Search results for "Nonparametric"

showing 10 items of 427 documents

Prenatal exposure to mixtures of xenoestrogens and repetitive element DNA methylation changes in human placenta

2014

BACKGROUND: Prenatal exposure to endocrine disrupting compounds (EDCs) has previously shown to alter epigenetic marks. OBJECTIVES: In this work we explore whether prenatal exposure to mixtures of xenoestrogens has the potential to alter the placenta epigenome, by studying DNA methylation in retrotransposons as a surrogate of global DNA methylation. METHODS: The biomarker total effective xenoestrogen burden (TEXB) was measured in 192 placentas from participants in the longitudinal INMA Project. DNA methylation was quantitatively assessed by bisulfite pyrosequencing on 10 different retrotransposons including 3 different long interspersed nuclear elements (LINEs), 4 short interspersed nuclear …

Embaràs -- ComplicacionsAdultMalemedicine.medical_specialtyPlacentaEndocrine Disruptors010501 environmental sciencesBiology01 natural sciencesStatistics NonparametricArticleRepetitive ElementCohort Studies03 medical and health sciencesSex FactorsPregnancyInternal medicinePlacentamedicineHumansEndocrine systemLongitudinal StudiesEpigeneticsPrenatal exposurelcsh:Environmental sciencesChromatography High Pressure Liquid030304 developmental biology0105 earth and related environmental sciencesGeneral Environmental Sciencelcsh:GE1-3500303 health sciencesEstrogensHuman placentaDNA Methylation3. Good healthPlacenta -- MetabolismeBiomarkerLong Interspersed Nucleotide ElementsEndocrinologymedicine.anatomical_structureMaternal ExposureSpainDNA methylationBody BurdenRegression AnalysisEnvironmental PollutantsFemaleMetilacióEnvironment International
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Alternated estimation in semi-parametric space-time branching-type point processes with application to seismic catalogs

2014

An estimation approach for the semi-param-etric intensity function of a class of space-time point processes is introduced. In particular we want to account for the estimation of parametric and nonparametric components simultaneously, applying a forward predictive likelihood to semi-parametric models. For each event, the probability of being a background event or an offspring is therefore estimated.

Environmental EngineeringEnvironmental Chemistrynonparametric estimation forward predictive likelihood ETAS modelpoint processearthquakes.Safety Risk Reliability and QualityGeneral Environmental ScienceWater Science and Technology
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Spatial pattern analysis using hybrid models: an application to the Hellenic seismicity

2016

Earthquakes are one of the most destructive natural disasters and the spatial distribution of their epi- centres generally shows diverse interaction structures at different spatial scales. In this paper, we use a multi-scale point pattern model to describe the main seismicity in the Hellenic area over the last 10 years. We analyze the interaction between events and the relationship with geo- logical information of the study area, using hybrid models as proposed by Baddeley et al. ( 2013 ). In our analysis, we find two competing suitable hybrid models, one with a full parametric structure and the other one based on nonpara- metric kernel estimators for the spatial inhomogeneity.

Environmental EngineeringInduced seismicity010502 geochemistry & geophysicsSpatial distribution01 natural sciencespoint process residualhellenic earthquakes010104 statistics & probabilityhybrids of gibbs point processesspatial covariatesEconometricsEnvironmental ChemistryPoint (geometry)spatial point processes0101 mathematicsSafety Risk Reliability and Quality0105 earth and related environmental sciencesGeneral Environmental ScienceWater Science and TechnologyParametric statisticsspatial covariatepoint process residualsNonparametric statisticsEstimatorspatial point processes.Kernel (statistics)hybrids of Gibbs point processeCommon spatial patternHellenic earthquakeSeismologyGeology
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Nonparametric estimation of quantile versions of the Lorenz curve

2018

Estimation010104 statistics & probabilityGeneral MathematicsNonparametric statisticsApplied mathematicsDecision Sciences (miscellaneous)010103 numerical & computational mathematics0101 mathematicsLorenz curve01 natural sciencesMathematicsQuantileMathematica Applicanda
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Non-parametric probabilistic forecasting of academic performance in Spanish high school using an epidemiological modelling approach

2013

Academic underachievement is a concern of paramount importance in Europe, and particularly in Spain, where around of 30% of the students in the last two courses in high school do not achieve the minimum knowledge academic requirement. In order to analyse this problem, we propose a mathematical model via a system of ordinary differential equations to study the dynamics of the academic performance in Spain. Our approach is based on the idea that both, good and bad study habits, are a mixture of personal decisions and influence of classmates. Moreover, in order to consider the uncertainty in the estimation of model parameters, a bootstrapping approach is employed. This technique permits to for…

EstimationComputer scienceBootstrappingApplied MathematicsNonparametric statisticsUncertaintyModel parametersConfidence intervalModellingComputational MathematicsTransmission dynamicsOrder (exchange)EconometricsBootstrappingProbabilistic forecastingAcademic underachievementPredictionMATEMATICA APLICADA
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Estimation of ordered response models with sample selection

2011

We introduce two new Stata commands for the estimation of an ordered response model with sample selection. The opsel command uses a standard maximum-likelihood approach to fit a parametric specification of the model where errors are assumed to follow a bivariate Gaussian distribution. The snpopsel command uses the semi-nonparametric approach of Gallant and Nychka (1987, Econometrica 55: 363–390) to fit a semiparametric specification of the model where the bivariate density function of the errors is approximated by a Hermite polynomial expansion. The snpopsel command extends the set of Stata routines for semi-nonparametric estimation of discrete response models. Compared to the other semi-n…

EstimationSample selectionHermite polynomialsResponse modelComputer scienceEstimatorSettore SECS-P/05 - EconometriaProbability density functionBivariate analysisst0226 opsel opsel postestimation sneop sneop postestimation snp2 snp2 postestimation snp2s snp2s postestimation snpopsel snpopsel postestimation snp snp postestimation ordered response models sample selection parametric maximum-likelihood estimation semi-nonparametric estimationSet (abstract data type)Mathematics (miscellaneous)StatisticsSettore SECS-P/01 - Economia PoliticaAlgorithmMathematicsParametric statistics
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B-Spline Estimation in a Survey Sampling Framework

2021

Nonparametric regression models have been used more and more over the last years to model survey data and incorporate efficiently auxiliary information in order to improve the estimation of totals, means or other study parameters such as Gini index or poverty rate. B-spline nonparametric regression has the benefit of being very flexible in modeling nonlinear survey data while keeping many similarities and properties of the classical linear regression. This method proved to be efficient for deriving a unique system of weights which allowed to estimate in an efficient way and simultaneously many study parameters. Applications on real and simulated survey data showed its high efficiency. This …

EstimationStatistics::TheoryComputer scienceConsistency (statistics)B-splineLinear regressionStatisticsStatistics::MethodologySurvey data collectionEstimatorSurvey samplingNonparametric regression
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Joint Gaussian Processes for Biophysical Parameter Retrieval

2017

Solving inverse problems is central to geosciences and remote sensing. Radiative transfer models (RTMs) represent mathematically the physical laws which govern the phenomena in remote sensing applications (forward models). The numerical inversion of the RTM equations is a challenging and computationally demanding problem, and for this reason, often the application of a nonlinear statistical regression is preferred. In general, regression models predict the biophysical parameter of interest from the corresponding received radiance. However, this approach does not employ the physical information encoded in the RTMs. An alternative strategy, which attempts to include the physical knowledge, co…

FOS: Computer and information sciencesHyperparameter010504 meteorology & atmospheric sciencesComputer scienceRemote sensing application0211 other engineering and technologiesMachine Learning (stat.ML)Regression analysis02 engineering and technologyInverse problem01 natural sciencesMachine Learning (cs.LG)Data modelingNonparametric regressionComputer Science - Learningsymbols.namesakeStatistics - Machine LearningRadiative transfersymbolsGeneral Earth and Planetary SciencesElectrical and Electronic EngineeringGaussian processAlgorithm021101 geological & geomatics engineering0105 earth and related environmental sciencesIEEE Transactions on Geoscience and Remote Sensing
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Bayesian inference for the extremal dependence

2016

A simple approach for modeling multivariate extremes is to consider the vector of component-wise maxima and their max-stable distributions. The extremal dependence can be inferred by estimating the angular measure or, alternatively, the Pickands dependence function. We propose a nonparametric Bayesian model that allows, in the bivariate case, the simultaneous estimation of both functional representations through the use of polynomials in the Bernstein form. The constraints required to provide a valid extremal dependence are addressed in a straightforward manner, by placing a prior on the coefficients of the Bernstein polynomials which gives probability one to the set of valid functions. The…

FOS: Computer and information sciencesStatistics and ProbabilityInferenceBernstein polynomialsBivariate analysisBayesian inference01 natural sciencesMethodology (stat.ME)Bayesian nonparametrics010104 statistics & probabilitysymbols.namesakeGeneralised extreme value distribution0502 economics and business62G07Applied mathematics62G05Degree of a polynomial0101 mathematicsStatistics - Methodology050205 econometrics MathematicsAngular measureMax-stable distributionGENERALISED EXTREME VALUE DISTRIBUTION EXTREMAL DEPENDENCE ANGULAR MEASURE MAX-STABLE DISTRIBUTION BERNSTEIN POLYNOMIALS BAYESIAN NONPARAMETRICS TRANS-DIMENSIONAL MCMC EXCHANGE RATEExchange rates05 social sciencesNonparametric statisticsMarkov chain Monte CarloBernstein polynomialGENERALISED EXTREME VALUE DISTRIBUTION; EXTREMAL DEPENDENCE; ANGULAR MEASURE; MAX-STABLE DISTRIBUTION; BERNSTEIN POLYNOMIALS; BAYESIAN NONPARAMETRICS; TRANS-DIMENSIONAL MCMC; EXCHANGE RATETrans-dimensional MCMCEXCHANGE RATEsymbolsStatistics Probability and UncertaintySettore SECS-S/01 - StatisticaMaximaExtremal dependence62G32Electronic Journal of Statistics
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Estimating with kernel smoothers the mean of functional data in a finite population setting. A note on variance estimation in presence of partially o…

2014

In the near future, millions of load curves measuring the electricity consumption of French households in small time grids (probably half hours) will be available. All these collected load curves represent a huge amount of information which could be exploited using survey sampling techniques. In particular, the total consumption of a specific cus- tomer group (for example all the customers of an electricity supplier) could be estimated using unequal probability random sampling methods. Unfortunately, data collection may undergo technical problems resulting in missing values. In this paper we study a new estimation method for the mean curve in the presence of missing values which consists in…

FOS: Computer and information sciencesStatistics and ProbabilityPopulationRatio estimatorLinearizationRatio estimator01 natural sciencesSurvey sampling.Horvitz–Thompson estimatorMethodology (stat.ME)010104 statistics & probabilityH\'ajek estimator0502 economics and businessApplied mathematicsMissing valuesHorvitz-Thompson estimator0101 mathematicseducationStatistics - Methodology050205 econometrics MathematicsPointwiseeducation.field_of_study[STAT.ME] Statistics [stat]/Methodology [stat.ME]05 social sciencesNonparametric statisticsEstimator16. Peace & justiceMissing dataFunctional data[ STAT.ME ] Statistics [stat]/Methodology [stat.ME]Kernel (statistics)Statistics Probability and UncertaintyNonparametric estimation[STAT.ME]Statistics [stat]/Methodology [stat.ME]
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