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Online Inference of Topics with Latent Dirichlet Allocation

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Figure

Figure 1: An example of the “directed tree of hashta- hashta-bles” implementation of the particle filter
Figure 2: nMI traces for each algorithm on each dataset. The algorithms were initialized with the same config- config-uration on the first 10% of the documents
Table 2: The top 10 words from 5 topics found by the particle filter for the subset-20 dataset.

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