Markov random walk representations with continuous distributions

UAI'03 Proceedings of the Nineteenth conference on Uncertainty in Artificial Intelligence(2012)

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摘要
Representations based on random walks can exploit discrete data distributions for clustering and classification. We extend such representations from discrete to continuous distributions. Transition probabilities are now calculated using a diffusion equation with a diffusion coefficient that inversely depends on the data density. We relate this diffusion equation to a path integral and derive the corresponding path probability measure. The framework is useful for incorporating continuous data densities and prior knowledge.
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关键词
discrete data distribution,random walk,data density,continuous distribution,diffusion equation,diffusion coefficient,transition probability,prior knowledge,corresponding path probability measure,markov random walk representation,continuous data density,probability measure,path integral
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