International audienceThe publication time of a document carries a relevant information about its semantic content. The Dirichlet-Hawkes process has been proposed to jointly model textual information and publication dynamics. This approach has been used with success in several recent works, and extended to tackle specific challenging problems-typically for short texts or entangled publication dynamics. However, the prior in its current form does not allow for complex publication dynamics. In particular, inferred topics are independent from each other-a publication about finance is assumed to have no influence on publications about politics, for instance. In this work, we develop the Multivariate Powered Dirichlet-Hawkes Process (MPDHP), tha...
We describe a nonparametric topic model for labeled data. The model uses a mix-ture of random measur...
Abstract—We consider the problem of inferring and modeling topics in a sequence of documents with kn...
We describe a nonparametric topic model for labeled data. The model uses a mixture of random measur...
The publication time of a document carries a relevant information about its semantic content. The Di...
International audienceThe textual content of a document and its publication date are intertwined. Fo...
Clusters in document streams, such as online news articles, can be induced by their textual contents...
Thesis (Master's)--University of Washington, 2014In their 2001 work Latent Dirichlet Allocation, Ble...
We develop a nested hierarchical Dirichlet process (nHDP) for hierarchical topic modeling. The nHDP ...
Abstract—We develop a nested hierarchical Dirichlet process (nHDP) for hierarchical topic modeling. ...
International audienceInformation spread on networks can be efficiently modeled by considering three...
Understanding how topics within a document evolve over the structure of the document is an interesti...
This paper presents an intertemporal bimodal network to analyze the evolution of the semantic conten...
Abstract Understanding how topics within a document evolve over the structure of the document is an ...
Aware of the challenges faced by the social sciences in publishing a massive volume of research pape...
<p>A single, stationary topic model such as latent Dirichlet allocation is inappropriate for modelin...
We describe a nonparametric topic model for labeled data. The model uses a mix-ture of random measur...
Abstract—We consider the problem of inferring and modeling topics in a sequence of documents with kn...
We describe a nonparametric topic model for labeled data. The model uses a mixture of random measur...
The publication time of a document carries a relevant information about its semantic content. The Di...
International audienceThe textual content of a document and its publication date are intertwined. Fo...
Clusters in document streams, such as online news articles, can be induced by their textual contents...
Thesis (Master's)--University of Washington, 2014In their 2001 work Latent Dirichlet Allocation, Ble...
We develop a nested hierarchical Dirichlet process (nHDP) for hierarchical topic modeling. The nHDP ...
Abstract—We develop a nested hierarchical Dirichlet process (nHDP) for hierarchical topic modeling. ...
International audienceInformation spread on networks can be efficiently modeled by considering three...
Understanding how topics within a document evolve over the structure of the document is an interesti...
This paper presents an intertemporal bimodal network to analyze the evolution of the semantic conten...
Abstract Understanding how topics within a document evolve over the structure of the document is an ...
Aware of the challenges faced by the social sciences in publishing a massive volume of research pape...
<p>A single, stationary topic model such as latent Dirichlet allocation is inappropriate for modelin...
We describe a nonparametric topic model for labeled data. The model uses a mix-ture of random measur...
Abstract—We consider the problem of inferring and modeling topics in a sequence of documents with kn...
We describe a nonparametric topic model for labeled data. The model uses a mixture of random measur...