Search results for " learning."

showing 10 items of 5179 documents

“I sámifize it...” : Preschool in the Centre of South Sámi Language and Culture Learning in Norway

2022

For an Indigenous population, there is a need for an inclusive educational space from the language and culture srevitalisation perspective. This is especially important during the early years when the basics of the language are formed alongside cultural knowledge. This paper takes a closer look at a South Sami preschool language learning environment through the lenses of teachers. The South Sami (South Saami) is the southernmost Sami population, frequently described as a minority within the minority. The estimation for South Sami speakers in Norway is around 300, making the language severely endangered This paper aims to take a closer look at how early childhood education teachers describe …

educationvarhaiskasvatuseteläsaameSámikielen elvytysvähemmistökieletindgeniouslanguage learningcultureesikoulualkuperäiskieletsaamelaiskieletalkuperäiskansatkielen oppiminensaamelaiskulttuuri
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STCMS: A Smart Thermal Comfort Monitor For Senior People

2020

Undoubtedly, the steady increase in the number of elderly people is not to be underestimated. These demographic changes call attention to new challenges regarding adequate aging-in-place strategies. Since the majority of the senior population spend up to 90% of their time indoors, appropriate and comfortable housing represents an important foundation for such strategies. In this respect, different types of data gathered from sensors, connected devices, and Internet of Things (IoT) technologies come to play an important role to support services for the elderly population in indoor environments. One of the aspects of concern is thermal comfort. In this paper, we introduce a new deep learning-…

education.field_of_study010504 meteorology & atmospheric sciencesbusiness.industryComputer scienceTerm memoryDeep learningPopulation0211 other engineering and technologiesThermal comfort02 engineering and technologyEnergy consumption01 natural sciencesThermostatData typelaw.inventionRisk analysis (engineering)Home automationlaw021108 energyArtificial intelligencebusinesseducation0105 earth and related environmental sciences2020 IEEE 29th International Conference on Enabling Technologies: Infrastructure for Collaborative Enterprises (WETICE)
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Natural induction: An objective bayesian approach

2009

The statistical analysis of a sample taken from a finite population is a classic problem for which no generally accepted objective Bayesian results seem to exist. Bayesian solutions to this problem may be very sensitive to the choice of the prior, and there is no consensus as to the appropriate prior to use.

education.field_of_studyAlgebra and Number Theorybusiness.industryApplied MathematicsBayesian probabilityPopulationBayes factorSample (statistics)Machine learningcomputer.software_genreBinomial distributionBayesian statisticsComputational MathematicsEconometricsBayesian hierarchical modelingGeometry and TopologyArtificial intelligencebusinesseducationcomputerAnalysisJeffreys priorMathematicsRevista de la Real Academia de Ciencias Exactas, Fisicas y Naturales. Serie A. Matematicas
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Principal Component and Neural Network Analyses of Face Images: What Can Be Generalized in Gender Classification?

1998

We present an overview of the major findings of the principal component analysis (pca) approach to facial analysis. In a neural network or connectionist framework, this approach is known as the linear autoassociator approach. Faces are represented as a weighted sum of macrofeatures (eigenvectors or eigenfaces) extracted from a cross-product matrix of face images. Using gender categorization as an illustration, we analyze the robustness of this type of facial representation. We show that eigenvectors representing general categorical information can be estimated using a very small set of faces and that the information they convey is generalizable to new faces of the same population and to a l…

education.field_of_studyArtificial neural networkbusiness.industryApplied MathematicsPopulationPattern recognitionMachine learningcomputer.software_genreComputingMethodologies_PATTERNRECOGNITIONEigenfaceCategorizationRobustness (computer science)Face (geometry)Principal component analysisArtificial intelligencebusinesseducationcomputerCategorical variableGeneral PsychologyMathematicsJournal of Mathematical Psychology
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DAE-GP

2020

Estimation of distribution genetic programming (EDA-GP) algorithms are metaheuristics where sampling new solutions from a learned probabilistic model replaces the standard mutation and recombination operators of genetic programming (GP). This paper presents DAE-GP, a new EDA-GP which uses denoising autoencoder long short-term memory networks (DAE-LSTMs) as probabilistic model. DAE-LSTMs are artificial neural networks that first learn the properties of a parent population by mapping promising candidate solutions to a latent space and reconstructing the candidate solutions from the latent space. The trained model is then used to sample new offspring solutions. We show on a generalization of t…

education.field_of_studyArtificial neural networkbusiness.industryComputer scienceOffspringPopulationProbabilistic logicGenetic programmingStatistical model0102 computer and information sciences02 engineering and technologyMachine learningcomputer.software_genre01 natural sciencesTree (data structure)Estimation of distribution algorithm010201 computation theory & mathematics0202 electrical engineering electronic engineering information engineering020201 artificial intelligence & image processingArtificial intelligencebusinesseducationcomputerMetaheuristicProceedings of the 2020 Genetic and Evolutionary Computation Conference
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Scatter Search for the Point-Matching Problem in 3D Image Registration

2008

Scatter search is a population-based method that has recently been shown to yield promising outcomes for solving combinatorial and nonlinear optimization problems. Based on formulations originally proposed in the 1960s for combining decision rules and problem constraints, such as the surrogate constraint method, scatter search uses strategies for combining solution vectors that have proved effective in a variety of problem settings. We present a scatter-search implementation designed to find high-quality solutions for the 3D image-registration problem, which has many practical applications. This problem arises in computer vision applications when finding a correspondence or transformation …

education.field_of_studyComputer scienceHeuristic (computer science)business.industryPopulationComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISIONGeneral EngineeringImage registrationPoint set registrationMachine learningcomputer.software_genreEvolutionary computationNonlinear programmingRobustness (computer science)Artificial intelligenceeducationbusinessMetaheuristicAlgorithmcomputerINFORMS Journal on Computing
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Inferring Learning Strategies from Cultural Frequency Data

2015

Social learning has been identified as one of the fundamentals of culture and therefore the understanding of why and how individuals use social information presents one of the big questions in cultural evolution. To date much of the theoretical work on social learning has been done in isolation of data. Evolutionary models often provide important insight into which social learning strategies are expected to have evolved but cannot tell us which strategies human populations actually use. In this chapter we explore how much information about the underlying learning strategies can be extracted by analysing the temporal occurrence or usage patterns of different cultural variants in a population…

education.field_of_studyComputer sciencebusiness.industryPopulationBayesian probabilityInferenceSocial learningMachine learningcomputer.software_genreData scienceCultural analysisArtificial intelligenceApproximate Bayesian computationeducationbusinessSociocultural evolutioncomputerGenerative grammar
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An adaption mechanism for the error threshold of XCSF

2020

Learning Classifier System (LCS) is a class of rule-based learning algorithms, which combine reinforcement learning (RL) and genetic algorithm (GA) techniques to evolve a population of classifiers. The most prominent example is XCS, for which many variants have been proposed in the past, including XCSF for function approximation. Although XCSF is a promising candidate for supporting autonomy in computing systems, it still must undergo parameter optimization prior to deployment. However, in case the later deployment environment is unknown, a-priori parameter optimization is not possible, raising the need for XCSF to automatically determine suitable parameter values at run-time. One of the mo…

education.field_of_studyLearning classifier systemComputer sciencePopulation0102 computer and information sciences02 engineering and technologyFunction (mathematics)01 natural sciencesSet (abstract data type)Function approximation010201 computation theory & mathematicsApproximation errorGenetic algorithm0202 electrical engineering electronic engineering information engineeringReinforcement learning020201 artificial intelligence & image processingeducationAlgorithmProceedings of the 2020 Genetic and Evolutionary Computation Conference Companion
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A hybrid genetic algorithm with local search

2001

Abstract A hybrid genetic algorithm with internal local search was developed for optimisations involving continuous variables. The reproduction probabilities were enhanced using the fitness values obtained when a local method was applied to each individual in the population. These estimations are more realistic, since consider not the apparent but the hidden, latent quality of each individual. The information gathered in the local search was also used to build an auxiliary population recording the successfully enhanced individuals, which allowed to detect the convergence and self-adapt the search limits. The size of this auxiliary population was kept constant by a cluster analysis strategy.…

education.field_of_studyMathematical optimizationbusiness.industryProcess Chemistry and TechnologyPopulation-based incremental learningPopulationComputer Science ApplicationsAnalytical ChemistryConvergence (routing)Genetic algorithmMemetic algorithmLocal search (optimization)DeconvolutionConstant (mathematics)educationbusinessAlgorithmSpectroscopySoftwareMathematicsChemometrics and Intelligent Laboratory Systems
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Set Membership (In) Validation of nonlinear positive models for biological systems

2006

The complexity of biology needs quantitative tools in order to support and validate biologists intuition and traditional qualitative descriptions. In this paper, Nonlinear Positive models with constraints for biological systems are validated/invalidated in a worst-case deterministic setting. These models are usefull for the analysis of the DNA and RNA evolution and for the description of the population dynamics of viruses and bacteria. The conditional central estimate and the Uncertainty Intervals are determined in order to validate/invalidate the model. The effectiveness of the proposed procedure has been illustrated by means of simulation experiments.

education.field_of_studyNonlinear systembusiness.industryModels of DNA evolutionPopulationArtificial intelligenceBioinformaticsbusinessMachine learningcomputer.software_genreeducationcomputerIntuition
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