Search results for "Frequentist"

showing 10 items of 30 documents

Olley–Pakes productivity decomposition: computation and inference

2016

Summary We show how a moment-based estimation procedure can be used to compute point estimates and standard errors for the two components of the widely used Olley–Pakes decomposition of aggregate (weighted average) productivity. When applied to business level microdata, the procedure allows for autocovariance and heteroscedasticity robust inference and hypothesis testing about, for example, the coevolution of the productivity components in different groups of firms. We provide an application to Finnish firm level data and find that formal statistical inference casts doubt on the conclusions that one might draw on the basis of a visual inspection of the components of the decomposition.

Statistics and ProbabilityEconomics and EconometricsHeteroscedasticityproductivitytuottavuusInferenceFrequentist inference0502 economics and businessStatisticsStatistical inferenceEconometricsPoint estimation050207 economics050205 econometrics MathematicsStatistical hypothesis testingpäättelyta112inferenceta51105 social sciencesgeneralized method of momentsAutocovarianceweighted averageFiducial inferenceStatistics Probability and UncertaintySocial Sciences (miscellaneous)Journal of the Royal Statistical Society Series A: Statistics in Society
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Bayesian survival analysis with BUGS

2020

Survival analysis is one of the most important fields of statistics in medicine and biological sciences. In addition, the computational advances in the last decades have favored the use of Bayesian methods in this context, providing a flexible and powerful alternative to the traditional frequentist approach. The objective of this article is to summarize some of the most popular Bayesian survival models, such as accelerated failure time, proportional hazards, mixture cure, competing risks, multi-state, frailty, and joint models of longitudinal and survival data. Moreover, an implementation of each presented model is provided using a BUGS syntax that can be run with JAGS from the R programmin…

Statistics and ProbabilityFOS: Computer and information sciencesEpidemiologyComputer scienceBayesian probabilityContext (language use)Accelerated failure time modelMachine learningcomputer.software_genreBayesian inference01 natural sciencesStatistics - Applications010104 statistics & probability03 medical and health sciences0302 clinical medicineFrequentist inferenceHumansApplications (stat.AP)030212 general & internal medicine0101 mathematicsModels StatisticalSyntax (programming languages)business.industryR Programming LanguageBayes TheoremSurvival AnalysisMedical statisticsArtificial intelligencebusinesscomputer
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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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MCMC methods to approximate conditional predictive distributions

2006

Sampling from conditional distributions is a problem often encountered in statistics when inferences are based on conditional distributions which are not of closed-form. Several Markov chain Monte Carlo (MCMC) algorithms to simulate from them are proposed. Potential problems are pointed out and some suitable modifications are suggested. Approximations based on conditioning sets are also explored. The issues are illustrated within a specific statistical tool for Bayesian model checking, and compared in an example. An example in frequentist conditional testing is also given.

Statistics and ProbabilityMarkov chainApplied MathematicsMarkov chain Monte CarloConditional probability distributionBayesian inferenceComputational Mathematicssymbols.namesakeMetropolis–Hastings algorithmComputational Theory and MathematicsSampling distributionFrequentist inferencesymbolsEconometricsAlgorithmMathematicsGibbs samplingComputational Statistics & Data Analysis
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PValues for Composite Null Models

2000

Abstract The problem of investigating compatibility of an assumed model with the data is investigated in the situation when the assumed model has unknown parameters. The most frequently used measures of compatibility are p values, based on statistics T for which large values are deemed to indicate incompatibility of the data and the model. When the null model has unknown parameters, p values are not uniquely defined. The proposals for computing a p value in such a situation include the plug-in and similar p values on the frequentist side, and the predictive and posterior predictive p values on the Bayesian side. We propose two alternatives, the conditional predictive p value and the partial…

Statistics and ProbabilityModel checkingNull modelFrequentist inferenceStatisticsBayesian probabilityBayes factorp-valueStatistics Probability and UncertaintyMathematicsJournal of the American Statistical Association
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Frequentist and Bayesian approaches for a joint model for prostate cancer risk and longitudinal prostate-specific antigen data

2015

The paper describes the use of frequentist and Bayesian shared-parameter joint models of longitudinal measurements of prostate-specific antigen (PSA) and the risk of prostate cancer (PCa). The motivating dataset corresponds to the screening arm of the Spanish branch of the European Randomized Screening for Prostate Cancer study. The results show that PSA is highly associated with the risk of being diagnosed with PCa and that there is an age-varying effect of PSA on PCa risk. Both the frequentist and Bayesian paradigms produced very close parameter estimates and subsequent 95% confidence and credibility intervals. Dynamic estimations of disease-free probabilities obtained using Bayesian infe…

Statistics and ProbabilityPREDICTIONBayesian probabilityurologic and male genital diseasesBayesian inferenceGeneralized linear mixed modelPSAProstate cancerLATENT CLASS MODELSAnàlisi de supervivència (Biometria)Frequentist inference62N01Statisticsprostate cancer screeningSurvival analysis (Biometry)FAILUREMedicineProstate cancer riskTO-EVENT DATAbusiness.industryjoint modelsMORTALITYDISEASE PROGRESSIONmedicine.diseaselinear mixed modelsTIMEProstate-specific antigenProstate cancer screeningshared-parameter models:Matemàtiques i estadística::Estadística matemàtica [Àrees temàtiques de la UPC]62P10SURVIVALStatistics Probability and Uncertaintyrelative risk modelsFOLLOW-UPbusinessJournal of Applied Statistics
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Statistical inference as a decision problem: the choice of sample size

1997

Statistics and ProbabilityPredictive inferenceSampling distributionFrequentist inferenceSample size determinationStatisticsEconometricsFiducial inferenceStatistical inferenceInfluence diagramStatistical theoryMathematicsJournal of the Royal Statistical Society: Series D (The Statistician)
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Reference Posterior Distributions for Bayesian Inference

1979

Statistics and Probabilitybusiness.industry010102 general mathematicsBayes factorPattern recognitionBayesian inference01 natural sciencesBayesian statistics010104 statistics & probabilityFrequentist inferenceFiducial inferenceStatistical inferenceBayesian experimental designArtificial intelligence0101 mathematicsBayesian linear regressionbusinessMathematicsJournal of the Royal Statistical Society: Series B (Methodological)
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Risk of Death Associated With Intravitreal Anti-Vascular Endothelial Growth Factor Therapy: A Systematic Review and Meta-analysis.

2020

Importance Although intravitreal anti–vascular endothelial growth factor (VEGF) treatment represents the first-line therapy for many retinal diseases, the issue of their systemic safety is debatable. Objectives To assess whether intravitreal anti-VEGF therapy might be associated with increased risk of mortality and which variables are associated with the increase. Data Sources PubMed, MEDLINE, and Embase databases, the Cochrane Library, and ClinicalTrials.gov were systematically searched from inception to May 6, 2019. Study Selection Randomized clinical trials comparing intravitreal anti-VEGF treatment with control groups and with follow-up of at least 6 months were selected. Data Extractio…

Vascular Endothelial Growth Factor Amedicine.medical_specialtyDatabases FactualMEDLINEAngiogenesis InhibitorsCochrane LibraryMacular Edemalaw.inventionRandomized controlled triallawFrequentist inferenceInternal medicineCause of DeathRetinal Vein OcclusionMedicineHumansanti-VEGF therapyrisk of mortality anti-vascular endothelial growth factor mortalityCause of deathOriginal InvestigationRandomized Controlled Trials as TopicDiabetic Retinopathybusiness.industryMortality rateOdds ratioChoroidal NeovascularizationOphthalmologyMeta-analysisIntravitreal InjectionsWet Macular DegenerationbusinessJAMA ophthalmology
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贝叶斯因子及其在JASP中的实现

2018

Statistical inference plays a critical role in modern scientific research, however, the dominant method for statistical inference in science, null hypothesis significance testing (NHST), is often misunderstood and misused, which leads to unreproducible findings. To address this issue, researchers propose to adopt the Bayes factor as an alternative to NHST. The Bayes factor is a principled Bayesian tool for model selection and hypothesis testing, and can be interpreted as the strength for both the null hypothesis H0 and the alternative hypothesis H1 based on the current data. Compared to NHST, the Bayes factor has the following advantages: it quantifies the evidence that the data provide for…

business.industryAlternative hypothesisBayesian probabilityBayes factorMachine learningcomputer.software_genreBayesian statisticsFrequentist inferenceStatistical inferenceArtificial intelligenceNull hypothesisbusinessGeneral Economics Econometrics and FinancecomputerStatistical hypothesis testingAdvances in Psychological Science
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