Search results for "Log-linear model"

showing 10 items of 11 documents

Aggression towards Referees in Amateur Football in Spain: A Loglinear Approach

2019

Aggressive behavior towards football referees is becoming increasingly common, and as a result we are getting used to it and coming to see it as an inevitable and intrinsic element of football matches. Spectators, players and coaches are all prone to take this view. This article studies how the types of aggression shown by these three groups towards the referee are related to one another, and how they are perceived by the referee, in amateur football. For this purpose, the phenomenon was assessed, using an ad-hoc form, both by an expert and by the referee, in 119 regional and youth football matches in the city of Valencia and surrounding municipalities. We analysed the data using a loglinea…

AggressionPhenomenonPerspective (graphical)medicineLog-linear modelFootballElement (criminal law)medicine.symptomPsychologyAmateurSocial psychologyGeneral PsychologyUniversitas Psychologica
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The Norm-P Estimation of Location, Scale and Simple Linear Regression Parameters

1989

A new formulation of the exponential power distributions is used as general error model to describe long-tailed and short -tailed distributed errors. The proposed estimators of the location, scale and structure parameters of this general model and of the simple linear regression parameters when the response variable is affected by errors coming from the previous model should be used instead of robust estimators and against the practice of rejecting outlying observations. Two Monte Carlo simulations prove the good properties of these norm-p estimators.

General linear modelPolynomial regressionProper linear modelLinear regressionStatisticsMean and predicted responseApplied mathematicsEstimatorLog-linear modelSimple linear regressionMathematics
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Empirical study of the dependence of the results of multivariable flexible survival analyses on model selection strategy

2008

Flexible survival models, which avoid assumptions about hazards proportionality (PH) or linearity of continuous covariates effects, bring the issues of model selection to a new level of complexity. Each ‘candidate covariate’ requires inter-dependent decisions regarding (i) its inclusion in the model, and representation of its effects on the log hazard as (ii) either constant over time or time-dependent (TD) and, for continuous covariates, (iii) either loglinear or non-loglinear (NL). Moreover, ‘optimal’ decisions for one covariate depend on the decisions regarding others. Thus, some efficient model-building strategy is necessary. We carried out an empirical study of the impact of the model …

MaleStatistics and ProbabilityEpidemiologyAge at diagnosisAdenocarcinomaEmpirical researchRisk FactorsStomach NeoplasmsCovariateStatisticsEconometricsHumansRegistriesSurvival analysisAgedParametric statisticsMathematicsModels StatisticalModel selectionMultivariable calculusAge FactorsMiddle AgedPrognosisSurvival AnalysisMultivariate AnalysisFemaleFranceLog-linear modelStatistics in Medicine
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Analyzing Temperature Effects on Mortality Within theREnvironment: The Constrained Segmented Distributed Lag Parameterization

2010

Here we present and discuss the R package modTempEff including a set of functions aimed at modelling temperature effects on mortality with time series data. The functions fit a particular log linear model which allows to capture the two main features of mortality- temperature relationships: nonlinearity and distributed lag effect. Penalized splines and segmented regression constitute the core of the modelling framework. We briefly review the model and illustrate the functions throughout a simulated dataset.

Statistics and ProbabilityDistributed lagtemperature effects segmented relationship break point P-splines RMathematical optimizationComputer scienceP-splinesRsegmented relationshipSet (abstract data type)R packageNonlinear systemBreak pointApplied mathematicsLog-linear modelbreak pointStatistics Probability and UncertaintySegmented regressionTime seriesSettore SECS-S/01 - Statisticatemperature effectslcsh:Statisticslcsh:HA1-4737SoftwareJournal of Statistical Software
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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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Visualizing categorical data in ViSta

2003

The modules in the statistical package ViSta related to categorical data analysis are presented These modules are: visualization of frequency data with mosaic and bar plots, correspondence analysis, multiple correspondence analysis and loglinear analysis. All these methods are implemented in ViSta with a big emphasis on plots and graphical representations of data, as well as interactivity for the user with the system. These provide a system that has shown to be easy, useful, and powerful, both for novice and experienced users.

Statistics and ProbabilityInformation retrievalComputer sciencebusiness.industryApplied MathematicsMosaic (geodemography)computer.software_genreCorrespondence analysisVisualizationComputational MathematicsData visualizationInteractivityComputational Theory and MathematicsMultiple correspondence analysisLog-linear modelData miningbusinessCategorical variablecomputerComputational Statistics & Data Analysis
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Simulation in the Simple Linear Regression Model

2002

Summary This article presents an activity which simulates the linear regression model in order to verify the probabilistic behaviour of the resulting least-squares statistics in practice.

Statistics and ProbabilityPolynomial regressionGeneral linear modelProper linear modelMultivariate adaptive regression splinesComputer scienceStatisticsLinear modelApplied mathematicsPrincipal component regressionLog-linear modelSimple linear regressionEducationTeaching Statistics
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Multivariate statistical analysis for exploring road crash-related factors in the Franche-Comté region of France

2021

Understanding and modelling road crash data is crucial in fulfilling safety goals by helping national authorities to take necessary measures to reduce crash frequency and severity. This work aims at giving a multivariate statistical analysis of road crash data from the French region of Franche-Comte with special attention to road crash gravity. The first step for this multivariate analysis was to perform Multiple Correspondence Analysis in order to assess associations between the road crash injury and several important accident-related factors and circumstances. Log-linear models are used next in order to detect associations between road crash severity and related factors such as al-cohol/d…

Statistics and ProbabilityRelated factorsMultivariate analysisApplied MathematicsCrashTransport engineeringGeographyRoad crashMultiple correspondence analysisLog-linear modelOrdered logithuman activitiesAnalysisGeometric data analysisCommunications in Statistics: Case Studies, Data Analysis and Applications
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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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Seeing Frequency Data

2011

StatisticsEconometricsFrequency dataLog-linear modelMathematics
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