Search results for "clustering"

showing 10 items of 446 documents

Ensemble deep clustering analysis for time window determination of event-related potentials

2023

Objective Cluster analysis of spatio-temporal event-related potential (ERP) data is a promising tool for exploring the measurement time window of ERPs. However, even after preprocessing, the remaining noise can result in uncertain cluster maps followed by unreliable time windows while clustering via conventional clustering methods. Methods We designed an ensemble deep clustering pipeline to determine a reliable time window for the ERP of interest from temporal concatenated grand average ERP data. The proposed pipeline includes semi-supervised deep clustering methods initialized by consensus clustering and unsupervised deep clustering methods with end-to-end architectures. Ensemble clusterin…

klusteritERP microstatesconsensus clusteringanalyysitutkimusmenetelmätensemble learningtime windowdeep clusteringevent-related potentialskognitiiviset prosessitERP
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ProcMiner: Advancing Process Analysis and Management

2007

This paper contributes both to research and practice on process mining. Previous research on process mining has focused on mining patterns from event log files to generate process models. The process mining approach adopted in this paper is focused on producing patterns about process models, not the models themselves. The approach is demonstrated by ProcMiner -an explorative research prototype for management, consolidating, publishing, retrieving, and analyzing process models. Content-based document clustering is applied to process models represented as XML database in order to find topical groups from models. In practice, organizations face numerous challenges in managing their process mod…

klusterointiProcess modelingprosessitiedon analysontiEvent (computing)Computer sciencecomputer.internet_protocolprocess miningProcess miningDocument clusteringXMLcomputer.software_genreData scienceprosessijohtaminendocument clusteringConsistency (database systems)XML databaseQuality management systemprosessien hallintacomputerXML
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Unstable feature relevance in classification tasks

2011

knowledge discoveryaineistottiedonhallintatekoälyfeature relevancefeature weightingrelevanssifeature selectionmachine learningkoneoppiminenclassificationanalyysiensemble learningtietokannattiedonlouhintaData miningtiedonhakuclusteringluokitus
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Knowledge discovery using diffusion maps

2013

knowledge discoveryskientometriikkaanalyysimenetelmätdata miningvalvontajärjestelmätanomaly detectionkoneoppiminentoiminnallinen magneettikuvausdatabig datamanifold learningalgoritmitdiffusion mapstiedonlouhintateollisuuskyberturvallisuusclusteringdimensionality reduction
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Radio frequency fingerprinting for outdoor user equipment localization

2017

The recent advancements in cellular mobile technology and smart phone usage have opened opportunities for researchers and commercial companies to develop ubiquitous low cost localization systems. Radio frequency (RF) fingerprinting is a popular positioning technique which uses radio signal strength (RSS) values from already existing infrastructures to provide satisfactory user positioning accuracy in indoor and densely built outdoor urban areas where Global Navigation Satellite System (GNSS) signal is poor and hard to reach. However a major requirement for the RF fingerprinting to maintain good localization accuracy is the collection and updating of large training database. The Minimization…

langattomat lähiverkotKullback-Leibler divergenceK-Nearest NeighborpaikannusK-means clusteringRF fingerprintingmatkaviestinverkotradioaallotLTEWLANkoneoppiminenmobiililaitteetFuzzy C-means ClusteringklusterianalyysiMahalanobis distancehierarchical clustering
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CLUSTERING INCOMPLETE SPECTRAL DATA WITH ROBUST METHODS

2018

Abstract. Missing value imputation is a common approach for preprocessing incomplete data sets. In case of data clustering, imputation methods may cause unexpected bias because they may change the underlying structure of the data. In order to avoid prior imputation of missing values the computational operations must be projected on the available data values. In this paper, we apply a robust nan-K-spatmed algorithm to the clustering problem on hyperspectral image data. Robust statistics, such as multivariate medians, are more insensitive to outliers than classical statistics relying on the Gaussian assumptions. They are, however, computationally more intractable due to the lack of closed-for…

lcsh:Applied optics. PhotonicsMultivariate statisticsComputer scienceGaussianCorrelation clusteringRobust statisticsspectral datacomputer.software_genrelcsh:Technologysymbols.namesakeCURE data clustering algorithmImputation (statistics)interpolointiCluster analysisK-meansnan-K-spatmedlcsh:Tk-means clusteringlcsh:TA1501-1820robust statistical methodsMissing dataData setlcsh:TA1-2040OutliersymbolsData mininglcsh:Engineering (General). Civil engineering (General)computerclustering
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Assessment of nonnegative matrix factorization algorithms for electroencephalography spectral analysis.

2020

AbstractBackgroundNonnegative matrix factorization (NMF) has been successfully used for electroencephalography (EEG) spectral analysis. Since NMF was proposed in the 1990s, many adaptive algorithms have been developed. However, the performance of their use in EEG data analysis has not been fully compared. Here, we provide a comparison of four NMF algorithms in terms of accuracy of estimation, stability (repeatability of the results) and time complexity of algorithms with simulated data. In the practical application of NMF algorithms, stability plays an important role, which was an emphasis in the comparison. A Hierarchical clustering algorithm was implemented to evaluate the stability of NM…

lcsh:Medical technologyComputer scienceBiomedical EngineeringStability (learning theory)ElectroencephalographySignal-To-Noise RatioClusteringNon-negative matrix factorizationBiomaterialsNonnegative matrix factorization03 medical and health sciencesklusterit0302 clinical medicineEeg dataalgoritmitmedicineHumansRadiology Nuclear Medicine and imagingSpectral analysisstabiilius (muuttumattomuus)EEGCluster analysisTime complexity030304 developmental biology0303 health sciencesRadiological and Ultrasound Technologymedicine.diagnostic_testResearchnonnegative matrix factorizationElectroencephalographySignal Processing Computer-AssistedGeneral MedicinestabilityModels TheoreticalHierarchical clusteringlcsh:R855-855.5AlgorithmStability030217 neurology & neurosurgeryAlgorithmsclusteringspektrianalyysiBiomedical engineering online
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Toolbox for Distance Estimation and Cluster Validation on Data With Missing Values

2022

Missing data are unavoidable in the real-world application of unsupervised machine learning, and their nonoptimal processing may decrease the quality of data-driven models. Imputation is a common remedy for missing values, but directly estimating expected distances have also emerged. Because treatment of missing values is rarely considered in clustering related tasks and distance metrics have a central role both in clustering and cluster validation, we developed a new toolbox that provides a wide range of algorithms for data preprocessing, distance estimation, clustering, and cluster validation in the presence of missing values. All these are core elements in any comprehensive cluster analy…

mallintaminenGeneral Computer Sciencedistance estimation020209 energyGeneral Engineeringlaatu02 engineering and technologyTK1-9971missing valuesklusteritkoneoppiminendatavalidointialgoritmit0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingGeneral Materials ScienceMissing valuesElectrical engineering. Electronics. Nuclear engineeringcluster validationtietojenkäsittelyclusteringIEEE Access
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Spectral Clustering Reveals Different Profiles of Central Sensitization in Women with Carpal Tunnel Syndrome

2021

Identification of subgroups of patients with chronic pain provides meaningful insights into the characteristics of a specific population, helping to identify individuals at risk of chronification and to determine appropriate therapeutic strategies. This paper proposes the use of spectral clustering (SC) to distinguish subgroups (clusters) of individuals with carpal tunnel syndrome (CTS), making use of the obtained patient profiling to argue about potential management implications. SC is a powerful algorithm that builds a similarity graph among the data points (the patients), and tries to find the subsets of points that are strongly connected among themselves, but weakly connected to others.…

medicine.medical_specialtyCentral sensitizationPhysics and Astronomy (miscellaneous)General Mathematicscarpal tunnel syndromegroupssensitization03 medical and health sciences0302 clinical medicinePhysical medicine and rehabilitationComputer Science (miscellaneous)QA1-939MedicineCarpal tunnelpain030212 general & internal medicineLead (electronics)Carpal tunnel syndromespectral clusteringbusiness.industryChronic painDones Malaltiesmedicine.diseaseSpectral clusteringIntensity (physics)medicine.anatomical_structureChemistry (miscellaneous)Hyperalgesiamedicine.symptombusiness030217 neurology & neurosurgeryMathematics
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C4BQO in familial clustering of liver cirrhosis

1993

medicine.medical_specialtyCirrhosisbusiness.industryInternal medicineImmunologymedicineFamilial clusteringmedicine.diseasebusinessMolecular BiologyGastroenterologyMolecular Immunology
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