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The Handbook of NLP with Gensim

You're reading from   The Handbook of NLP with Gensim Leverage topic modeling to uncover hidden patterns, themes, and valuable insights within textual data

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Product type Paperback
Published in Oct 2023
Publisher Packt
ISBN-13 9781803244945
Length 310 pages
Edition 1st Edition
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Author (1):
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Chris Kuo Chris Kuo
Author Profile Icon Chris Kuo
Chris Kuo
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Table of Contents (24) Chapters Close

Preface 1. Part 1: NLP Basics
2. Chapter 1: Introduction to NLP FREE CHAPTER 3. Chapter 2: Text Representation 4. Chapter 3: Text Wrangling and Preprocessing 5. Part 2: Latent Semantic Analysis/Latent Semantic Indexing
6. Chapter 4: Latent Semantic Analysis with scikit-learn 7. Chapter 5: Cosine Similarity 8. Chapter 6: Latent Semantic Indexing with Gensim 9. Part 3: Word2Vec and Doc2Vec
10. Chapter 7: Using Word2Vec 11. Chapter 8: Doc2Vec with Gensim 12. Part 4: Topic Modeling with Latent Dirichlet Allocation
13. Chapter 9: Understanding Discrete Distributions 14. Chapter 10: Latent Dirichlet Allocation 15. Chapter 11: LDA Modeling 16. Chapter 12: LDA Visualization 17. Chapter 13: The Ensemble LDA for Model Stability 18. Part 5: Comparison and Applications
19. Chapter 14: LDA and BERTopic 20. Chapter 15: Real-World Use Cases 21. Assessments 22. Index 23. Other Books You May Enjoy

Variational E-M

Variational E-M is an extension of E-M that incorporates variational inference. In variational E-M, during the “expectation” step, instead of computing the exact posterior distribution of the latent variables as in standard E-M, it approximates this posterior using a simpler distribution from a predefined family. Then, during the “maximization” step, it optimizes the model parameters to maximize a lower bound on the likelihood of the observed data, which is derived from the approximate posterior. Variational E-M iterates between these two steps until convergence, providing a computationally efficient way to perform parameter estimation in complex probabilistic models, especially in Bayesian settings.

Now, let’s describe the variational E-M algorithm in our context:

  1. The E-step: We get the optimal values of the variational parameters, (γ, ϕ), in Eq. (11) and Eq. (12) for every document in the corpus by assuming...
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