about
Objective quality assessment of MPEG-2 video streams by using CBP neural networks.Representation and generalization properties of class-entropy networks.K-winner machines for pattern classification.Unsupervised Analysis of Event-Related Potentials (ERPs) During an Emotional Go/NoGo TaskEffect of different font sizes and of spaces between words on eye movement performance: an eye tracker study in dyslexic and non-dyslexic childrenGraded Possibilistic Clustering of Non-stationary Data StreamsComparison of Methods for Community Detection in NetworksLayered ensemble model for short-term traffic flow forecasting with outlier detectionClustering High-Dimensional DataComparing Fuzzy Clusterings in High DimensionalityDetecting Overlapping Protein Communities in Disease NetworksHubs and Communities Identification in Dynamical Financial NetworksOnline Spectral Clustering and the Neural Mechanisms of Concept FormationA Quality-Driven Ensemble Approach to Automatic Model Selection in ClusteringCommunity Detection in Protein-Protein Interaction Networks Using Spectral and Graph ApproachesGenetic algorithm-based neural error correcting output classifierVisual stability analysis for model selection in graded possibilistic clusteringFall Detection Using an Ensemble of Learning MachinesFeature-Based Medical Image Registration Using a Fuzzy Clustering Segmentation ApproachNeighbor-Based SimilaritiesBiclustering by ResamplingEpigenetics, MicroRNAs, and Cancer: An UpdateSimulated annealing for supervised gene selectionTuning Graded Possibilistic Clustering by Visual Stability AnalysisA Novel Approach for Biclustering Gene Expression Data Using Modular Singular Value DecompositionApplying the Possibilistic c-Means Algorithm in Kernel-Induced SpacesPredicting microRNA Prostate Cancer Target GenesAn Experimental Validation of Some Indexes of Fuzzy Clustering SimilaritySearching for microRNA prostate cancer target genesSoft ranking in clusteringStability and Performances in Biclustering AlgorithmsA survey of kernel and spectral methods for clusteringLinear Fuzzy Clustering With Selection of Variables Using Graded Possibilistic ApproachVector quantization and fuzzy ranks for image reconstructionShared farthest neighbor approach to clustering of high dimensionality, low cardinality dataSoft Rank ClusteringSoft transition from probabilistic to possibilistic fuzzy clusteringUnsupervised Gene Selection and Clustering Using Simulated AnnealingA fuzzy approach to image analysis in HLA typing using oligonucleotide microarraysA new approach to hierarchical clustering for the analysis of genomic data
P50
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P50
description
forsker
@nb
researcher ORCID ID = 0000-0003-3865-2613
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wetenschapper
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name
S. Rovetta
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S. Rovetta
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S. Rovetta
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Stefano Rovetta
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Stefano Rovetta
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Stefano Rovetta
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Stefano Rovetta
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S. Rovetta
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S. Rovetta
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S. Rovetta
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Stefano Rovetta
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Stefano Rovetta
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Stefano Rovetta
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Stefano Rovetta
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S. Rovetta
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S. Rovetta
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S. Rovetta
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S. Rovetta
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Stefano Rovetta
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Stefano Rovetta
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Stefano Rovetta
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Stefano Rovetta
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P244
P1153
7003745558
P214
167145542436696640854
P244
nb2016001156
P2456
P27
P31
P496
0000-0003-3865-2613
P7859
lccn-nb2016001156