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Bayesian networks are often proposed as a method for high-level information fusion. However, a Bayesian network relies on strong assumptions about the underlying probabilities. In many cases it is not realistic to require such precise... more
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      Decision MakingProbability Distribution & ApplicationsInformation FusionImprecise Probability
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      Complexity TheoryApproximation AlgorithmsBayesian NetworksImprecise Probability
Debris flows are destructive natural hazards that affect human life, buildings, and infrastructures. Despite their importance, debris flows are only partially understood, and human expertise still plays a key role for hazard... more
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      GeographyDebris FlowsImprecise ProbabilityCase Study
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      Optimization ProblemConditional probabilityCredal NetworksGeneric model
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      Machine LearningData MiningImprecise ProbabilityNon-probabilistic Modeling and Imprecise Probabilities
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      Artificial IntelligenceStatisticsBayesian NetworksBelief
This paper proposes two new algorithms for inference in credal networks. These algorithms enable probability intervals to be obtained for the states of a given query variable. The first algorithm is approximate and uses the hill-climbing... more
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    •   8  
      StatisticsBayesian NetworkApproximate InferenceApproximate Reasoning
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      Imprecise ProbabilityCase StudyDebris FlowNatural hazard
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      Debris FlowHazard AssessmentCredal Networks