about
Machine learning for in silico virtual screening and chemical genomics: new strategiesSTRAPS: A Fully Data-Driven Spatio-Temporally Regularized Algorithm for M/EEG Patch Source Imaging.Unsupervised white matter fiber clustering and tract probability map generation: applications of a Gaussian process framework for white matter fibers.Kernels for longitudinal data with variable sequence length and sampling intervals.Can Emotional and Behavioral Dysregulation in Youth Be Decoded from Functional Neuroimaging?CAMELOT: A machine learning approach for coarse-grained simulations of aggregation of block-copolymeric protein sequences.Evaluation of machine learning algorithms and structural features for optimal MRI-based diagnostic prediction in psychosisThree-Class EEG-Based Motor Imagery Classification Using Phase-Space Reconstruction Technique.An exploration of EEG features during recovery following stroke - implications for BCI-mediated neurorehabilitation therapy.Log-Concavity and Strong Log-Concavity: a review.Machine learning estimates of natural product conformational energies.Multi-agent Negotiation Mechanisms for Statistical Target Classification in Wireless Multimedia Sensor Networks.Developmental Approach for Behavior Learning Using Primitive Motion Skills.Ghost Imaging Based on Deep Learning.Height and Weight Estimation From Anthropometric Measurements Using Machine Learning Regressions.Gene Unprediction with Spurio: A tool to identify spurious protein sequencesMachine learning in chemoinformatics and drug discovery.Optimize the Coverage Probability of Prediction Interval for Anomaly Detection of Sensor-Based Monitoring Series.Traffic prediction in a bike-sharing systemContinuous patrolling in uncertain environment with the UAV swarm
P2860
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P2860
description
2004 nî lūn-bûn
@nan
2004年の論文
@ja
2004年論文
@yue
2004年論文
@zh-hant
2004年論文
@zh-hk
2004年論文
@zh-mo
2004年論文
@zh-tw
2004年论文
@wuu
2004年论文
@zh
2004年论文
@zh-cn
name
Gaussian processes for machine learning.
@ast
Gaussian processes for machine learning.
@en
type
label
Gaussian processes for machine learning.
@ast
Gaussian processes for machine learning.
@en
prefLabel
Gaussian processes for machine learning.
@ast
Gaussian processes for machine learning.
@en
P2860
P1476
Gaussian processes for machine learning.
@en
P2093
Matthias Seeger
P2860
P304
P356
10.1142/S0129065704001899
P577
2004-04-01T00:00:00Z