Search results for "NEURAL NETWORK"

showing 10 items of 1385 documents

Revista electrónica de investigación y evaluación educativa

2018

Prevenir la deserción escolar requiere de un trabajo interprofesional que aborde de manera coordinada los múltiples factores individuales, escolares y estructurales que llevan a un joven a dejar la escolarización formal. Este estudio examina la configuración del trabajo interprofesional que se diseña e implementa en dos Departamentos Municipales de Educación en Chile para abordar la inasistencia y deserción de estudiantes en la educación secundaria creciendo en situación de vulnerabilidad social.  Los datos fueron producidos a través de entrevistas en profundidad con la participación de 63 personas, incluyendo a profesionales, apoderados y estudiantes. El modelo del primer caso está orienta…

Medical educationtrabajador socialSocial workpsicólogo escolarVulnerabilityabsentismodesfavorecido socialEducationWork (electrical)centro de enseñanzaIntervention (counseling)Agency (sociology)abandono de estudiosderecho a la educaciónTruancy:PEDAGOGÍA [UNESCO]ChileintervenciónPsychologysistema escolarPsychosocialUNESCO::PEDAGOGÍADropout (neural networks)
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Machine Learning to Predict In-Hospital Mortality in COVID-19 Patients Using Computed Tomography-Derived Pulmonary and Vascular Features

2021

Pulmonary parenchymal and vascular damage are frequently reported in COVID-19 patients and can be assessed with unenhanced chest computed tomography (CT), widely used as a triaging exam. Integrating clinical data, chest CT features, and CT-derived vascular metrics, we aimed to build a predictive model of in-hospital mortality using univariate analysis (Mann–Whitney U test) and machine learning models (support vectors machines (SVM) and multilayer perceptrons (MLP)). Patients with RT-PCR-confirmed SARS-CoV-2 infection and unenhanced chest CT performed on emergency department admission were included after retrieving their outcome (discharge or death), with an 85/15% training/test dataset spli…

Medicine (miscellaneous)X-ray computedtomography030204 cardiovascular system & hematologyMachine learningcomputer.software_genreArticlelung030218 nuclear medicine & medical imaging03 medical and health sciences0302 clinical medicinepulmonary arterymedicine.arterymedicinesupport vector machinecomputerUnivariate analysisLungbusiness.industryRArea under the curveCOVID-19Emergency departmentneural networksmachine learningmedicine.anatomical_structureRadiological weaponPulmonary arteryMann–Whitney U testMedicineprognosisArtificial intelligenceTomographybusinesscomputerJournal of Personalized Medicine
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Seasonal patterns of biodiversity in Mediterranean coastal lagoons

2019

Aim: Understanding and quantifying the seasonal patterns in biodiversity of phyto- benthos, macro-zoobenthos and fishes in Mediterranean coastal lagoons, and the species dependence upon environmental factors. Location: The study was carried out in the “Stagnone di Marsala e Saline di Trapani e Paceco,” the largest coastal lagoon system in the central Mediterranean Sea (Sicily, Italy), a Special Protection Area located along one of the central ecological corridors joining Africa and Europe. Methods: The coastal lagoon system was selected as a model ecosystem to investi- gate the seasonal variations in biodiversity indices and dominance–diversity relation- ships in phytobenthos, macro-zoobent…

Mediterranean climatefishSettore BIO/07 - EcologiaEcologySettore BIO/02 - Botanica SistematicaBiodiversityCommunity structureartificial neural networks biodiversity climate change community structure confirmatory path analysis fish lagoon systems phytobenthos ridge regression zoobenthosClimate changelagoon systemsartificial neural networks; biodiversity; climate change; community structure; confirmatory path analysis; fish; lagoon systems; phytobenthos; ridge regression; zoobenthosclimate changeridge regressionEnvironmental scienceFish <Actinopterygii>zoobenthoscommunity structureconfirmatory path analysisartificial neural networksEcology Evolution Behavior and Systematicsbiodiversityphytobenthos
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Modeling the Target-Note Technique of Bebop-Style Jazz Improvisation: An Artificial Neural Network Approach

1995

In cognitive science and research on artificial intelligence, there are two central paradigms: symbolic and analogical. Within the analogical paradigm, artificial neural networks (ANNs) have recently been successfully used to model and simulate cognitive phenomena. One of the most prominent features of ANNs is their ability to learn by example and, to a certain extent, generalize what they have learned. Improvisation, the art of spontaneously creating music while playing or singing, fundamentally has an imitative nature. Regardless of how much one studies and analyzes, the art of improvisation is learned mostly by example. Instead of memorizing explicit rules, the student mimics the playing…

MelodyImprovisationCognitive scienceArtificial neural networkComputer sciencebusiness.industrySupervised learningImitative learningContext (language use)MemorizationArtificial intelligencebusinessJazzMusicMusic Perception
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Simulating music with associative self-organizing maps

2018

Abstract We present an architecture able to recognise pitches and to internally simulate likely continuations of partially heard melodies. Our architecture consists of a novel version of the Associative Self-Organizing Map (A-SOM) with generalized ancillary connections. We tested the performance of our architecture with melodies from a publicly available database containing 370 Bach chorale melodies. The results showed that the architecture could learn to represent and perfectly simulate the remaining 20% of three different interrupted melodies when using a context length of 8 centres of activity in the A-SOM. These promising and encouraging results show that our architecture offers somethi…

MelodySelf-organizing mapComputer scienceCognitive NeuroscienceExperimental and Cognitive PsychologyContext (language use)02 engineering and technologycomputer.software_genre050105 experimental psychologyArtificial Intelligence0202 electrical engineering electronic engineering information engineering0501 psychology and cognitive sciencesInternal simulationArchitectureAssociative propertySettore ING-INF/05 - Sistemi Di Elaborazione Delle Informazionibusiness.industry05 social sciencesInformation and Computer ScienceNeural networkAssociative self-organizing map020201 artificial intelligence & image processingArtificial intelligencebusinesscomputerMusicNatural language processingBiologically Inspired Cognitive Architectures
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The Dreaming Variational Autoencoder for Reinforcement Learning Environments

2018

Reinforcement learning has shown great potential in generalizing over raw sensory data using only a single neural network for value optimization. There are several challenges in the current state-of-the-art reinforcement learning algorithms that prevent them from converging towards the global optima. It is likely that the solution to these problems lies in short- and long-term planning, exploration and memory management for reinforcement learning algorithms. Games are often used to benchmark reinforcement learning algorithms as they provide a flexible, reproducible, and easy to control environment. Regardless, few games feature a state-space where results in exploration, memory, and plannin…

Memory managementArtificial neural networkComputer sciencebusiness.industryBenchmark (computing)Feature (machine learning)Reinforcement learningArtificial intelligenceMarkov decision processbusinessAutoencoderGenerative grammar
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Neural Networks and Metabolic Networks: Fault Tolerance and Robustness Features

2009

The main objective of this work is the comparison between metabolic networks and neural networks (ANNs) in terms of their robustness and fault tolerance capabilities. In the context of metabolic networks errors are random removal of network nodes, while attacks are failures in the network caused intentionally. In the contest of neural networks errors are usually defined configurations of input submitted to the network that are affected by noise, while the failures are defined as the removal of some network neurons. This study have proven that ANNs are very robust networks, with respect to the presence of noise in the inputs, and the partial removal of some nodes, until it reached a critical…

Metabolic NetworkComplex NetworkNeural NetworkRobustness and Fault Tolerance comparison
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Neural Network Techniques for Metal Forming Design

1993

Neural networks are computing structures able to predict the behaviour of a system on the basis of the knowledge of facts; main characteristic of a network is the capability to find a rule in a very complex environment. In the paper a neural network, based on the results of FEM simulations, is utilized to predict the occurrence of defects in a forward extrusion metal forming process. In particular a three layers neural network, relating the operative parameters with the failure or the success of the working process, has been used and the back-propagation algorithm has been employed to train the network. Few experimental data were enough to train the neural network allowing to achieve better…

Metal formingBasis (linear algebra)Artificial neural networkComputer scienceProcess (computing)Experimental dataExtrusionData miningcomputer.software_genreLinear discriminant analysisMetal forming processcomputer
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Mapping daily global solar irradiation over Spain: A comparative study of selected approaches

2011

Abstract Three methods to estimate the daily global solar irradiation are compared: the Bristow–Campbell (BC), Artificial Neural Network (ANN) and Kernel Ridge Regression (KRR). BC is an empirical approach based on air maximum and minimum temperature. ANN and KRR are non-linear approaches that use temperature and precipitation data (which have been selected as the best combination of input data from a gamma test). The experimental dataset includes 4 years (2005–2008) of daily irradiation collected at 40 stations and temperature and precipitation data collected at 400 stations over Spain. Results show that the ANN method produces the best global solar irradiation estimates, with a mean absol…

MeteorologyArtificial neural networkRenewable Energy Sustainability and the EnvironmentKrigingKernel ridge regressionMean absolute errorEnvironmental scienceGeneral Materials ScienceIrradiationPrecipitationImage resolutionSolar Energy
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Applying Support Vector Machines for Gene Ontology based gene function prediction.

2004

Abstract Background The current progress in sequencing projects calls for rapid, reliable and accurate function assignments of gene products. A variety of methods has been designed to annotate sequences on a large scale. However, these methods can either only be applied for specific subsets, or their results are not formalised, or they do not provide precise confidence estimates for their predictions. Results We have developed a large-scale annotation system that tackles all of these shortcomings. In our approach, annotation was provided through Gene Ontology terms by applying multiple Support Vector Machines (SVM) for the classification of correct and false predictions. The general perform…

Methodology ArticleGenes FungalGenes ProtozoanComputational BiologyGenes Insectlcsh:Computer applications to medicine. Medical informaticsGenes PlantRatsMiceXenopus laevislcsh:Biology (General)GenesArtificial IntelligenceGenes BacterialPredictive Value of TestsDatabases Geneticlcsh:R858-859.7AnimalsNeural Networks Computerlcsh:QH301-705.5Genes HelminthBMC bioinformatics
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