The Doubly Correlated Nonparametric Topic Model
–Neural Information Processing Systems
Topic models are learned via a statistical model of variation within document collections, but designed to extract meaningful semantic structure. Desirable traits include the ability to incorporate annotations or metadata associated with documents; the discovery of correlated patterns of topic usage; and the avoidance of parametric assumptions, such as manual specification of the number of topics. We propose a doubly correlated nonparametric topic (DCNT) model, the first model to simultaneously capture all three of these properties.
Neural Information Processing Systems
Apr-6-2023, 12:46:43 GMT
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