The likelihood model of high dimensional data can often be expressed as , where is a collection of hidden features shared across objects, indexed by , and is a non-negative factor loading vector with entries where indicates the strength of used to express . In this paper, we introduce random function priors for for modeling correlations among its dimensions through , which we call \textit{population random measure embedding} (PRME). Our model can be viewed as a generalized paintbox model~\cite{Broderick13} using random functions, and can be learned efficiently with neural networks via amortized variational inference. We derive our Bayesian nonparametric method by applying a representation theorem on separately exchangeable discrete random measures.
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