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arxiv: 1306.0186 · v2 · pith:NWHKC72Enew · submitted 2013-06-02 · 📊 stat.ML · cs.LG

RNADE: The real-valued neural autoregressive density-estimator

classification 📊 stat.ML cs.LG
keywords rnadedensitydatamixturemodelreal-valuedtractableallows
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We introduce RNADE, a new model for joint density estimation of real-valued vectors. Our model calculates the density of a datapoint as the product of one-dimensional conditionals modeled using mixture density networks with shared parameters. RNADE learns a distributed representation of the data, while having a tractable expression for the calculation of densities. A tractable likelihood allows direct comparison with other methods and training by standard gradient-based optimizers. We compare the performance of RNADE on several datasets of heterogeneous and perceptual data, finding it outperforms mixture models in all but one case.

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