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Document Informed Neural Autoregressive Topic Models (1808.03793v1)

Published 11 Aug 2018 in cs.IR, cs.CL, and cs.LG

Abstract: Context information around words helps in determining their actual meaning, for example "networks" used in contexts of artificial neural networks or biological neuron networks. Generative topic models infer topic-word distributions, taking no or only little context into account. Here, we extend a neural autoregressive topic model to exploit the full context information around words in a document in a LLMing fashion. This results in an improved performance in terms of generalization, interpretability and applicability. We apply our modeling approach to seven data sets from various domains and demonstrate that our approach consistently outperforms stateof-the-art generative topic models. With the learned representations, we show on an average a gain of 9.6% (0.57 Vs 0.52) in precision at retrieval fraction 0.02 and 7.2% (0.582 Vs 0.543) in F1 for text categorization.

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Authors (3)
  1. Pankaj Gupta (33 papers)
  2. Florian Buettner (31 papers)
  3. Hinrich Schütze (250 papers)
Citations (5)

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