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world:lda [2023/01/16 10:47]
rdouc
world:lda [2023/01/17 11:41]
rdouc ↷ Page moved from mynotes:lda to world:lda
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 ====== Sujet et ressources ====== ====== Sujet et ressources ======
  
-Ce projet de recherche consistera à étudier ​le papier:  +Ce projet de recherche consistera à étudier ​les papiers:  
-    * [[https://​jmlr.org/​papers/​volume14/​hoffman13a/​hoffman13a.pdf|Stochastic Variational Inférence]]+    * [[https://​jmlr.org/​papers/​volume14/​hoffman13a/​hoffman13a.pdf|Stochastic Variational Inférence]] ​(LDA, version appliquée via Stochastic VI) 
 +    * [[https://​users.stat.ufl.edu/​~doss/​Research/​lda-ntopics.pdf|Inference for the Number of Topics in the Latent 
 +Dirichlet Allocation Model via Bayesian Mixture 
 +Modelling]] by Zhe Chen and Ani Doss, 2019. (LDA version théorique via Bayesian Mixture modelling et Monte Carlo by Markov Chains techniques)
  
  
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   * Le papier original introduisant la LDA est celui là: [[https://​www.jmlr.org/​papers/​volume3/​blei03a/​blei03a.pdf?​ref=https://​githubhelp.com| Latent Dirichlet Allocation, 2003]] by David Blei, Andrew Ng, Michael Jordan. On pourra lire aussi cette survey [[https://​www.eecis.udel.edu/​~shatkay/​Course/​papers/​UIntrotoTopicModelsBlei2011-5.pdf| Introduction to probabilistic topics models]]   * Le papier original introduisant la LDA est celui là: [[https://​www.jmlr.org/​papers/​volume3/​blei03a/​blei03a.pdf?​ref=https://​githubhelp.com| Latent Dirichlet Allocation, 2003]] by David Blei, Andrew Ng, Michael Jordan. On pourra lire aussi cette survey [[https://​www.eecis.udel.edu/​~shatkay/​Course/​papers/​UIntrotoTopicModelsBlei2011-5.pdf| Introduction to probabilistic topics models]]
-  * Pour la partie théorique sur des méthodes impliquant la LDA, on pourra lire certaines propriétés dans: [[https://​www.eecis.udel.edu/​~shatkay/​Course/​papers/​UIntrotoTopicModelsBlei2011-5.pdf|Introduction to probabilistic topics models Inference for the Number of Topics in the LDA Model via Bayesian Mixture Modeling]] by Zhe Chen and Ani Doss, 2019. Une version complète de l'​article figure ici [[https://​users.stat.ufl.edu/​~doss/​Research/​lda-ntopics.pdf|cliquer ici]] 
  
  
world/lda.txt · Last modified: 2023/02/07 10:48 by rdouc