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GDTM: Graph-based Dynamic Topic Models
2020
Progress in Artificial Intelligence
Dynamic Topic Modeling (DTM) is the ultimate solution for extracting topics from short texts generated in Online Social Networks (OSNs) like Twitter. It requires to be scalable and to be able to account for sparsity and dynamicity of short texts. Current solutions combine probabilistic mixture models like Dirichlet Multinomial or Pitman-Yor Process with approximate inference approaches like Gibbs Sampling and Stochastic Variational Inference to, respectively, account for dynamicity and
doi:10.1007/s13748-020-00206-2
fatcat:eu77ctjj5bg63pdsnjkexnxche