Search results for "Machine"

showing 10 items of 2592 documents

A Douglas–Rachford method for sparse extreme learning machine

2019

Operator splittingSparse regularizationAlgorithmExtreme learning machineMathematicsMethods and Applications of Analysis
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Visual Information Fidelity with better Vision Models and better Mutual Information Estimates

2021

OphthalmologyComputer sciencebusiness.industrymedia_common.quotation_subjectFidelityMutual informationArtificial intelligenceMachine learningcomputer.software_genrebusinesscomputerSensory Systemsmedia_commonJournal of Vision
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Retrieving Quantum Information with Active Learning

2019

Active learning is a machine learning method aiming at optimal design for model training. At variance with supervised learning, which labels all samples, active learning provides an improved model by labeling samples with maximal uncertainty according to the estimation model. Here, we propose the use of active learning for efficient quantum information retrieval, which is a crucial task in the design of quantum experiments. Meanwhile, when dealing with large data output, we employ active learning for the sake of classification with minimal cost in fidelity loss. Indeed, labeling only 5% samples, we achieve almost 90% rate estimation. The introduction of active learning methods in the data a…

Optimal designQuantum Physicsbusiness.industryComputer scienceActive learning (machine learning)media_common.quotation_subjectSupervised learningGeneral Physics and AstronomyFidelityFOS: Physical sciencesVariance (accounting)Machine learningcomputer.software_genre01 natural sciencesTask (project management)Quantum technology0103 physical sciencesArtificial intelligenceQuantum information010306 general physicsbusinessQuantum Physics (quant-ph)computermedia_commonPhysical Review Letters
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On Optimizing Locally Linear Nearest Neighbour Reconstructions Using Prototype Reduction Schemes

2010

This paper concerns the use of Prototype Reduction Schemes (PRS) to optimize the computations involved in typical k-Nearest Neighbor (k-NN) rules. These rules have been successfully used for decades in statistical Pattern Recognition (PR) applications, and have numerous applications because of their known error bounds. For a given data point of unknown identity, the k-NN possesses the phenomenon that it combines the information about the samples from a priori target classes (values) of selected neighbors to, for example, predict the target class of the tested sample. Recently, an implementation of the k-NN, named as the Locally Linear Reconstruction (LLR) [11], has been proposed. The salien…

Optimization problemComputer science020206 networking & telecommunications02 engineering and technologyReduction (complexity)Set (abstract data type)Data point0202 electrical engineering electronic engineering information engineeringFeature (machine learning)A priori and a posteriori020201 artificial intelligence & image processingPoint (geometry)Quadratic programmingAlgorithm
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Connections of reference vectors and different types of preference information in interactive multiobjective evolutionary algorithms

2016

We study how different types of preference information coming from a human decision maker can be utilized in an interactive multiobjective evolutionary optimization algorithm (MOEA). The idea is to convert different types of preference information into a unified format which can then be utilized in an interactive MOEA to guide the search towards the most preferred solution(s). The format chosen here is a set of reference vectors which is used within the interactive version of the reference vector guided evolutionary algorithm (RVEA). The proposed interactive RVEA is then applied to the multiple-disk clutch brake design problem with five objectives to demonstrate the potential of the idea in…

Optimization problemLinear programmingComputer science0211 other engineering and technologiesEvolutionary algorithmInteractive evolutionary computationpreference information02 engineering and technologyMachine learningcomputer.software_genredecision makingEvolutionary computationSet (abstract data type)vectors0202 electrical engineering electronic engineering information engineeringta113021103 operations researchbusiness.industryta111Approximation algorithmPreferencemultiobjective evolutionary optimization algorithm020201 artificial intelligence & image processingArtificial intelligencebusinessoptimizationcomputer2016 IEEE Symposium Series on Computational Intelligence (SSCI)
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Exploring Multi-Objective Optimization for Multi-Label Classifier Ensembles

2019

Multi-label classification deals with the task of predicting multiple class labels for a given sample. Several performance metrics are designed in the literature to measure the quality of any multi-label classification technique. In general existing multi-label classification approaches focus on optimizing only a single performance measure. The current work builds on the hypothesis that a weighted ensemble of multiple multi-label classifiers will lead to obtain improved results. The appropriate weight combinations for combining the outputs of multiple classifiers can be selected after simultaneously optimizing different multi-label classification metrics like micro F1, hamming loss, 0/1 los…

Optimization problemLinear programmingbusiness.industryComputer science02 engineering and technologyMachine learningcomputer.software_genreMulti-objective optimizationComputingMethodologies_PATTERNRECOGNITION020204 information systems0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligencebusinessClassifier (UML)computer2019 IEEE Congress on Evolutionary Computation (CEC)
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A methodology for the semi-automatic generation of analytical models in manufacturing

2018

International audience; Advanced analytics can enable manufacturing engineers to improve product quality and achieve equipment and resource efficiency gains using large amounts of data collected during manufacturing. Manufacturing engineers, however, often lack the expertise to apply advanced analytics, relying instead on frequent consultations with data scientists. Furthermore, collaborations between manufacturing engineers and data scientists have resulted in highly specialized applications that are not relevant to broader use cases. The manufacturing industry can benefit from the techniques applied in these collaborations if they can be generalized for a wide range of manufacturing probl…

Optimization0209 industrial biotechnologySupport Vector MachineGeneral Computer ScienceProcess (engineering)Computer sciencemedia_common.quotation_subjectResource efficiencyComputerApplications_COMPUTERSINOTHERSYSTEMS02 engineering and technology020901 industrial engineering & automationManufacturing0202 electrical engineering electronic engineering information engineeringAdvanced analytics[INFO]Computer Science [cs]Quality (business)Use caseMillingmedia_commonGenetic AlgorithmArtificial Neural-Networkbusiness.industrySystemsGeneral EngineeringModel-basedNeural networkRegressionManufacturing engineeringProduct (business)ManufacturingSurface-RoughnessAnalytics020201 artificial intelligence & image processingDynamic Bayesian NetworksPerformance indicatorFault-DiagnosisPredictionbusinessComputers in Industry
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Deformable object segmentation in ultra-sound images

2013

Breast cancer is the second most common type of cancer being the leading cause of cancer death among females both in western and in economically developing countries. Medical imaging is key for early detection, diagnosis and treatment follow-up. Despite Digital Mammography (DM) remains the reference imaging modality, Ultra-Sound (US) imaging has proven to be a successful adjunct image modality for breast cancer screening, specially as a consequence of the discriminative capabilities that US offers for differentiating between solid lesions that are benign or malignant. Despite US usability,US suffers inconveniences due to its natural noise that compromises the diagnosis capabilities of radio…

OptimizationUltrasonore62Tesis i dissertacions acadèmiquesBag-of-wordsOptimization frameworkComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONOptimizaciónCàncer de mamaBreast cancerSegmentationCáncer de mamaMachine learning616UltrasoundOptimitzacióFeatures[SPI.SIGNAL] Engineering Sciences [physics]/Signal and Image processingUltrasòSegmentaciónSegmentació[SDV.IB.IMA] Life Sciences [q-bio]/Bioengineering/ImagingComputingMethodologies_PATTERNRECOGNITIONUltrasonidoBag-of-features616 - Patologia. Medicina clínica. OncologiaGraph-cutsMedical imaging62 - Enginyeria. Tecnologia
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Incidence of microorganisms from fresh orange juice processed by squeezing machines

2012

Abstract This study was carried out to evaluate the microbiological quality of orange juice obtained from squeezing machines in foodservice establishments. The samples included fresh squeezed orange juice and juice which is maintained in metal jugs until consumption. According to the European Commission Regulation (No. 2073/2005 and No. 1441/2007) and Spanish microbiological criteria (No. 3484/2000), 12% and 43% of the total examined lots exceed the adopted limits of mesophilic aerobic counts and Enterobacteriaceae, respectively. Possibly, this contamination is caused by incorrect handling of oranges and juices and also by inadequate cleaning and sanitization of squeezing machine and metal …

Orange juiceSalmonellaMicroorganismMicrobiological qualityContaminationMicrobiological qualitymedicine.disease_causeListeria monocytogenesmedicineEuropean commissionFood scienceOrange juiceSqueezing machineFood ScienceBiotechnologyMathematicsFood Control
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Comparing Boosting and Bagging for Decision Trees of Rankings

2021

AbstractDecision tree learning is among the most popular and most traditional families of machine learning algorithms. While these techniques excel in being quite intuitive and interpretable, they also suffer from instability: small perturbations in the training data may result in big changes in the predictions. The so-called ensemble methods combine the output of multiple trees, which makes the decision more reliable and stable. They have been primarily applied to numeric prediction problems and to classification tasks. In the last years, some attempts to extend the ensemble methods to ordinal data can be found in the literature, but no concrete methodology has been provided for preference…

Ordinal dataBoosting (machine learning)Preference learningEnsemble methodsComputer sciencebusiness.industryDecision tree learningDecision treesDecision treeLibrary and Information SciencesMachine learningcomputer.software_genreEnsemble learningBoostingMathematics (miscellaneous)RankingPattern recognition (psychology)Psychology (miscellaneous)Artificial intelligencePreference learningStatistics Probability and UncertaintybusinesscomputerRankings
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