Search results for "Joint probability distribution"

showing 10 items of 52 documents

Conditional Versus Joint Probability Assessments

1984

AbstractThe assessment of conditional and / or joint probabilities of events that constitute scenarios is necessary for sound planning, forecasting, and decision making. The assessment process is complex and subtle, and various difficulties are encountered in the elicitation of such probabilities such as, implicit violations ofthe probability calculus and some meaningfjilness conditions. The necessary and sufficient as well as meaningfulness conditions that the elicited information on conditional and joint probabilities must satisfy are evaluated against actual assessments empirically. A high frequency of violation of these conditions was observed in assessing both conditional and joint pro…

021103 operations researchChain rule (probability)Process (engineering)Posterior probability0211 other engineering and technologies02 engineering and technologyComputer Science ApplicationsJoint probability distributionConsistency (statistics)Signal ProcessingStatistics0202 electrical engineering electronic engineering information engineeringEconometricsProbability calculus020201 artificial intelligence & image processingInformation SystemsMathematicsINFOR: Information Systems and Operational Research
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Partitioned learning of deep Boltzmann machines for SNP data.

2016

Abstract Motivation Learning the joint distributions of measurements, and in particular identification of an appropriate low-dimensional manifold, has been found to be a powerful ingredient of deep leaning approaches. Yet, such approaches have hardly been applied to single nucleotide polymorphism (SNP) data, probably due to the high number of features typically exceeding the number of studied individuals. Results After a brief overview of how deep Boltzmann machines (DBMs), a deep learning approach, can be adapted to SNP data in principle, we specifically present a way to alleviate the dimensionality problem by partitioned learning. We propose a sparse regression approach to coarsely screen…

0301 basic medicineStatistics and ProbabilityComputer scienceMachine learningcomputer.software_genre01 natural sciencesBiochemistryPolymorphism Single NucleotideMachine Learning010104 statistics & probability03 medical and health sciencessymbols.namesakeJoint probability distributionHumans0101 mathematicsMolecular BiologyStatistical hypothesis testingArtificial neural networkbusiness.industryGene Expression Regulation LeukemicDeep learningUnivariateComputational BiologyManifoldComputer Science ApplicationsData setComputational Mathematics030104 developmental biologyComputingMethodologies_PATTERNRECOGNITIONComputational Theory and MathematicsLeukemia MyeloidBoltzmann constantsymbolsData miningArtificial intelligencebusinesscomputerSoftwareCurse of dimensionalityBioinformatics (Oxford, England)
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Measuring Observable Quantum Contextuality

2016

Contextuality is a central property in comparative analysis of classical, quantum, and supercorrelated systems. We examine and compare two well-motivated approaches to contextuality. One approach (“contextuality-by-default”) is based on the idea that one and the same physical property measured under different conditions (contexts) is represented by different random variables. The other approach is based on the idea that while a physical property is represented by a single random variable irrespective of its context, the joint distributions of the random variables describing the system can involve negative (quasi-)probabilities. We show that in the Leggett-Garg and EPR-Bell systems, the two …

CHSH inequalityObservableContext (language use)16. Peace & justice01 natural sciences010305 fluids & plasmasTheoretical physicsNegative probabilityJoint probability distribution0103 physical sciencesStatistical physics010306 general physicsQuantum contextualityRandom variableQuantumMathematics
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Aggregate Behavior and Microdata

2004

Abstract It is shown how one can effectively use microdata in modelling the change over time in an aggregate (e.g. mean consumption expenditure) of a large and heterogeneous population. The starting point of our aggregation analysis is a specification of explanatory variables on the micro-level. Typically, some of these explanatory variables are observable and others are unobservable. Based on certain hypotheses on the evolution over time of the joint distributions across the population of these explanatory variables we derive a decomposition of the change in the aggregate which allows a partial analysis: to isolate and to quantify the effect of a change in the observable explanatory variab…

Change over timeEconomics and Econometricseducation.field_of_studyPopulationAggregate behaviorMicrodata (statistics)jel:E21Observablejel:D12UnobservableHeterogeneous populationJoint probability distributionStatisticsEconometricsEconomicseducationFinance
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Critical point and coexistence curve properties of the Lennard-Jones fluid: A finite-size scaling study

1995

Monte Carlo simulations within the grand canonical ensemble are used to explore the liquid-vapour coexistence curve and critical point properties of the Lennard-Jones fluid. Attention is focused on the joint distribution of density and energy fluctuations at coexistence. In the vicinity of the critical point, this distribution is analysed using mixed-field finite-size scaling techniques aided by histogram reweighting methods. The analysis yields highly accurate estimates of the critical point parameters, as well as exposing the size and character of corrections to scaling. In the sub-critical coexistence region the density distribution is obtained by combining multicanonical simulations wit…

Chemical Physics (physics.chem-ph)BinodalCondensed Matter (cond-mat)Monte Carlo methodFOS: Physical sciencesCondensed MatterGrand canonical ensembleTricritical pointCritical point (thermodynamics)Joint probability distributionHistogramPhysics - Chemical PhysicsStatistical physicsScalingMathematics
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Testing for selectivity in the dependence of random variables on external factors

2008

Random variables AA and BB, whose joint distribution depends on factors (x,y)(x,y), are selectively influenced by xx and yy, respectively, if AA and BB can be represented as functions of, respectively, (x,SA,C)(x,SA,C) and (y,SB,C)(y,SB,C), where SA,SB,CSA,SB,C are stochastically independent and do not depend on (x,y)(x,y). Selective influence implies selective dependence of marginal distributions on the respective factors: thus no parameter of AA may depend on yy. But parameters characterizing stochastic interdependence of AA and BB, such as their mixed moments, are generally functions of both xx and yy. We derive two simple necessary conditions for selective dependence of (A,B)(A,B) on (x…

CombinatoricsCrystallographyJoint probability distributionApplied MathematicsSelectivityRandom variableGeneral PsychologyMathematicsJournal of Mathematical Psychology
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On utilizing dependence-based information to enhance micro-aggregation for secure statistical databases

2011

Published version of an article in the journal: Pattern Analysis and Applications. Also available from the publisher at: http://dx.doi.org/10.1007/s10044-011-0199-9 We consider the micro-aggregation problem which involves partitioning a set of individual records in a micro-data file into a number of mutually exclusive and exhaustive groups. This problem, which seeks for the best partition of the micro-data file, is known to be NP-hard, and has been tackled using many heuristic solutions. In this paper, we would like to demonstrate that in the process of developing micro-aggregation techniques (MATs), it is expedient to incorporate information about the dependence between the random variable…

ConjectureTheoretical computer scienceVariablesComputer scienceCovariance matrixmedia_common.quotation_subjectmicro-aggregation techniqueVDP::Technology: 500::Information and communication technology: 550Mutually exclusive eventscomputer.software_genrePartition (database)CorrelationVDP::Mathematics and natural science: 400::Information and communication science: 420::Knowledge based systems: 425Artificial IntelligenceJoint probability distributionprojected variablesComputer Vision and Pattern RecognitionData miningmaximun spanning treeRandom variablecomputermedia_common
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Random Variables Recorded Under Mutually Exclusive Conditions: Contextuality-by-Default

2014

We present general principles underlying analysis of the dependence of random variables (outputs) on deterministic conditions (inputs). Random outputs recorded under mutually exclusive input values are labeled by these values and considered stochastically unrelated, possessing no joint distribution. An input that does not directly influence an output creates a context for the latter. Any constraint imposed on the dependence of random outputs on inputs can be characterized by considering all possible couplings (joint distributions) imposed on stochastically unrelated outputs. The target application of these principles is a quantum mechanical system of entangled particles, with directions of …

Constraint (information theory)SpinsJoint probability distributionControl theoryContext (language use)Statistical physicsMutually exclusive eventsRandom variableKochen–Specker theoremMathematicsSpin-½
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Multivariate Gaussian criteria in SMAA

2006

Abstract We consider stochastic multicriteria decision-making problems with multiple decision makers. In such problems, the uncertainty or inaccuracy of the criteria measurements and the partial or missing preference information can be represented through probability distributions. In many real-life problems the uncertainties of criteria measurements may be dependent. However, it is often difficult to quantify these dependencies. Also, most of the existing methods are unable to handle such dependency information. In this paper, we develop a method for handling dependent uncertainties in stochastic multicriteria group decision-making problems. We measure the criteria, their uncertainties and…

Decision support systemInformation Systems and ManagementGeneral Computer ScienceOperations researchStochastic processStochastic modellingContext (language use)Management Science and Operations ResearchIndustrial and Manufacturing Engineeringsymbols.namesakeJoint probability distributionModeling and SimulationStochastic simulationsymbolsProbability distributionGaussian processMathematicsEuropean Journal of Operational Research
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An Empirical Analysis of the Determinants of Perceived Inequality

2017

Perception of inequality is important for the analysis of individuals' motivations and decisions and for policy assessment. Despite the broad range of analytic gains that it grants, our knowledge about measurement and determinants of perception of inequality is still limited, since it is intrinsically unobservable, multidimensional, and essentially contested. Using a novel econometric approach, we study how observable individual characteristics affect the joint distribution of a set of indicators of perceived inequality in specific domains. Using data from the International Social Survey Programme, we shed light on the associations among these indicators and how they are affected by covaria…

Economics and EconometricsInequalitymedia_common.quotation_subject05 social sciencesInternational Social Survey ProgrammeAffect (psychology)UnobservableJoint probability distributionPerception0502 economics and businessCovariateEconometricsEconomics050207 economicsSet (psychology)Settore SECS-P/01 - Economia Politica050205 econometrics media_commonPerception of inequality inequality of outcome inequality of opportunity fairness.
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