A Contemporary Overview of Probabilistic Latent Variable Models

06/25/2017
by   Rick Farouni, et al.
0

In this paper we provide a conceptual overview of latent variable models within a probabilistic modeling framework, an overview that emphasizes the compositional nature and the interconnectedness of the seemingly disparate models commonly encountered in statistical practice.

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