Search results for "learning"

showing 10 items of 6669 documents

Evaluation of Record Linkage Methods for Iterative Insertions

2009

Summary Objectives: There have been many developments and applications of mathematical methods in the context of record linkage as one area of interdisciplinary research efforts. However, comparative evaluations of record linkage methods are still underrepresented. In this paper improvements of the Fellegi-Sunter model are compared with other elaborated classification methods in order to direct further research endeavors to the most promising methodologies. Methods: The task of linking records can be viewed as a special form of object identification. We consider several non-stochastic methods and procedures for the record linkage task in addition to the Fellegi-Sunter model and perform an e…

Boosting (machine learning)Medical Records Systems ComputerizedComputer scienceDecision treeHealth Informaticscomputer.software_genreMachine learningFuzzy LogicHealth Information ManagementGermanyExpectation–maximization algorithmHumansRegistriesAdvanced and Specialized NursingElectronic Data ProcessingModels Statisticalbusiness.industryData CollectionDecision TreesSupport vector machineClassification methodsMedical Record LinkageData miningArtificial intelligencebusinesscomputerAlgorithmsSoftwareRecord linkageMethods of Information in Medicine
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Learning to Navigate in the Gaussian Mixture Surface

2021

In the last years, deep learning models have achieved remarkable generalization capability on computer vision tasks, obtaining excellent results in fine-grained classification problems. Sophisticated approaches based-on discriminative feature learning via patches have been proposed in the literature, boosting the model performances and achieving the state-of-the-art over well-known datasets. Cross-Entropy (CE) loss function is commonly used to enhance the discriminative power of the deep learned features, encouraging the separability between the classes. However, observing the activation map generated by these models in the hidden layer, we realize that many image regions with low discrimin…

Boosting (machine learning)Settore INF/01 - InformaticaComputer scienceGeneralizationbusiness.industryDeep learningGaussianFine-grained image classification; Loss functionPattern recognitionConvolutional neural networkLoss functionImage (mathematics)symbols.namesakeFine-grained image classificationDiscriminative modelSettore MAT/05 - Analisi MatematicasymbolsArtificial intelligencebusinessFeature learning
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Bagging and Boosting with Dynamic Integration of Classifiers

2000

One approach in classification tasks is to use machine learning techniques to derive classifiers using learning instances. The co-operation of several base classifiers as a decision committee has succeeded to reduce classification error. The main current decision committee learning approaches boosting and bagging use resampling with the training set and they can be used with different machine learning techniques which derive base classifiers. Boosting uses a kind of weighted voting and bagging uses equal weight voting as a combining method. Both do not take into account the local aspects that the base classifiers may have inside the problem space. We have proposed a dynamic integration tech…

Boosting (machine learning)Training setbusiness.industryComputer sciencemedia_common.quotation_subjectWeighted votingMachine learningcomputer.software_genreBoosting methods for object categorizationRandom subspace methodComputingMethodologies_PATTERNRECOGNITIONEnsembles of classifiersVotingAdaBoostArtificial intelligenceGradient boostingbusinesscomputermedia_common
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Embedded System Study for Real Time Boosting Based Face Detection

2006

This paper describes a study for a real time embedded face detection system. Recently, the boosting based face detection algorithms proposed by [(Viola, P and Jone, M, 2001); (Lienhart, R, et al., 2003)] have gained a lot of attention and are considered as the fastest accurate face detection algorithms today. However, the embedded implementation of such algorithms into hardware is still a challenge, since these algorithms are heavily based on memory access. A sequential implementation model is built showing its lack of regularity in time consuming and speed of detection. We propose a parallel implementation that exploits the parallelism and the pipelining in these algorithms. This implement…

Boosting (machine learning)business.industryComputer scienceEmbedded systemReal-time computingDetectorFace detectionbusinessFacial recognition systemIECON 2006 - 32nd Annual Conference on IEEE Industrial Electronics
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Real-time flaw detection on a complex object: comparison of results using classification with a support vector machine, boosting, and hyperrectangle-…

2006

We present a classification work performed on industrial parts using artificial vision, a support vector machine (SVM), boost- ing, and a combination of classifiers. The object to be controlled is a coated heater used in television sets. Our project consists of detect- ing anomalies under manufacturer production, as well as in classi- fying the anomalies among 20 listed categories. Manufacturer speci- fications require a minimum of ten inspections per second without a decrease in the quality of the produced parts. This problem is ad- dressed by using a classification system relying on real-time ma- chine vision. To fulfill both real-time and quality constraints, three classification algorit…

Boosting (machine learning)business.industryComputer scienceMachine visionFeature extractionDecision treeFeature selectionPattern recognitionMachine learningcomputer.software_genreAtomic and Molecular Physics and OpticsComputer Science ApplicationsSupport vector machineStatistical classificationHyperrectangleComputingMethodologies_PATTERNRECOGNITIONArtificial intelligenceElectrical and Electronic EngineeringbusinesscomputerJournal of Electronic Imaging
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Real Time Robust Embedded Face Detection Using High Level Description

2011

Face detection is a fundamental prerequisite step in the process of face recognition. It consists of automatically finding all the faces in an image despite the considerable variations of lighting, background, appearance of people, position/orientation of faces, and their sizes. This type of object detection has the distinction of having a very large intra-class, making it a particularly difficult problem to solve, especially when one wishes to achieve real time processing. A human being has a great ability to analyze images. He can extract the information about it and focus only on areas of interest (the phenomenon of attention). Thereafter he can detect faces in an extremely reliable way.…

Boosting (machine learning)business.industryComputer scienceReal-time computingDetector02 engineering and technologyContent-based image retrievalFacial recognition systemObject detection020202 computer hardware & architecture[INFO.INFO-ES] Computer Science [cs]/Embedded Systems0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingComputer vision[INFO.INFO-ES]Computer Science [cs]/Embedded SystemsArtificial intelligence[ INFO.INFO-ES ] Computer Science [cs]/Embedded SystemsbusinessLinear combinationFace detectionImplementation
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Statistical Learning Algorithms to Forecast the Equity Risk Premium in the European Union

2018

With the explosion of “Big Data”, the application of statistical learning models has become popular in multiple scientific areas as well as in marketing, finance or other business disciplines. Nonetheless, there is not yet an abundant literature that covers the application of these learning algorithms to forecast the equity risk premium. In this paper we investigate whether Classification and Regression Trees (CART) algorithms and several ensemble methods, such as bagging, random forests and boosting, improve traditional parametric models to forecast the equity risk premium. In particular, we work with European Monetary Union data for a period that spans from the EMU foundation at the begin…

Boosting (machine learning)business.industryRisk premiumBig dataEnsemble learningRegressionRandom forestParametric modelEconomicsmedia_common.cataloged_instanceEuropean unionbusinessAlgorithmmedia_common
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Post-task Effects on EEG Brain Activity Differ for Various Differential Learning and Contextual Interference Protocols

2017

A large body of research has shown superior learning rates in variable practice compared to repetitive practice. More specifically, this has been demonstrated in the contextual interference (CI) and in the differential learning (DL) approach that are both representatives of variable practice. Behavioral studies have indicate different learning processes in CI and DL. Aim of the present study was to examine immediate post-task effects on electroencephalographic (EEG) brain activation patterns after CI and DL protocols that reveal underlying neural processes at the early stage of motor consolidation. Additionally, we tested two DL protocols (gradual DL, chaotic DL) to examine the effect of di…

Brain activity and meditationAlpha (ethology)ElectroencephalographySomatosensory system050105 experimental psychologylcsh:RC321-57103 medical and health sciencesBehavioral Neuroscience0302 clinical medicineText miningMotor systemmedicinedifferential learning0501 psychology and cognitive sciencesEEGlcsh:Neurosciences. Biological psychiatry. NeuropsychiatryBiological PsychiatryOriginal Researchcontextual interferencemedicine.diagnostic_testbusiness.industryrepetitive learning05 social sciencesCortex (botany)Psychiatry and Mental healthNeuropsychology and Physiological PsychologyNeurologyPsychologyMotor learningbusinessNeurosciencemotor learning030217 neurology & neurosurgeryNeuroscienceFrontiers in Human Neuroscience
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Class discovery from semi-structured EEG data for affective computing and personalisation

2017

The file attached to this record is the author's final peer reviewed version. The Publisher's final version can be found by following the DOI link. Many approaches to recognising emotions from metrical data such as EEG signals rely on identifying a very small number of classes and to train a classifier. The interpretation of these classes varies from a single emotion such as stress [24] to features of emotional model such as valence-arousal [4]. There are two major issues here. First classification approach limits the analysis of the data within the selected classes and is also highly dependent on training data/cycles, all of which limits generalisation. Second issue is that it does not exp…

Brain modelingComputer scienceFeature extraction02 engineering and technologyElectroencephalographyMachine learningcomputer.software_genrePersonalizationCorrelationDEAP03 medical and health sciences0302 clinical medicine0202 electrical engineering electronic engineering information engineeringmedicineCluster analysisAffective computingmedicine.diagnostic_testbusiness.industryElectroencephalographySelf-organizing feature mapsFeature extraction020201 artificial intelligence & image processingArtificial intelligenceEmotion recognitionbusinessClassifier (UML)computer030217 neurology & neurosurgery
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3D DCE-MRI Radiomic Analysis for Malignant Lesion Prediction in Breast Cancer Patients

2022

Rationale and Objectives: To develop and validate a radiomic model, with radiomic features extracted from breast Dynamic Contrast-Enhanced Magnetic Resonance Imaging (DCE-MRI) from a 1.5T scanner, for predicting the malignancy of masses with enhancement. Images were acquired using an 8-channel breast coil in the axial plane. The rationale behind this study is to show the feasibility of a radio-mics-powered model that could be integrated into the clinical practice by exploiting only standard-of-care DCE-MRI with the goal of reducing the required image pre-processing (ie, normalization and quantitative imaging map generation).Materials and Methods: 107 radiomic features were extracted from a …

Breast cancer Dynamic contrast-enhanced magnetic resonance imagingSupport Vector MachineComputer scienceNormalization (image processing)Breast NeoplasmsFeature selectionBreast cancerBreast cancerDiscriminative modelmedicineHumansRadiology Nuclear Medicine and imagingBreastRetrospective StudiesDynamic contrast-enhanced magnetic resonance imagingRadiomicsSupport vector machinesReceiver operating characteristicbusiness.industryPattern recognitionmedicine.diseaseMagnetic Resonance Imagingmachine learning Radiomics unsupervised feature selection Support vector machinesSupport vector machinemachine learningROC CurveFeature (computer vision)Test setFemaleArtificial intelligenceSettore MED/36 - Diagnostica Per Immagini E Radioterapiabusinessunsupervised feature selectionBreast cancer Dynamic contrast-enhanced magnetic resonance imaging; machine learning Radiomics unsupervised feature selection Support vector machinesAcademic Radiology
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