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Improving the Caenorhabditis elegans genome annotation using machine learningComplex networks govern coiled-coil oligomerization--predicting and profiling by means of a machine learning approachCAMP: a useful resource for research on antimicrobial peptidesApplication of independent component analysis to microarraysSleep Spindles as an Electrographic Element: Description and Automatic Detection MethodsFast and Accurate Modeling of Molecular Atomization Energies with Machine LearningA constructive approach for discovering new drug leads: Using a kernel methodology for the inverse-QSAR problemThe Use of Mobile Devices in Aiding Dietary Assessment and EvaluationGenerative embedding for model-based classification of fMRI data.An Artificial Immune System-Based Support Vector Machine Approach for Classifying Ultrasound Breast Tumor ImagesDecoding temporal structure in music and speech relies on shared brain resources but elicits different fine-scale spatial patterns.Support Vector Machines Trained with Evolutionary Algorithms Employing Kernel Adatron for Large Scale Classification of Protein Structures.Structure based function prediction of proteins using fragment library frequency vectors.Multivariate activation and connectivity patterns discriminate speech intelligibility in Wernicke's, Broca's, and Geschwind's areasAn analysis of the accuracy of wearable sensors for classifying the causes of falls in humansKernel approaches for differential expression analysis of mass spectrometry-based metabolomics data.Kernel-based distance metric learning for microarray data classification.Predicting phase synchronization in a spiking chaotic CO2 laser.Adaptation of a support vector machine algorithm for segmentation and visualization of retinal structures in volumetric optical coherence tomography data sets.Segmentation of three-dimensional retinal image data.IsoSVM--distinguishing isoforms and paralogs on the protein level.Learning interpretable SVMs for biological sequence classification.SVM clustering.Accurate splice site prediction using support vector machinesOptimal spliced alignments of short sequence reads.Towards zero training for brain-computer interfacing.Support vector machines and kernels for computational biologyKIRMES: kernel-based identification of regulatory modules in euchromatic sequences.Pattern Recognition of Longitudinal Trial Data with Nonignorable Missingness: An Empirical Case Study.A framework for image segmentation using shape models and kernel space shape priors.Comparison of AdaBoost and support vector machines for detecting Alzheimer's disease through automated hippocampal segmentation.Machine learning of accurate energy-conserving molecular force fields.Identifying endophenotypes of autism: a multivariate approachBrains in dialogue: decoding neural preparation of speaking to a conversational partner.EEG-based classification for elbow versus shoulder torque intentions involving stroke subjects.Alien plant monitoring with ultralight airborne imaging spectroscopy.Towards a user-friendly brain-computer interface: initial tests in ALS and PLS patients.Tracking the unconscious generation of free decisions using ultra-high field fMRI.Insights into Protein Sequence and Structure-Derived Features Mediating 3D Domain Swapping Mechanism using Support Vector Machine Based Approach.BLProt: prediction of bioluminescent proteins based on support vector machine and relieff feature selection.
P2860
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P2860
description
2001 nî lūn-bûn
@nan
2001年の論文
@ja
2001年学术文章
@wuu
2001年学术文章
@zh
2001年学术文章
@zh-cn
2001年学术文章
@zh-hans
2001年学术文章
@zh-my
2001年学术文章
@zh-sg
2001年學術文章
@yue
2001年學術文章
@zh-hant
name
An introduction to kernel-based learning algorithms.
@en
An introduction to kernel-based learning algorithms.
@nl
type
label
An introduction to kernel-based learning algorithms.
@en
An introduction to kernel-based learning algorithms.
@nl
prefLabel
An introduction to kernel-based learning algorithms.
@en
An introduction to kernel-based learning algorithms.
@nl
P2093
P356
P1476
An introduction to kernel-based learning algorithms.
@en
P2093
P304
P356
10.1109/72.914517
P577
2001-01-01T00:00:00Z