Reducing the sampling complexity of topic models

Published: Aug 24, 2014
Abstract
Inference in topic models typically involves a sampling step to associate latent variables with observations. Unfortunately the generative model loses sparsity as the amount of data increases, requiring O(k) operations per word for k topics. In this paper we propose an algorithm which scales linearly with the number of actually instantiated topics kd in the document. For large document collections and in structured hierarchical models kd ll k....
Paper Details
Title
Reducing the sampling complexity of topic models
Published Date
Aug 24, 2014
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