Search results for " Normal"

showing 10 items of 336 documents

A matrix-valued Bernoulli distribution

2006

AbstractMatrix-valued distributions are used in continuous multivariate analysis to model sample data matrices of continuous measurements; their use seems to be neglected for binary, or more generally categorical, data. In this paper we propose a matrix-valued Bernoulli distribution, based on the log-linear representation introduced by Cox [The analysis of multivariate binary data, Appl. Statist. 21 (1972) 113–120] for the Multivariate Bernoulli distribution with correlated components.

Statistics and ProbabilityNumerical AnalysisDISCRETEMODELSMatrix t-distributionMultivariate normal distributionMatrix-valued distributionsBINARYNormal-Wishart distributionBinomial distributionBernoulli distributionCategorical distributionStatisticsApplied mathematicsBernoulli processStatistics Probability and UncertaintyCorrelated multivariate binary responsesMathematicsMultivariate stable distributionMultivariate Bernoulli distributionJournal of Multivariate Analysis
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Regression models for multivariate ordered responses via the Plackett distribution

2008

AbstractWe investigate the properties of a class of discrete multivariate distributions whose univariate marginals have ordered categories, all the bivariate marginals, like in the Plackett distribution, have log-odds ratios which do not depend on cut points and all higher-order interactions are constrained to 0. We show that this class of distributions may be interpreted as a discretized version of a multivariate continuous distribution having univariate logistic marginals. Convenient features of this class relative to the class of ordered probit models (the discretized version of the multivariate normal) are highlighted. Relevant properties of this distribution like quadratic log-linear e…

Statistics and ProbabilityNumerical AnalysisMultivariate statisticsGlobal logitsLogistic distributionUnivariateMultivariate normal distributionmultivariate ordered responseProportional oddsBivariate analysisMarginal modelsPlackett distribution.Plackett distributionUnivariate distribution62H05Statistics62J12Statistics::Methodology60E15Statistics Probability and UncertaintyMarginal distributionMultivariate ordered regressionMathematicsMultivariate stable distributionJournal of Multivariate Analysis
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Adaptive designs with correlated test statistics

2009

In clinical trials, the collected observations such as clustered data or repeated measurements are often correlated. As a consequence, test statistics in a multistage design are correlated. Adaptive designs were originally developed for independent test statistics. We present a general framework for two-stage adaptive designs with correlated test statistics. We show that the significance level for the Bauer-Köhne design is inflated for positively correlated test statistics from a bivariate normal distribution. The decision boundary for the second stage can be modified so that type one error is controlled. This general concept is expandable to other adaptive designs. In order to use these de…

Statistics and ProbabilityOptimal designClinical Trials as TopicBiometryModels StatisticalEpidemiologyCovariance matrixMultivariate normal distributionWald testGeneralized linear mixed modelExact testSample size determinationStatisticsLinear ModelsHumansMathematicsStatistical hypothesis testingStatistics in Medicine
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Tests of Linearity, Multivariate Normality and the Adequacy of Linear Scores

1994

After some discussion of the purposes of testing multivariate normality, the paper concentrates on two different approaches to testing linearity: on repeated regression tests of non-linearity and on exploiting properties of a dichotomized normal distribution. Regression tests of linearity are used to examine the adequacy of linear scoring systems for explanatory variables, initially recorded on an ordinal scale. Examples from recent psychological and medical research are given in which the methods have led to some insight into subject-matter.

Statistics and ProbabilityOrdinal dataNormal distributionNormality testRegression testingOrdinal ScaleStatisticsEconometricsMultivariate normal distributionVariance (accounting)Statistics Probability and UncertaintyStatistical hypothesis testingMathematicsApplied Statistics
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On (n-l)-wise and joint independence and normality of n Random variables: an example

1981

An example is given of a vector of n random variables such that any (n-1)-dimensional subvector consists of n-1 independent standard normal variables. The whole vector however is neither independent nor normal.

Statistics and ProbabilityPairwise independenceCombinatoricsExchangeable random variablesIndependent and identically distributed random variablesStandard normal deviateMultivariate random variableSum of normally distributed random variablesStatisticsMarginal distributionCentral limit theoremMathematicsCommunications in Statistics - Theory and Methods
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Affine equivariant multivariate rank methods

2003

The classical multivariate statistical methods (MANOVA, principal component analysis, multivariate multiple regression, canonical correlation, factor analysis, etc.) assume that the data come from a multivariate normal distribution and the derivations are based on the sample covariance matrix. The conventional sample covariance matrix and consequently the standard multivariate techniques based on it are, however, highly sensitive to outlying observations. In the paper a new, more robust and highly efficient, approach based on an affine equivariant rank covariance matrix is proposed and outlined. Affine equivariant multivariate rank concept is based on the multivariate Oja (Statist. Probab. …

Statistics and ProbabilityPure mathematicsApplied MathematicsMatrix t-distributionMultivariate normal distributionNormal-Wishart distributionCombinatoricsEstimation of covariance matricesScatter matrixStatistics::MethodologyMatrix normal distributionMultivariate t-distributionStatistics Probability and UncertaintyMathematicsMultivariate stable distributionJournal of Statistical Planning and Inference
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An approximation to maximum likelihood estimates in reduced models

1990

SUMMARY An approximation to the maximum likelihood estimates of the parameters in a model can be obtained from the corresponding estimates and information matrices in an extended model, i.e. a model with additional parameters. The approximation is close provided that the data are consistent with the first model. Applications are described to log linear models for discrete data, to models for multivariate normal distributions with special covariance matrices and to mixed discrete-continuous models.

Statistics and ProbabilityRestricted maximum likelihoodApplied MathematicsGeneral MathematicsMaximum likelihoodMultivariate normal distributionMaximum likelihood sequence estimationCovarianceAgricultural and Biological Sciences (miscellaneous)Extended modelStatisticsExpectation–maximization algorithmLog-linear modelStatistics Probability and UncertaintyGeneral Agricultural and Biological SciencesMathematicsBiometrika
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Subdifferential and conjugate calculus of integral functions with and without qualification conditions

2023

We characterize the subdifferential and the Fenchel conjugate of convex integral functions by means of respectively the approximate subdifferential and the conjugate of the associated convex normal integrands. The results are stated in Suslin locally convex spaces, and do not require continuity-type qualification conditions on the functions, nor special topological or algebraic structures on the index set. Consequently, when confined to separable Banach spaces, the characterizations of such a subdifferential are obtained using only the exact subdifferential of the given integrand but at nearby points. We also provide some simplifications of our formulas when additional continuity conditions…

Subdifferentialsconvex normal integrandsConvex normal integrandsSuslin spacessub-differentialsSuslin spaces. Mathematics Subject Classi…cation (2010): 26B0526J25[MATH.MATH-OC] Mathematics [math]/Optimization and Control [math.OC]49H05Integral functions and functionals
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Intersectionalities, dis/abilities and subjectification in deaf LGBT people: An exploratory study in Sicily

2016

The article discusses the multiple discrimination, normalization and stigmatization experienced by deaf LGBT youth in Sicily, Italy, on the basis of a study of their everyday life (specifically school years and peer interactions). So far in Italy, very little attention has been paid to multiple discrimination and, specifically, to homophobic violence towards disabled individuals. It is, therefore, impossible to consider any valid sampling of the desired population and very few reports have been produced. The authors, a sociologist and a psychologist, carry out an analysis of the results obtained from interviews with 15 LGBT individuals recruited through social networks, thematic chats, and …

Subjectificationintersectional analysismedia_common.quotation_subjectExploratory researchSocial ScienceshomophobiaArtLinguisticsHnormalizationdisabilityLGBT youth; disability; homophobia; normalization; intersectional analysisSettore SPS/12 - Sociologia Giuridica Della Devianza E Mutamento SocialeNormalization (sociology)Performance artLGBT youthHumanitiesmedia_common
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In praise of artifice reloaded: Caution with natural image databases in modeling vision

2019

Subjective image quality databases are a major source of raw data on how the visual system works in naturalistic environments. These databases describe the sensitivity of many observers to a wide range of distortions of different nature and intensity seen on top of a variety of natural images. Data of this kind seems to open a number of possibilities for the vision scientist to check the models in realistic scenarios. However, while these natural databases are great benchmarks for models developed in some other way (e.g., by using the well-controlled artificial stimuli of traditional psychophysics), they should be carefully used when trying to fit vision models. Given the high dimensionalit…

Subjective image quality databasesImage qualityComputer scienceNormalization (image processing)02 engineering and technologycomputer.software_genreContrast maskingImage (mathematics)lcsh:RC321-57103 medical and health sciences0302 clinical medicineWavelet0202 electrical engineering electronic engineering information engineeringPsychophysicsNatural (music)Wavelet + divisive normalizationsubjective image quality databaseslcsh:Neurosciences. Biological psychiatry. NeuropsychiatryArtificial stimuliOriginal ResearchNatural stimuliwavelet + divisive normalizationDatabaseGeneral Neurosciencecontrast maskingRange (mathematics)Norm (artificial intelligence)natural stimuli020201 artificial intelligence & image processingartificial stimulicomputer030217 neurology & neurosurgeryNeuroscience
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