vector networks
@nl
type
label
Support-vector networks
@en
Support-vector networks
@nl
prefLabel
Support-vector networks
@en
Support-vector networks
@nl
P356
P1433
P1476
Support-vector networks
@en
P2888
P304
P356
10.1007/BF00994018
P577
1995-09-01T00:00:00Z