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Joint Distributions for TensorFlow Probability

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arxiv 2001.11819 v1 pith:2KAIXRKT submitted 2020-01-22 cs.PL cs.LGstat.COstat.ML

Joint Distributions for TensorFlow Probability

classification cs.PL cs.LGstat.COstat.ML
keywords probabilitytensorflowalgorithmscanonicalcentraldeclarativedescribedirected
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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A central tenet of probabilistic programming is that a model is specified exactly once in a canonical representation which is usable by inference algorithms. We describe JointDistributions, a family of declarative representations of directed graphical models in TensorFlow Probability.

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