Search results for "Estimation"

showing 10 items of 924 documents

A spatial analysis of new business formation: Replicative vs innovative behaviour

2017

Abstract Using spatial econometric tools, the paper examines the spatial structure of new business formation of Italian regions during the period 2004–2007. In particular, the study empirically investigates whether new business formation in a given geographical area may be explained in terms of replicative and/or innovative entrepreneurial behaviour in each area as well as in the neighbouring areas. Additionally, the analysis focuses on the influence of urbanization on the birth of new firms. From the estimation of a Spatial Durbin Model, we find a significant degree of spatial dependence among Italian regions not only in new business formation but also in some of its determinants. We also …

Statistics and ProbabilityEstimationSpatial structureUrbanization05 social sciencesSpatial analysis0211 other engineering and technologies021107 urban & regional planning02 engineering and technologyManagement Monitoring Policy and LawDegree (music)Replicative and innovative behaviourUrbanizationSettore SECS-S/03 - Statistica Economica0502 economics and businessEconomicsEconomic geography050207 economicsComputers in Earth SciencesSpatial dependenceNew business formationSpatial Statistics
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Visualizing parameters from loglinear models

2004

This paper presents a graphical display for the parameters resulting from loglinear models. Loglinear models provide a method for analyzing associations between two or several categorical variables and have become widely accepted as a tool for researchers during the last two decades. An important part of the output of any computer program focused on loglinear models is that devoted to estimation of parameters in the model. Traditionally, this output has been presented using tables that indicate the values of the coefficients, the associated standard errors and other related information. Evaluation of these tables can be rather tedious because of the number of values shown as well as their r…

Statistics and ProbabilityEstimationStructure (mathematical logic)Computer programComputer scienceGraphical displaycomputer.software_genreComputational MathematicsStandard errorLog-linear modelData miningStatistics Probability and UncertaintycomputerStatistical graphicsCategorical variable
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Absolute Risk and Loss-of-Lifetime Estimates for Quantitative Risk Assessment

1998

Quantitative risk assessments in public health settings intend to describe the hazard of a specific exposure in a given population on the basis of epidemiological and/or experimental results. Two different risk quantities, the absolute lifetime excess risk and the loss-of-lifetime, which differ in their definition of hazard, are discussed and compared. For both measures estimation procedures are derived and the relationship between the various estimates which are currently in use are investigated. It is shown that the two most common estimators can be written as special cases of a more general concept. This leads to conclusions about the assumptions on which different estimation procedures …

Statistics and ProbabilityEstimationeducation.field_of_studyPopulationAbsolute risk reductionEstimatorGeneral MedicineVariance (accounting)Residential radonHazardStatisticsEconometricsStatistics Probability and UncertaintyeducationRisk assessmentMathematicsBiometrical Journal
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A Software Tool for the Exponential Power Distribution: The normalp Package

2005

In this paper we present the normalp package, a package for the statistical environment R that has a set of tools for dealing with the exponential power distribution. In this package there are functions to compute the density function, the distribution function and the quantiles from an exponential power distribution and to generate pseudo-random numbers from the same distribution. Moreover, methods concerning the estimation of the distribution parameters are described and implemented. It is also possible to estimate linear regression models when we assume the random errors distributed according to an exponential power distribution. A set of functions is designed to perform simulation studi…

Statistics and ProbabilityExponential distributionTheoretical computer scienceComputer scienceAsymptotic distributionDistribution fittingLaplace distributionExponential familyGamma distributionStatistics Probability and UncertaintyNatural exponential familyProbability integral transformAlgorithmlcsh:Statisticslcsh:HA1-4737exponential power distribution R estimation linear regressionSoftwareJournal of Statistical Software
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A computationally fast alternative to cross-validation in penalized Gaussian graphical models

2015

We study the problem of selection of regularization parameter in penalized Gaussian graphical models. When the goal is to obtain the model with good predicting power, cross validation is the gold standard. We present a new estimator of Kullback-Leibler loss in Gaussian Graphical model which provides a computationally fast alternative to cross-validation. The estimator is obtained by approximating leave-one-out-cross validation. Our approach is demonstrated on simulated data sets for various types of graphs. The proposed formula exhibits superior performance, especially in the typical small sample size scenario, compared to other available alternatives to cross validation, such as Akaike's i…

Statistics and ProbabilityFOS: Computer and information sciencesGaussianInformation CriteriaCross-validationMethodology (stat.ME)symbols.namesakeBayesian information criterionStatisticsPenalized estimationGeneralized approximate cross-validationGraphical modelSDG 7 - Affordable and Clean EnergyStatistics - MethodologyMathematics/dk/atira/pure/sustainabledevelopmentgoals/affordable_and_clean_energyKullback-Leibler loApplied MathematicsEstimatorCross-validationGaussian graphical modelSample size determinationModeling and SimulationsymbolsInformation criteriaStatistics Probability and UncertaintyAkaike information criterionSettore SECS-S/01 - StatisticaAlgorithm
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Multivariate nonparametric estimation of the Pickands dependence function using Bernstein polynomials

2017

Abstract Many applications in risk analysis require the estimation of the dependence among multivariate maxima, especially in environmental sciences. Such dependence can be described by the Pickands dependence function of the underlying extreme-value copula. Here, a nonparametric estimator is constructed as the sample equivalent of a multivariate extension of the madogram. Shape constraints on the family of Pickands dependence functions are taken into account by means of a representation in terms of Bernstein polynomials. The large-sample theory of the estimator is developed and its finite-sample performance is evaluated with a simulation study. The approach is illustrated with a dataset of…

Statistics and ProbabilityFOS: Computer and information sciencesMultivariate statisticsNONPARAMETRIC ESTIMATIONMULTIVARIATE MAX-STABLE DISTRIBUTION01 natural sciencesCopula (probability theory)Methodology (stat.ME)010104 statistics & probabilityStatisticsStatistics::Methodology0101 mathematicsExtreme-value copulaEXTREMAL DEPENDENCEEXTREMEVALUE COPULA[SDU.ENVI]Sciences of the Universe [physics]/Continental interfaces environmentStatistics - MethodologyComputingMilieux_MISCELLANEOUSMathematics[SDU.OCEAN]Sciences of the Universe [physics]/Ocean AtmosphereApplied Mathematics010102 general mathematicsNonparametric statisticsEstimatorExtremal dependenceHEAVY RAINFALLBernstein polynomialBERNSTEIN POLYNOMIALS EXTREMAL DEPENDENCE EXTREMEVALUE COPULA HEAVY RAINFALL NONPARAMETRIC ESTIMATION MULTIVARIATE MAX-STABLE DISTRIBUTION PICKANDS DEPENDENCE FUNCTION13. Climate actionDependence functionStatistics Probability and UncertaintyMaximaSettore SECS-S/01 - StatisticaBERNSTEIN POLYNOMIALSPICKANDS DEPENDENCE FUNCTION
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Bayesian models for data missing not at random in health examination surveys

2018

In epidemiological surveys, data missing not at random (MNAR) due to survey nonresponse may potentially lead to a bias in the risk factor estimates. We propose an approach based on Bayesian data augmentation and survival modelling to reduce the nonresponse bias. The approach requires additional information based on follow-up data. We present a case study of smoking prevalence using FINRISK data collected between 1972 and 2007 with a follow-up to the end of 2012 and compare it to other commonly applied missing at random (MAR) imputation approaches. A simulation experiment is carried out to study the validity of the approaches. Our approach appears to reduce the nonresponse bias substantially…

Statistics and ProbabilityFOS: Computer and information sciencesmedicine.medical_specialtymultiple imputationComputer scienceBayesian probability01 natural sciencesStatistics - Applicationssurvival analysisfollow-up dataMethodology (stat.ME)010104 statistics & probability03 medical and health sciencesHealth examination0302 clinical medicineEpidemiologyStatisticsmedicineApplications (stat.AP)030212 general & internal medicine0101 mathematicsSurvival analysisStatistics - MethodologyBayes estimatorta112elinaika-analyysiRisk factor (computing)Bayesian estimation3. Good healthhealth examination surveysStatistics Probability and UncertaintyMissing not at randomdata augmentation
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Explaining German outward FDI in the EU: a reassessment using Bayesian model averaging and GLM estimators

2021

The last decades have seen an increasing interest in FDI and the process of production fragmentation. This has been particularly important for Germany as the core of the European Union (EU) production hub. This paper attempts to provide a deeper under standing of the drivers of German outward FDI in the EU for the period 1996–2012 by tackling the two main challenges faced in the modelization of FDI, namely the variable selection problem and the choice of the estimation method. For that purpose, we first extend previous BMA analysis developed by Camarero et al. (Econ Model 83:326–345, 2019) by including country-pair-fixed effects to select the appropriate set of variables. Second, we compare…

Statistics and ProbabilityGeneralized linear modelFDI determinantsEconomics and Econometricsgravity modelsForeign direct investmentgermanyBayesian inferenceGermanMathematics (miscellaneous)Germany0502 economics and businessEconomicsEconometricsmedia_common.cataloged_instanceC13050207 economicsEuropean unionC33050205 econometrics media_commonEstimation05 social sciencesEstimatorUNESCO::CIENCIAS ECONÓMICASInvestment (macroeconomics)language.human_languageGravity modelsOutward FDIlanguageoutward FDIF21F23GLMSocial Sciences (miscellaneous)
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Intrinsic credible regions: An objective Bayesian approach to interval estimation

2005

This paper definesintrinsic credible regions, a method to produce objective Bayesian credible regions which only depends on the assumed model and the available data.Lowest posterior loss (LPL) regions are defined as Bayesian credible regions which contain values of minimum posterior expected loss: they depend both on the loss function and on the prior specification. An invariant, information-theory based loss function, theintrinsic discrepancy is argued to be appropriate for scientific communication. Intrinsic credible regions are the lowest posterior loss regions with respect to the intrinsic discrepancy loss and the appropriate reference prior. The proposed procedure is completely general…

Statistics and ProbabilityInterval estimationBayesian probabilityConfidence intervalsymbols.namesakeFrequentist inferenceStatisticssymbolsCredible intervalApplied mathematicsPoint estimationStatistics Probability and UncertaintyFisher informationExpected lossMathematicsTEST
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Clustering of spatial point patterns

2006

Spatial point patterns arise as the natural sampling information in many problems. An ophthalmologic problem gave rise to the problem of detecting clusters of point patterns. A set of human corneal endothelium images is given. Each image is described by using a point pattern, the cell centroids. The main problem is to find groups of images corresponding with groups of spatial point patterns. This is interesting from a descriptive point of view and for clinical purposes. A new image can be compared with prototypes of each group and finally evaluated by the physician. Usual descriptors of spatial point patterns such as the empty-space function, the nearest distribution function or Ripley's K-…

Statistics and ProbabilityK-functionbusiness.industryApplied MathematicsCentroidPattern recognitionFunction (mathematics)Point processComputational MathematicsComputational Theory and MathematicsSurvival functionStatisticsPoint (geometry)Artificial intelligencePoint estimationCluster analysisbusinessMathematicsComputational Statistics & Data Analysis
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