Publication | Closed Access
Normalized random measures driven by increasing additive processes
50
Citations
21
References
2012
Year
Unknown Venue
Bayesian StatisticBayesian StatisticsAdditive ProcessesEngineeringMixture DistributionData ScienceNew ClassStatistical InferenceProbability TheoryStochastic PhenomenonNon-additive MeasureStochastic GeometryNonparametric Prior DistributionsStatisticsNormalized Random MeasuresBayesian Inference
This paper introduces and studies a new class of nonparametric prior distributions. Random probability distribution functions are constructed via normalization of random measures driven by increasing additive processes. In particular, we present results for the distribution of means under both prior and posterior conditions and, via the use of strategic latent variables, undertake a full Bayesian analysis. Our class of priors includes the well-known and widely used mixture of a Dirichlet process.
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